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RWR Insights – What GxPs are Applicable to Non-Interventional (Observational) Studies?

RWR CONTEXT

In this series of ‘RWR Insights’ we lay out what GxPs are globally applicable to observational studies with the aim of providing you confidence that you know what is applicable and what you need to consider and/or comply with.

With knowledge comes understanding…with understanding comes confidence…

A question we are commonly asked is “what GxPs are applicable to non-interventional (observational) studies?”.  The concern that researchers often have is that they should be following GCP but are struggling to do so because many of the elements, such as the Investigator’s Brochure (IB), IMP accountability, drug labelling etc, are not applicable when conducting observational studies.  That being the case, what should you follow (comply with), and more to the point what are you missing?  Is there something you should be complying with that you aren’t?

In this series of ‘RWR Insights’ we lay out what GxPs are globally applicable to observational studies with the aim of providing you confidence that you know what is applicable and what you need to consider and/or comply with.

With knowledge comes understanding…with understanding comes confidence…

Is GCP Applicable to Observational Studies?

Short Answer = No (see details below)

Good Clinical Practice (GCP) is an international ethical and scientific quality standard for designing, conducting, recording and reporting clinical TRIALS that involve the participation of human subjects. Compliance with this standard provides public assurance that the rights, safety and well-being of TRIAL subjects are protected, consistent with the principles that have their origin in the Declaration of Helsinki, and that the CLINICAL TRIAL data are credible (as per the Introduction to ICH E6(R2)) [ref 1].

Observational studies are not clinical trials (see USA examples below):

What is Industry Best Practice When Conducting Observational Studies?

Industry Best Practice =  Conduct the study in accordance with the principles of Good Pharmacoepidemiologic Practices (GPP) [ref 5], the Declaration of Helsinki [ref 6] and in compliance with the applicable national laws and guidelines (see details below).

ISPE Guidelines for Good Pharmacoepidemiology Practices (GPP)

    • ISPE GPP [ref 5] was initially issued in 1996 (the same year as ICH GCP; ref 1) and last revised in 2015
    • ISPE GPP is made up of seven (7) sections
    • Two (2) sections of ISPE GPP worth noting are those to do with the protocol format (Section II) and archiving (Section VII)…why?:
      • Guidance on Protocol Format – Other than the EMA PASS protocol template, there is no national guidance on the protocol format for non-interventional studies (as per Section II of ISPE GPP; ref 5).
      • Guidance on Document Archiving – “Where there are no specified national or regional requirements for retention of study materials, the archive should be maintained for at least five years after final report or first publication of study results, whichever comes later” (as per Section VII of ISPE GPP; ref 5).
    • ISPE GPP does cover ‘reporting of adverse drug events’ (Section 6), but this should be read, with due care and caution, as national pharmacovigilance requirements should always be complied with;
    • A limitation of ISPE GPP as best practice guidance for observational studies is that the document is not very detailed compared to the clinical trial equivalent (ICH GCP; ref 1).

ISPE GPP – Regulators Recommend ‘Consideration’ of these Guidelines

The International Society of Pharmacoepidemiology – Guidelines for good pharmacoepidemiology practices (ISPE GPP; ref 5) are a set of scientific guidelines that regulators recommend we should CONSIDER when conducting observational studies – note the emphasis on ‘consideration’ rather than imposing a legal mandate, which would be a ‘must comply with’ requirement:

    • CANADA – …fifteen key elements that should be considered for each protocol, and are reflective of…“The Guidelines for Good Pharmacoepidemiology Practices (GPP)” (Health Canada – March 2019; ref 7)
    • EUROPEAN UNION – Relevant scientific guidance should be considered by marketing authorisation holders and investigators for the development of study protocols, the conduct of studies and the writing of study reports…These scientific guidelines include – Guidelines for Good Pharmacoepidemiology Practices of the International Society of Pharmacoepidemiology (ISPE GPP) (as per Section B.1. of GVP Module VIII; ref 8)
    • GERMANY – The observation plan is to be drawn up according to recognized recommendations of scientific or regulatory guidelines…for example “Guidelines for Good Pharmacoepidemiology Practices” (GPP) of the “International Society for Pharmacoepidemiology (ISPE) (as per the BfArM/PEI Recommendations – December 2019; ref 9) 
    • USA – The FDA 2005 guidance, the ISPE guidelines, the STROBE reporting framework, and the ENCePP methods checklist and guide provide general guidance applicable to all pharmacoepidemiologic safety studies (as per Section II.B of the FDA Guidance – Best Practices for Conducting and Reporting Pharmacoepidemiologic Safety Studies Using Electronic Healthcare Data Sets (May 2013)) [ref 10].

The Common ethical foundation for all Observational Studies is the Declaration of Helsinki [ref 6]. It provides the basic framework of requirements embodied in national regulations, namely:

    • Participation of patients must be voluntary.
    • Benefits of the research should outweigh the risks and burdens to the research participants.
    • The study design must be clearly described and justified in a research protocol.
    • The research protocol must be submitted for consideration, comment, guidance, and approval to the concerned REC before the study begins.
    • Each potential research participant must be adequately informed … and participant consent must be given freely.
    • Every precaution must be taken to protect the privacy of research participants and the confidentiality of their personal information.
    • Every research study involving human participants must be registered in a publicly accessible database before recruitment of the first subject.
    • Researchers, authors, sponsors, editors, and publishers all have ethical obligations with regard to the publication and dissemination of the results of research.
    • Reports of research not in accordance with the principles of the declaration should not be accepted for publication.

To summarise, at a global level:

    • ICH GCP is not applicable to observational studies
    • ISPE GPP is is a scientific guideline that regulators recommend sponsors of observational studies consider when designing and conducting observational studies

References

1. ICH GCP – Integrated Addendum to ICH E6(R1) for Good Clinical Practice E6(R2) (November 2016)

Link: https://database.ich.org/sites/default/files/E6_R2_Addendum.pdf

2. Framework for FDA’s Real-World Evidence Program (December 2018)

Link: https://www.fda.gov/media/120060/download 

3. Draft FDA Guidance Data Standards for Drug and Biological Product Submissions Containing Real-World Data (October 2021)

Link: https://www.fda.gov/media/153341/download 

4.  Draft FDA Guidance – Considerations for the Use of Real-World Data and Real- World Evidence to Support Regulatory Decision-Making for Drug and Biological Products (December 2021)

Link: https://www.fda.gov/media/154714/download 

5. The International Society of Pharmacoepidemiology – Guidelines for good pharmacoepidemiology practices (ISPE GPP) (June 2015)

Link: https://www.pharmacoepi.org/resources/policies/guidelines-08027/ 

6. WMA Declaration of Helsinki – Ethical Principles for Medical research Involving Human Subjects (October 2013)

Link: https://www.wma.net/policies-post/wma-declaration-of-helsinki-ethical-principles-for-medical-research-involving-human-subjects/ 

7. Health Canada – Elements of Real World Data/Evidence Quality throughout the Prescription Drug Product Life Cycle (March 2019)

Link: https://www.canada.ca/en/services/health/publications/drugs-health-products/real-world-data-evidence-drug-lifecycle-report.html 

8. EMA – Guideline on good pharmacovigilance practices (GVP) Module VIII – Post-authorisation safety studies (Rev 3) (October 2017)

Link: https://www.ema.europa.eu/en/documents/scientific-guideline/guideline-good-pharmacovigilance-practices-gvp-module-viii-post-authorisation-safety-studies-rev-3_en.pdf 

9. Joint recommendations of the BfArM and the PEI on application observations according to § 67 Para. 6 AMG and on the notification of non-interventional safety tests according to § 63f AMG of December 20th, 2019

Link: https://www.bfarm.de/SharedDocs/Downloads/DE/Arzneimittel/Zulassung/klin-pr/nichtInterventPruef/Gemeinsame%20Empfehlungen%20zu%20AWB%20und%20PASS.pdf?__blob=publicationFile&v=1 

10.  FDA Guidance – Best Practices for Conducting and Reporting Pharmacoepidemiologic Safety Studies Using Electronic Healthcare Data Sets (May 2013)

Link: https://www.fda.gov/media/79922/download 

RWR Insights – What GxPs are Applicable to Non-Interventional (Observational) Studies?2022-08-07T16:29:49+00:00

RWR Insights | Quality Standards for Registries – EUnetHTA REQUEST Tool

RWR CONTEXT

This is the third (3rd) and last in the series exploring current quality standards for registries and registry-based studies.  This month we focus on quality standard expectations when using real world data (RWD) from registries to support Health Technology Assessment.  Specifically, we’ll look in detail at the ‘Registry Evaluation and Quality Standards Tool (REQueST)’ tool developed by the European Network for Health Technology Assessment (EUnetHTA)

APRIL 2022 – This is the third (3rd) and last in the series exploring current quality standards for registries and registry-based studies.  This month we focus on quality standard expectations when using real world data (RWD) from registries to support Health Technology Assessment.  Specifically, we’ll look in detail at the ‘Registry Evaluation and Quality Standards Tool (REQueST)’ tool developed by the European Network for Health Technology Assessment (EUnetHTA) [1] [2]. 

The use of registries is becoming increasingly common in health technology assessment (HTA) and regulation. There is a growing interest in the role of observational data in complementing experimental data. This project aims to support best practice in the collection, use and re-use of real world data, and explore options to support sustainable multi-stakeholder collaboration (as per Paragraph 1 of the EUnetHTA JA3 Vision Paper on REQueST Tool, September 2019) [3].

EUnetHTA – REQUEST Tool 

For HTA purposes, the Registry Evaluation and Quality Standards Tool (REQueST) is designed to be used in 3 steps (as per Paragraph 13 of the EUnetHTA JA3 Vision Paper on REQueST Tool, September 2019):

    • Step 1: Initial screening of a potential registry for suitability. Standards currently presented in the ‘Methodological Information’ section of the tool are intended to enable a user to assess whether a registry can provide data that fulfil their needs6.
    • Step 2: All registries that are potentially suitable should then be assessed against ‘Essential Standards’ relating to registry quality.
    • Step 3: Some registries will require assessment against additional criteria for specific purposes (e.g., international collaboration on data collection will require interoperability). This is assessed in the ‘Additional Requirements’ section of the tool.

The registry owner carries out a self-assessment by completing the ‘registry owner’ column in the ‘Essential Standards’ worksheet of REQueST. This information together with a summary of the registry methodological information and the minimum key documents (listed in paragraph 32) are presented on the registry’s web site. These may be reviewed at any point by organisations considering whether to use the data in evidence development for HTA and regulatory monitoring to check if the information meets their needs (as per Paragraph 23 of the EUnetHTA JA3 Vision Paper on REQueST Tool, September 2019).

Periodic Review of Registries

In general, assessment of the quality of a registry cannot be done as a one-off event; ongoing quality needs to be demonstrated and the tool output will require periodic review (as per Paragraph 30 of the EUnetHTA JA3 Vision Paper on REQueST Tool, September 2019).

Criteria for the frequency of registry review could include the (as per Paragraph 30 of the EUnetHTA JA3 Vision Paper on REQueST Tool, September 2019):

    • Maturity of the registry and technology (e.g., national joint registries dealing with established technologies and governance would require less frequent review).
    • Production of peer-reviewed publications based on the registry (e.g., if at least one peer-reviewed publication per technology is produced in an acceptable time interval, the REQueST review could be less frequent).
    • Purpose of the registry (e.g., if it is bespoke, that is, to meet specific regulatory or technology assessment objectives, quality should be assessed at the beginning and at the point of data use).

It should be noted that the ‘Methodological Information’ and ‘Additional Requirements’ sections of REQueST include questions that relate to specific uses of a registry. Users of REQueST may therefore need to run the tool more than once for an individual registry, and only the ‘Essential Standards’ would be transferrable between assessments (as per Paragraph 31 of the EUnetHTA JA3 Vision Paper on REQueST Tool, September 2019).

All phases require the registry owner to produce and make publicly available the following ‘minimum key documents’ (as per Paragraph 32 of the EUnetHTA JA3 Vision Paper on REQueST Tool, September 2019):

    • Registry aims and methodology including minimum data set and data security policies.
    • Declarations of relevant interests.
    • Demonstration of continuous and comprehensive data collection (exact format and periodicity to be agreed but this is likely to include regular reporting on coverage, completeness and validation of data). Where a registry is federated between many countries, a report would be required from every participating registry.
    • Safety statement detailing any alerts that have been raised (initiated by the registry owner and jointly publicised with the regulator/assessor).

Methodological Information – Screen for registries whose data and methodology match the requirements of the HTA/regulatory study or research question(s)

‘Methodological Information’ refers to the research methodology and which information is collected (research question, protocol and observational methods). This section provides an opportunity for the HTA agency to gather information about the data collected by the registry. Methodological information will be used to assess whether a registry is ready and able to answer a specific research question. There are 8 ‘Methodological Information’ items covering the following areas (as per Appendix A of the EUnetHTA JA3 Vision Paper on REQueST Tool, September 2019):

•      Type of registry

•      Use for registry-based studies and previous publications

•      Geographical and organisational setting

•      Duration

•      Size

•      Inclusion and exclusion criteria

•      Follow-up

•      Confounders

Essential Standards – Assessment of registry governance to assure general data quality and protection

‘Essential Standards’ are the minimum requirements for every registry. They are essential elements of good practice and evidence quality that can be used in the evaluation of the registry. Unless all essential criteria are demonstrably fulfilled, the HTA agency should not use the registry for evidence evaluation. There are 12 ‘Essential Standards’ items covering the following areas (as per Appendix A of the EUnetHTA JA3 Vision Paper on REQueST Tool, September 2019):

1.     Registry aims and methodology

2.     Governance

3.     Informed consent

4.     Data dictionary

5.     Minimum data set

6.     Standard definitions, terminology and specifications

7.     Data collection

8.     Quality assurance

9.     Data cleaning

10.  Missing data

11.  Financing

12.  Protection, security and safeguards

Additional Requirements – Specific requirements for the evidence questions

‘Additional Requirements’ are elements of good practice and evidence quality which are not always practical or feasible to achieve but are useful to consider in planning and evaluating registries. Evaluation of the ‘Additional Requirements’ depends on the requirements of an individual HTA agency and the specific context or registry use (e.g., an international collaboration on data collection will require registry interoperability). There are 3 ‘Additional Requirements’ items covering the following areas (as per Appendix A of the EUnetHTA JA3 Vision Paper on REQueST Tool, September 2019):

•      Interoperability and readiness for data linkage

•      Data sources

•      Ethics

References

1. Registry Evaluation and Quality Standards Tool (REQueST)

Link: https://www.eunethta.eu/request-tool-and-its-vision-paper/ 

2. European Network for Health Technology Assessment (EUnetHTA)

Link: https://www.eunethta.eu/ 

3. EUnetHTA JA3 Vision Paper on REQueST Tool (September 2019)

Link: https://d2yaq9q3r816qg.cloudfront.net/wp-content/uploads/2019/10/EUnetHTAJA3_Vision_paper-v.0.44-for-ZIN.pdf?x69613

RWR Insights | Quality Standards for Registries – EUnetHTA REQUEST Tool2022-08-07T16:34:25+00:00

Quality Considerations when Using RWD from Registries to Support Regulatory Decisions in the EU

RWR CONTEXT

EMA has published a comprehensive guideline, which provides recommendations on key methodological aspects that are specific to the use of patient registries when planning to conduct registry-based studies to support regulatory decision making on medicinal products within the European Union (EU).

In October 2021, the EMA published its “Guideline on Registry-Based Studies” [Link] [1]. 

According to the EMA:

In this article we will explore:

    • The differences between a registry and a registry-based study
    • Use of registry-based studies for evidence generation
    • Considerations when planning a registry-based study – Feasibility analysis
    • Legal obligations and regulatory requirements for registry-based studies
    • Good Registry Practice (GRP) – Quality considerations for patient registries
    • Examples of agreed key performance indicators (KPIs) of data quality
    • Data sharing outside the context of registry-based studies – Contractual considerations
    • Checklist for evaluating the suitability of registries for registry-based studies

>>>DOWNLOAD A PDF OF THE ARTICLE: https://rwr-regs.com/wp-content/uploads/2022/04/2022-04-01_Quality-Standards-for-Registry-Based-Studies-EU-converted.pdf

Patient Registries as an Important Data Source for Registry-Based Studies

Patient registries may have several purposes, such as to monitor the clinical status, quality of life, comorbidities and treatments of patients over time or to monitor and improve overall quality of care. They are a source of data on the presence or occurrence of a particular disease or health-related individual characteristic(s), such as a set of signs or symptoms, or a specific condition, such as pregnancy, breast-feeding, a birth defect or a molecular or genomic feature. They are therefore an important source of data for registry-based studies on healthcare practices, utilisation of medicines and medical devices, and outcomes of treatments. They may, in particular, represent an important source of data on rare diseases and patients treated with advanced therapy medicinal products (ATMP), including gene therapy (as per Section 2 of the EMA – Guideline on Registry-Based Studies, October 2021) [1].

Differences Between a Registry-Based Study and a Patient Registry

(Source: Section 3.1 of the EMA – Guideline on Registry-Based Studies, October 2021 [1])

Use of Registry-Based Studies for Evidence Generation

The acceptability of registry-based studies as a source of evidence for regulatory purposes depends on several factors related to the specific regulatory assessment procedure for the concerned medicinal product, the characteristics of the concerned registry (see Annex) and the objectives, design and analytical plan of the proposed study. Early consultation with national competent authorities (NCAs), where applicable, and with EMA (e.g., the procedure for Scientific Advice and Protocol Assistance) is recommended when a registry-based study is proposed to be used and study protocols should be published (as per Section 3.2 of the EMA – Guideline on Registry-Based Studies, October 2021) [1].

Examples where registry-based studies have been used for evidence include (as per Section 3.2 of the EMA – Guideline on Registry-Based Studies, October 2021) [1]:

    • To complement the evidence generated in the pre-authorisation phase
        • Examples of such evidence may include information on standards or real-world practice of care for the disease, incidence, prevalence and determinants of disease outcomes in clinical practice, or the characteristics of the registry population.
        • Studies based on patient registries may also contextualise the results of uncontrolled trials, and patient registries have been used to support registry-based randomised controlled trials (RRCTs) for patient recruitment (e.g., to identify patients meeting inclusion/exclusion criteria), randomisation allocation, sample size calculation, endpoints identification, data collection and study follow-up. Open questions remain regarding the validity and relevance of RRCTs. It is therefore recommended to obtain Scientific Advice from EMA and, where applicable, from the concerned NCAs, health technology assessment (HTA) bodies and health insurance schemes as payers on the acceptability of the chosen approach for evidence generation in case deviations from a traditional randomised clinical trial (RCT) design are considered.
    • To provide evidence in the post-authorisation phase
        • Patient registries can be the basis for recruitment and randomisation for RCTs and non-interventional studies, post-authorisation efficacy studies (PAES) and post-authorisation safety studies (PASS) performed after marketing authorisation. 
        • Patient registries may allow linkage of patient records with other data sources such as biobank data, census data, or demographic data.
        • In the context of medicinal products with efficacy previously demonstrated in RCTs, registry-based studies may help, for example, to assess the effectiveness of adapted dosing schemes applied in clinical practice and understand effectiveness and safety of products in a broader clinical disease-related context and a more heterogenous patient population.
        • Products intended for rare diseases are often studied in uncontrolled trials and the size of the safety and efficacy datasets at time of marketing authorisation application is small. In these cases, follow-up for efficacy and safety may be needed, and PAES and PASS are often imposed for post-authorisation evidence generation. These are frequently and preferentially performed on the basis of existing patient registries.
    • To evaluate the effects of medicinal products used during pregnancy and breast feeding
        • Pregnancy registries include pregnant women exposed or not to different treatments and followed up to collect information on outcomes of pregnancy and in the offspring for a given medicinal product. Despite the challenges of such studies related to the completeness of information on pregnancy outcomes, the ascertainment of the exposure window/ trimester, teratology information services or electronic healthcare records where mother-child linkage is possible, pregnancy registries may also provide valuable data on the benefit-risk balance of medicinal products in breastfeeding.

Considerations When Planning a Registry-Based Study – Feasibility Analysis

MAAs/MAHs proposing a registry-based study should provide adequate information regarding the availability of data, the quality management procedures applied and the need and feasibility of introducing any study-specific additional data collection and quality control measures (as per Section 3.3 of the EMA – Guideline on Registry-Based Studies, October 2021) [1].

A feasibility analysis should be considered by the MAA/MAH or research organisation initiating the study prior to writing the study protocol, to guide its development and facilitate the discussion with NCAs, EMA, HTA bodies and other parties. The feasibility analysis should be performed in collaboration with registry holders and include the following information, as applicable (as per Section 3.3 of the EMA – Guideline on Registry-Based Studies, October 2021) [1]:

    • General Description – General description of the registry(ies) or network of registries; the Checklist for evaluating the suitability of registries for registry-based studies can be used to prepare this description; the epidemiology of the disease, this is more precise, medicines use and standards of care applied in the country or registry setting should be described if relevant for the specific study.
    • Availability of Core Data Elements – Analysis of the availability in the registry of the core data elements needed for the planned study period (as availability of data elements may vary over time), including relevant confounding and effect-modifying variables, whether they are mapped to any standard terminologies (e.g., MedDRA, OMOP common data model), the frequency of their recording and the capacity to collect any additional data elements or introduce additional data collection methods if necessary .
    • Quality and Completeness of the Data Elements – Analysis of the quality, completeness and timeliness of the available data elements needed for the study, including information on missing data and possible data imputations, risk of duplicate data for the same patient, results of any verification or validation performed (e.g., through an audit), analysis of the differences between several registries available in the network and their possible impact on data integration, description of the methods applied for data linkage as applicable, and possible interoperability measures that can be adopted.
    • Adverse Event Reporting Processes – Description of processes in place for the identification of adverse events and prompt reporting of suspected adverse reactions occurring in the course of treatments, and capacity to introduce additional processes for their collection and reporting if needed.
    • Study Size and Patient Recruitment – Study size estimation and analysis of the time needed to complete patient recruitment for the clinical study by providing available data on the number of centres involved in the registry(ies), numbers of registered patients and active patients, number of new patients enrolled per month/year, number of patients exposed to the medicinal product(s) of interest, duration of follow-up, missing data and losses to follow-up, need and possibility to obtain informed consent.
    • Bias – Evaluation of any potential information bias, selection bias due to the inclusion/exclusion criteria of centres (e.g., primary, secondary or tertiary care) and patients, potential time-related bias between and within registry(ies), and potential bias due to loss to follow-up.
    • Confounding – Evaluation of any potential confounding that may arise, especially if some data elements cannot be collected or measured.
    • Analytical Issues – Analytical issues that may arise based on the data characteristics and the study design.
    • Data Privacy – Any data privacy issues, possible limitations in relation to informed consent and governance related issues such as data access, data sharing and funding source.
    • Suitability of the Registry – Overall evaluation of the suitability of the registry for the specific study, taking into account any missing information on the above-mentioned aspects.

The final report of the feasibility analysis may be submitted either separately or as part of the proposed protocol for a registry-based study. In order to inform the feasibility of other studies in the same registry and reduce duplication of work, the feasibility analysis should be published with the study protocol in the EU PAS Register in agreement with the registry holder. Any confidential information may be redacted if needed (as per Section 3.3 of the EMA – Guideline on Registry-Based Studies, October 2021) [1].

Joint Registry-Based studies

For regulatory studies addressing a class of products where several MAHs have the same obligation to perform a study, MAHs are encouraged to design a joint registry-based study or to join an already existing study on the same topic (as per Section 3.3 of the EMA – Guideline on Registry-Based Studies, October 2021) [1].

Study Protocol

The study protocol should describe how the registry infrastructure and population will be used to address the research question of interest, how the study will be conducted and how the validity (both internal and external) of the results will be ensured (as per Section 3.4 of the EMA – Guideline on Registry-Based Studies, October 2021) [1].

Protocols for non-interventional studies should follow the guidance on the format and content of the protocol for PASS or the Scientific Guidance on PAES. They should apply the best methodological standards, including if applicable those described by the ENCePP Guide on Methodological Standards in Pharmacoepidemiology. The ENCePP Checklist for Study Protocols identifies important points to be addressed when designing a non-interventional study and writing the study protocol (as per Section 3.4 of the EMA – Guideline on Registry-Based Studies, October 2021) [1].

Where the registry-based study entails secondary use of data, the study protocol should specify the events of interest that are already collected in the registry and discuss the risks of bias and unmeasured confounding. Dedicated and complete search strategies, coding lists or adjudication should be used to accurately define the outcomes of interest (as per Section 3.4 of the EMA – Guideline on Registry-Based Studies, October 2021) [1].

The protocol should specify agreements made with the registry holder on the additional variables that can be collected, with timelines for data availability (as per Section 3.4 of the EMA – Guideline on Registry-Based Studies, October 2021) [1].

If a registry-based study is to be conducted across multiple registries, a common study protocol should be developed based on core data elements available in the registry and a common design, even if some aspects of the study may vary according to the characteristics of each registry and not all outcomes may be assessed in all registries. Nevertheless, the protocol should also describe differences between registries, assess the resulting heterogeneity of data and critically discuss its potential impact on study results. The protocol or statistical analysis plan (SAP) should propose sensitivity analyses addressing this heterogeneity (as per Section 3.4 of the EMA – Guideline on Registry-Based Studies, October 2021) [1].

Where several registries are suitable for a study but not all of them are intended to be involved, the study protocol should provide the justification of the choice, i.e., inclusion and exclusion criteria, and discuss the potential impact of selection and interpretability of datasets and findings (as per Section 3.4 of the EMA – Guideline on Registry-Based Studies, October 2021) [1].

Choice of Study Population – Procedures for Primary Data Collection

The registry population serves as the source population for the registry-based study. The choice of the study population should be driven by the study objectives and may represent the totality of the registry population or only a subset with pre-defined characteristics. For example, when studying a medicine of interest, the potential study population may include various groups of patients: newly diagnosed patients entering the registry and receiving a first prescription of the medicine of interest, and registry patients already diagnosed with the disease and who are switched from another treatment, receive the medicine of interest as add-on therapy or have received the medicine of interest only in the past. In such situations, it is useful to collect the data needed to describe all patients receiving the medicine of interest and assess the heterogeneity between subsets of these patients (as per Section 3.5.1 of the EMA – Guideline on Registry-Based Studies, October 2021) [1].

In case of study-specific primary data collection within an existing registry, it is critical that procedures are in place to support complete data collection on all eligible patients enrolled in the registry (as per Section 3.5.1 of the EMA – Guideline on Registry-Based Studies, October 2021) [1].

Additional study-specific primary data collection may add complexity to the registry-based study. The data collection method applied should clearly be described in the study protocol as it has implications with regards to potential sources of bias and confounding, adequate retrieval of missing data and safety reporting requirements (as per Section 3.6 of the EMA – Guideline on Registry-Based Studies, October 2021) [1].

Additional study-specific data collection may also affect the ongoing registries’ data collection and maintenance and require audit and validation (as per Section 3.6 of the EMA – Guideline on Registry-Based Studies, October 2021) [1].

Informed Consent

Informed consent serves as an ethical standard and procedural obligation. It provides the fundamental condition under which a person can be included into a study. It is not conceived as a legal basis but should be seen as a safeguard for data processing

compliance. Therefore, it is important to distinguish between the requirement for consent for a subject to participate in a study and the requirements for a lawful processing of personal data under the GDPR (as per Section 3.5.2 of the EMA – Guideline on Registry-Based Studies, October 2021) [1].

In the context of a registry-based study, the ethical and procedural obligations require that informed consent be obtained from patients to participate in the study in addition to the consent already given for participating in the registry, as applicable. It should clearly outline areas such as an explanation of the purposes of the study, the expected duration, intended use of their data and cover all data to be accessed and processed as specified in the study protocol (including but not limited to the access for monitoring, auditing or inspections by competent authorities). It should also provide information about what will happen to the results of the study (as per Section 3.5.2 of the EMA – Guideline on Registry-Based Studies, October 2021) [1].

Data Protection

The conduct of registry-based studies needs to respect the following applicable Union data protection rules at each step of the processing of personal data, including the option for data sharing/pooling between registries and other stakeholders like competent authorities and MAAs/MAHs:

    • The General Data Protection Regulation (EU) 2016/679 (GDPR), which applies to processing carried out by organisations and bodies operating within the EU, and
    • Regulation (EU) 2018/1725 (EUDPR), which applies to Union institutions, bodies, offices and agencies

(as per Section 3.5.3 of the EMA – Guideline on Registry-Based Studies, October 2021) [1].

When conducting registry-based studies, the legal basis of the personal data processing needs to be established. Specific considerations may be required in case of processing of special categories of personal data such as sensitive (health) information. It should be noted that Member States are allowed to maintain or introduce further conditions, including limitations with regard to the processing of genetic data, biometric data or data concerning health (as per Section 3.5.3 of the EMA – Guideline on Registry-Based Studies, October 2021) [1].

According to the principle of accountability, it is the obligation of the data controller (e.g. a registry holder, MAA/MAH, investigator) to implement appropriate technical and organisational measures to ensure and be able to demonstrate that the personal data are processed in accordance with data protection requirements (as per Section 3.5.3 of the EMA – Guideline on Registry-Based Studies, October 2021) [1].

Data Quality Management

Data quality management for a registry-based study depends on various factors, including the planned use of the study results and whether the study makes use of primary data collection or secondary use of registry data. While data quality management of the registry is the responsibility of the registry holder, it is the MAA/MAH’s responsibility to manage the data quality of the registry-based study and interpret the results based on findings on data quality. Specific details on level of data verification and actions to be taken if there are relevant findings, including possible internal or external audits, should be described in a specific data management plan. This plan should be discussed and agreed upon by the MAA/MAH and the registry holder (as per Section 3.7 of the EMA – Guideline on Registry-Based Studies, October 2021) [1].

Methods and specific measures should be guided by the feasibility analysis and be selected with a view to minimise risk of invalid study results (as per Section 3.7 of the EMA – Guideline on Registry-Based Studies, October 2021) [1]:

    • The validity of any data cleaning, extraction and transformation processes should be verified and monitored. This may be specifically relevant in studies using a network of registries where the transformation is performed locally. A risk-based approach requires the identification of data that are critical for data protection and the reliability of the study results.
    • Quality checks of the data used in the study should be performed to alert on erroneous, missing or out-of-range values and logical inconsistencies, and trigger prompt data verification and remedial measures if needed.
    • In studies with primary data collection, the various factors (e.g. limited human or material resources or inadequate training) influencing quality should be identified and addressed to preserve the integrity of the study. Possible measures include random source data verification, onsite review of processes and computerised systems used for data collection and management. The collected information per time interval for the main outcome parameters can be compared to the amount expected.

The European Commission’s risk-proportionate approaches in clinical trials, the EMA Reflection Paper on risk-based quality management in clinical trials, the GVP Module III on pharmacovigilance inspections and national regulations should be consulted on these aspects (as per Section 3.7 of the EMA – Guideline on Registry-Based Studies, October 2021) [1].

Data Analysis

The analytical approach to the outcomes of interest should be pre-specified in the registry-based study protocol and the SAP as applicable. Changes to the pre-specified statistical analysis should be reflected by an amendment to the study protocol and/or by an amendment to the SAP. All changes should be presented in the study report (as per Section 3.8 of the EMA – Guideline on Registry-Based Studies, October 2021) [1].

For non-interventional studies, the ENCePP Guide on Methodological Standards in Pharmacoepidemiology presents methods to address bias and adjust for confounding (as per Section 3.8 of the EMA – Guideline on Registry-Based Studies, October 2021) [1].

Depending on the objectives of the registry-based study, the data analysis may need to include an evaluation of the representativeness of the study population in relation to the source population, as it may influence the external validity of the registry-based study. In case of primary data collection, a comparison of available data between eligible registry patients who are recruited, who decline recruitment or who withdraw from the study and between patients randomised and not randomised in the study, should be performed. If possible, this should be supplemented by a comparison of the study population with a similar population identified from scientific literature data, available electronic healthcare databases, other registries deemed suitable for the study but not used for data collection as justified in the study protocol, or other population-based data sources (as per Section 3.8 of the EMA – Guideline on Registry-Based Studies, October 2021) [1].

Missing data may lead to bias and confounding, and their handling should be carefully described in the study protocol and the SAP. A thorough justification should be provided for the assumptions about their distribution, causes and timing. The ENCePP Guide on Methodological Standards in Pharmacoepidemiology provides guidance on how to handle missing data (as per Section 3.8 of the EMA – Guideline on Registry-Based Studies, October 2021) [1].

In the absence of randomised treatment allocation in registry-based non-interventional studies, some common analytical issues should be addressed (as per Section 3.8 of the EMA – Guideline on Registry-Based Studies, October 2021) [1]:

    • The characteristics of patient groups prescribed different treatments are likely to differ. Treatment decisions may be influenced by various factors that may also be associated with the risk of occurrence of the outcome of interest, such as disease severity or the monitoring practice of patients. While methods for addressing this underlying problem have been proposed, these do not provide a unique solution and several sensitivity analyses using different approaches should be performed. In addition, ascertainment of marginal treatment effects over time and factors underlying treatment trajectories may require complete collection of information over the course of the study.
    • Registries and registry-based studies may involve different time points for patient inclusion and follow-up, initiation of treatments of interest and ascertainment of events and other variables. The probability of occurrence of events of interest may also be time-dependent. These time points are important to consider as they affect the comparability between treatment groups. Graphical representation of the analysis plan should be used to help understand the various time components of the study and the registry. When investigating a treatment effect, immortal time bias can occur when the follow-up period for the study starts before initiation of the treatment under study and the period between start of follow-up and start of treatment is misclassified as exposed.
    • Selection bias, information bias and time-related bias may also occur in comparisons to historical control groups. The clinical context may have changed with regard to e.g., treatment options, diagnosis, medical practice in choice of treatments according to severity of disease, patient care, secular trends in the occurrence of important events, completeness of data collection or other uncollected or unknown factors. These sources of bias should be identified and the impact on the validity of the results assessed.
    • A comparative non-exposed control group may be selected from outside the registry, for example from another registry or electronic healthcare records in a country/region where the medicine has not yet been marketed. In this situation, one should ensure that underlying differences between the two populations influencing the risk of outcome occurrence are adequately measured and accounted for in the analysis. Since it may not be possible to identify all underlying differences between populations and completeness of data collection may differ, such comparisons need to be interpreted cautiously.
    • Registries offer the opportunity to compare patients prescribed a treatment of interest with patients who are untreated or who have received a different treatment(s) over a long period of time. Inclusion of prevalent medicine users (i.e., patients already treated for some time before study follow-up begins) can introduce two types of bias. Firstly, prevalent medicine users are “survivors” of the early period of treatment, which can introduce substantial (selection) bias if the risk for adverse reactions varies with time (e.g., if treatments carry a risk of hypersensitivity reactions or affect cardiovascular risk). Secondly, covariates influencing medicine prescription at study entry (e.g., disease severity) may be affected by previous medicine use, or patients may differ regarding health-related behaviours (e.g. healthy user effect). A new user design reduces these biases by restricting the analysis to incident medicine users, i.e., patients who enter the study cohort only at the start of the first course of the treatment(s) of interest during the study period. The disadvantages of a new-user design may be a lower sample size and a lower number of patients with long-term exposure, which may then require to extend the duration of the study.
    • In the context of the new user design, use of an active comparator may reduce confounding by indication or disease severity as a comparison is made between patients with the same indication initiating different treatments. With newly marketed medicines, however, an active comparator with ideal comparability of patients’ characteristics may often be unavailable because newly marketed medicines are often strictly prescribed according to patients’ prognostic characteristics and reimbursement considerations, which leads to channelling bias.

Data Reporting

National and EU obligations and reporting requirements for non-interventional studies should be followed (as per Section 3.9 of the EMA – Guideline on Registry-Based Studies, October 2021) [1].

The methods used in the study should be published with sufficient details, while protecting patient privacy, to allow for replication using the same registry database or using a database derived from another registry collecting similar data. Relevant guidelines on reporting of results from non-interventional studies are presented in the Good Pharmacovigilance Practices Module VIII and the ENCePP Guide on Methodological Standards in Pharmacoepidemiology (as per Section 3.9 of the EMA – Guideline on Registry-Based Studies, October 2021) [1].

Post-authorisation registry-based non-interventional studies should be registered in the EU PAS Register with the study protocol, the SAP if applicable and the final study report. The final report must contain all study results derived from the analyses prespecified in the study protocol and SAP, whether favourable or unfavourable. The analytical code as well as any prior feasibility analyses are ideally also made available. A summary in lay language of the main results and conclusions of the final study report should be prepared and distributed to the registry participants in collaboration with the registry holder (as per Section 3.9 of the EMA – Guideline on Registry-Based Studies, October 2021) [1].

For non-interventional studies, the principles of scientific independence and transparency for reporting study results described in the ENCePP Code of Conduct and the ADVANCE Code of Conduct for vaccines should be followed. The responsibility for preparing the final study report lies at the appropriate level of study governance, e.g., medical/scientific advisory board, principal investigator and local registry investigators in studies based on multiple registries. For studies funded by a MAA/MAH and requested by a regulatory authority, all parties involved should be responsible for ensuring that the study meets the regulatory requirements of the competent authority and the MAA/MAH should be

able to comment on the study results and their interpretation as well as on the format of the report.  Requests by the MAA/MAH that interpretation of the results or their presentation be changed should be based on sound scientific reasons or documented regulatory requirements (as per Section 3.9 of the EMA – Guideline on Registry-Based Studies, October 2021) [1].

Following the submission of the final study report, the competent authority may request additional information and clarifications from the MAA/MAH or may initiate an inspection. Therefore, if a research contract is signed between the MAA/MAH and the registry holder, the contract should include a requirement for the registry holder to address the scientific aspects of the request, with the possibility for the MAA/MAH to provide comments, as well as a requirement to allow a possible regulatory inspection of the registry-based study (as per Section 3.9 of the EMA – Guideline on Registry-Based Studies, October 2021) [1].

Legal Obligations and Regulatory Requirements for Registry-Based Studies

The following table summarises the legal basis and regulatory requirements applicable to MAAs/MAHs for different activities related to registry-based studies (as per Section 4 of the EMA – Guideline on Registry-Based Studies, October 2021) [1].

 

Good Registry Practice (GRP) – Considerations for Patient Registries

 

Quality Management – Framework for Quality Management

Uncertainties about the quality of the data collected in registries may undermine the confidence in the validity and reliability of the evidence generated from registry data in registry-based studies. The Commission Implementing Regulation (EU) No 520/2012 and GVP Module I provide a quality framework for MAHs, competent authorities of Member States and the EMA. Measurable quality requirements can be achieved by (as per Section A.4.1 of the Annex of the EMA – Guideline on Registry-Based Studies, October 2021) [1]:

    • Quality planning: establishing structures (including validated computerised systems) and planning integrated and consistent processes
    • Quality assurance and control: monitoring and evaluating how effectively the structures and processes have been established and how effectively the processes are being carried out
    • Quality improvement: correcting and improving the structures and processes where necessary.

These quality management activities (“plan, do, check, act”) should be done in a continuous manner throughout the lifetime of the registry and be regularly assessed. They should be made available to patients, health care professionals and potential users of the registry data to provide confidence that quality management is adequately performed. Responsibilities should be clearly defined to enable sustainability of the quality management system (as per Section A.4.1 of the Annex of the EMA – Guideline on Registry-Based Studies, October 2021) [1].

Data security should be part of quality management. Use of an existing patient registry for a new purpose, such as a registry-based study, may require availability of predefined data elements for specific users (e.g. users who perform data entry, management, quality control, extraction or analysis) but not necessarily all registry data. Specific measures (e.g., fire walls, log-in codes or access rights) may therefore need to be in place or introduced in the registry system when needed for some categories of users. Traceability (i.e., the possibility to trace changes made to patient data in the registry and who made these changes) should be part of the data security measures (as per Section A.4.1 of the Annex of the EMA – Guideline on Registry-Based Studies, October 2021) [1].

Quality Management – Requirements for Data Quality

In this context, data quality includes four main components (as per Section A.4.2 of the Annex of the EMA – Guideline on Registry-Based Studies, October 2021) [1]:

    • Consistency: the formats and definitions of the variables are consistent over time, across all centres within a registry and across all registries within a network of registries
    • Completeness: patient enrolment is maximised, patient attrition is minimised and complete information on a core data set is recorded for all eligible patients with minimisation of missing data
    • Accuracy: the data available in the registry is a correct representation of patient information available to the health care professional, e.g., data available in medical charts or laboratory test results; where the registry data are a compilation or duplication of electronic medical records at the point of care, accuracy should rely on a check of the extraction and uploading procedure
    • Timeliness: there is a timely recording and reporting of data and data updates, based on their intended use in compliance with an agreed procedure.

Requirements of data quality may be difficult to achieve concomitantly in all centres within a registry or within all registries of a network of registries; implementation of the same data elements, terminologies, data entry procedures and data control software may not be feasible simultaneously in all centres. Intermediate solutions may be adopted focussing on a core data set and mapping procedures. Centres may progressively implement components of data quality and be included in the registry or network of registries once they have achieved an adequate level of data quality as agreed between the concerned parties according to the data needs (as per Section A.4.2 of the Annex of the EMA – Guideline on Registry-Based Studies, October 2021) [1].

Quality Management – Key Performance Indicators of Data Quality

Registries should use performance indicators to assess and drive improvement of data quality. Such indicators should be measurable and associated with remedial measures if acceptable levels of quality are not found. Their definition depends on the disease, governance, infrastructure, local health system and processes in place within the registry or network of registries. They should therefore be defined in a multi-disciplinary approach with all concerned parties. Examples of agreed key performance indicators of data quality are presented in the reports of the EMA workshops on cystic fibrosis registries, multiple sclerosis registries and CAR T-cell Therapy Registries (as per Section A.4.3 of the Annex of the EMA – Guideline on Registry-Based Studies, October 2021) [1].

Examples of Agreed Key Performance Indicators of Data Quality

Table References: EBMT and CIBMTR Registries: https://www.ema.europa.eu/en/documents/report/report-car-t-cell-therapy-registries-workshop_en.pdf ;   Haemophilia Registries: https://www.ema.europa.eu/en/documents/report/report-haemophilia-registries-workshop_en.pdf ; Multiple Sclerosis Registries: https://www.ema.europa.eu/en/documents/report/report-multiple-sclerosis-registries_en.pdf ; Cystic Fibrosis Registries: https://www.ema.europa.eu/en/documents/report/report-cystic-fibrosis-registries_en.pdf

Quality Management – Data Quality Management Activities

Quality management can be supported by the activities described below. These activities should take into account appropriate technical and organisational measures to be implemented to ensure a sufficient level of security when personal data and more specifically health data is processed. Such measures should at least consist of pseudonymisation, encryption, non-disclosure agreements, strict access role distribution, access role restrictions as well as access logs. National provisions, which may stipulate specific technical requirements or other safeguards such as adherence to professional secrecy rules should be also taken into account (as per Section A.4.4 of the Annex of the EMA – Guideline on Registry-Based Studies, October 2021) [1].

Given the variety in the organisation and infrastructure of registries, these recommendations should be adapted to each situation (as per Section A.4.4 of the Annex of the EMA – Guideline on Registry-Based Studies, October 2021) [1]:

    • KPIs and SOPs – Data quality management activities should be documented, communicated, maintained and updated as necessary, and all relevant source documents should be kept, managed and made available for auditing purposes in a timely manner, including:
        • Standard Operating Procedures (SOPs), steps of data quality management from data planning to reporting, with data management responsibilities
        • Key Performance Indicators (KPIs) of data quality, planned and performed data checks (manual or automated) and cleaning processes including query management and on-site monitoring.
    • Support Tools – Should be developed and provided, e.g., data collection and reporting software, support function (helpdesk), training material and training sessions. A centralised remote electronic quality control could be set-up to limit on-site visits to be done according to a predefined risk approach.
    • Appropriately Qualified and Trained Staff – Appropriate qualification and training of data managers and other persons involved in the data collection process should be ensured, with knowledge about the disease, exposures and outcomes captured in the registry.
    • Routine Data Quality Checks – In case of a local data extraction process or manual data entry, routine data quality checks should be performed to alert on erroneous, missing or out-of-range values and logical inconsistencies, and trigger prompt data verification and remedial measure if needed. The validity of any data cleaning, extraction and transformation processes should be documented, especially if it involves mapping of data to a common terminology.
    • Internal or External Audits – Internal or external audits with on-site review of processes and data audits should be performed according to a risk-based approach; remote quality control measures, targeted visits and targeted source data verification should be triggered by pre-defined thresholds of data quality measures.
    • Data Verification – The minimum amount of data verification required may depend on the amount of data collected and should ideally take into account critical aspects of data collection where differences may occur, e.g., between individual centres or between persons within individual centres.
    • External Comparisons of Aggregated Registry Data – Aggregated registry data should ideally be compared to literature data or data from external data sources such as electronic health records or insurance claims databases as regards the distribution of categories of important variables such as age, gender, factors associated with disease occurrence or severity, or drug exposure.
    • Feedback on Data Quality Issues – Feedback on findings on data quality issues should be given systematically to data providers so that escalation and remedial action can be taken at the level of the data source.
    • Corrective and Preventative Activities (CAPAs) – When considering implementation of corrective and preventive activities, additional workload for data collection and data entry should be addressed, as a cumbersome data entry process may increase the amount of missing data and decrease data quality.

Governance

Registries generally operate under governance principles influenced by their purpose, operating procedures, legal environment or funding sources (55). Different parties may potentially also have divergent priorities, such as scientific independence, fulfilment of regulatory commitments, transparency or intellectual property rights. Clear governance principles supporting effective collaborations between all parties for regulatory use of registries, including data sharing between stakeholders, are therefore useful (as per Section A.5 of the Annex of the EMA – Guideline on Registry-Based Studies, October 2021) [1].

Registry holders should consider the following aspects to ensure transparency, best use and

sustainability of their registry(as per Section A.5 of the Annex of the EMA – Guideline on Registry-Based Studies, October 2021) [1]:

    • To publish documentation of key registry characteristics, such as purpose of the registry, inclusion and exclusion criteria for participating centres and enrolment of patients, core and optional data sets collected (with timelines and frequency of data uploads), quality management process and experience of previous collaborations; the registry should be registered in the ENCePP Resources Databases.
    • To establish a governance structure for the management of the registry and registry-based studies, with a steering committee, ethics committee and scientific advisory board.
    • To establish a single contact point within the registry or network of registries for requesting information on available data and data access conditions.
    • To publish a policy for collaborations with external organisations, including information on the scope and decision-making process for participating in collaborations, policy for data sharing and data analysis (explaining possible options for data transfer and analysis based on data privacy rules in place), possible involvement of a third-party, publication policy, and principles for private and public funding.
    • To provide a supportive scientific and technical function for collaborations, which may include support for the development of the study protocol, interoperability between registries, amendments to the scope, schedule or methods of data collection or extraction, data management and analysis; the support provided may vary according to the approach of collaboration for using multiple data sources (see the ENCePP Guide on Methodological Standards in Pharmacoepidemiology), resources available in the registry and the contractual agreements proposed.
    • To develop a template for research contracts between the registry and external organisations, in line with those recommended by the ENCePP Code of Conduct or the ADVANCE Code of Conduct.

Data Sharing Outside the Context of Registry-Based Studies – Contractual Considerations

There may be situations where registry data could be shared outside the context of formal registry-based studies in the format of counts, aggregated data or statistical reports with NCAs, EMA, MAAs/MAHs, HTA bodies, payer organisations or other parties for clinical development planning or the evaluation or monitoring of medicinal products. These data may concern, for example (as per Section A.6 of the Annex of the EMA – Guideline on Registry-Based Studies, October 2021) [1]:

    • Disease epidemiology in terms of prevalence, incidence, outcomes, prognostic factors, potential confounding variables for defined outcomes
    • Size and distribution of the population with a specific disease, condition or exposure for a planned clinical trial or non-interventional study according to demographics, co-morbidities or medication use
    • Drug utilisation, with number of prescriptions for specific medicinal products (or other indicator of intensity of exposure), indications, dose, route of administration, schedule, duration of use, co-medications or use in specific population groups such as extent of paediatric use
    • Medical device utilisation, with number, types, indications and dates for specific implanted products
    • Surgical procedures with numbers, types, indications, dates and any other relevant details
    • Safety information on medicinal products, for example summary tables of adverse events recorded for specific medicinal products, aggregated data or anonymised line listings of patients presenting AESIs, or outcomes of exposed pregnancies
    • Utilisation of health care resources such as number of visits, hospitalisations, or laboratory tests performed.

This information may require capacity for sound analysis within the registry or, if allowed by the registry governance and patient consent, transfer of an anonymised dataset with selected variables to the requester or a third-party performing the analysis on behalf of the registry or the requester. Data sharing may require a contractual agreement between the registry or network of registries and the other concerned parties (as per Section A.6 of the Annex of the EMA – Guideline on Registry-Based Studies, October 2021) [1].

Checklist for Evaluating the Suitability of Registries for Registry-Based Studies

(Source: Appendix 1 of the EMA – Guideline on Registry-Based Studies, October 2021; List adapted from the REQuEST tool published by EUnetHTA)

 

 

 

Definitions

Patient Registry (synonym: registry)

Organised system that collects uniform data (clinical and other) to identify specified outcomes for a population defined by a particular disease, condition or exposure. The term ‘patient’ highlights the focus of the registry on health information. It is broadly defined and may include patients with a certain disease, pregnant or lactating women or individuals presenting with another condition such as a birth defect or a molecular or genomic feature (as per the Glossary of the EMA – Guideline on Registry-Based Studies, October 2021) [1].

Disease Registry

Patient registry whose members are defined by a particular disease or disease-related patient characteristic regardless of exposure to any medicinal product, other treatment or particular health service (as per the Glossary of the EMA – Guideline on Registry-Based Studies, October 2021) [1].

Product Registry

The term product registry is sometimes used to indicate a system of data collection by marketing authorisation applicants and holders (MAAs/MAHs) targeting patients exposed to a specific medicinal product or substance. From a regulatory perspective, recruitment and follow-up of these patients with the aim to evaluate the use, safety, effectiveness or another outcome of this exposure typically falls outside of normal routine follow-up of patients and therefore corresponds to a clinical trial or non-interventional study in the targeted population. It is therefore preferable to avoid using the term “product registry” in this situation and directly refer to the appropriate terminology instead (clinical trial or non-interventional study) (as per Section 2 of the EMA – Guideline on Registry-Based Studies, October 2021) [1].

Registry-Based Study

Investigation of a research question using the data collection infrastructure or patient population of one or several patient registries. A registry-based study is either a clinical trial or a non-interventional study. A registry-based study may apply primary data collection in addition to secondary use of the existing data in the registry (as per the Glossary of the EMA – Guideline on Registry-Based Studies, October 2021) [1].

Registry Database (synonym: register)

Database derived from one or several registries (as per the Glossary of the EMA – Guideline on Registry-Based Studies, October 2021) [1].

Primary Data Collection

Collection of data directly from patients, caregivers, healthcare

professionals or other persons involved in patient care (as per the Glossary of the EMA – Guideline on Registry-Based Studies, October 2021) [1].

Secondary Use of Data

Use of existing data for a different purpose than the one for which it was originally collected (as per the Glossary of the EMA – Guideline on Registry-Based Studies, October 2021) [1].

References

1. EMA – Guideline on Registry-Based Studies (October 2021)

Link: https://www.ema.europa.eu/en/guideline-registry-based-studies-0  

2. Draft FDA Guidance – Real-World Data: Assessing Registries to Support Regulatory Decision-Making for Drug and Biological Products Guidance for Industry (November 2021)

Link: https://www.fda.gov/regulatory-information/search-fda-guidance-documents/real-world-data-assessing-registries-support-regulatory-decision-making-drug-and-biological-products  

3. EUnetHTA – REQueST Tool and its vision paper (September 2019)

Link: https://www.eunethta.eu/request-tool-and-its-vision-paper/ 

Quality Considerations when Using RWD from Registries to Support Regulatory Decisions in the EU2022-08-07T16:37:58+00:00

RWR Insights | Quality Considerations when Using RWD from Registries to Support Regulatory Decisions – USA

RWR CONTEXT

Study sponsors should ensure they have documented policies and procedures in place that enable them to address these FDA recommendations, so that they can systematically assess and use (appropriate quality) registry data as a source of real world data (RWD) to support their drug development strategies, new drug applications (NDAs)/marketing authorisation applications (MAAs), label extensions and post-marketing commitments (PMCs)/post-marketing requirements (PMRs).

In November 2021, the FDA’s published its draft Guidance on “Real-World Data: Assessing Registries to Support Regulatory Decision-Making for Drug and Biological Products” [Link] [1].

This FDA guidance aligns with the EMA’s Guideline on Registry-Based Studies, which was published October 2021.  We’ll discuss the EMA Guideline in detail in the March 2022 RWR Regulatory Updates Report [2].

According to the FDA, whether registry data are fit-for-use in regulatory decision-making depends on the attributes that support the collection of relevant and reliable data as well as additional scientific considerations related to study design and study conduct (as per Section I of the Draft FDA Guidance) [1].

In this article we explore the scientific aspects (e.g., strengths and limitations) and quality aspects of registries (e.g., policies and procedures) that registry owners and study sponsors should consider when addressing these FDA recommendations.

What is a Registry?

Definitions are important because they provide the parameters around which the guidelines and legislation are built.  Definitions help us understand what is applicable/relevant and therefore what we need to comply with.

In the US, the term ‘registry’ is often used to describe the data collection system (registry) and the clinical study that uses the data from the data collection system (registry-based study e.g., non-interventional study).

So, what is a registry in the context of this latest FDA draft guidance?

Registry: A registry is defined as an organized system that collects clinical and other data in a standardized format for a population defined by a particular disease, condition, or exposure. Establishing registries involves enrolling a predefined population and collecting pre-specified health-related data for each patient in that population (patient-level data) (as per Section II of the Draft FDA Guidance) [1].

This context and definition are important because they help us understand why the FDA specifically draws out the uses of registry data in a regulatory context e.g., to inform the design and support the conduct of either interventional studies (clinical trials) or non-interventional (observational) studies.  

Meaning? Non-interventional (observational) studies are not registries…they are clinical studies that use registry data…they are registry-based studies.  So, when we talk about using registry data to support regulatory decisions, think of this in the context of registry data being used as a source of real world data (RWD) for non-interventional studies (and/or clinical trials) which generate the real world evidence (RWE) that is submitted to the FDA as part of (for example) a new drug application (NDA).

Uses of Registry Data

Registries have the potential to support medical product development, and registry data can ultimately be used, when appropriate, to inform the design and support the conduct of either interventional studies (clinical trials) or non-interventional (observational) studies (as per Section II of the Draft FDA Guidance) [1]. 

Examples of such uses include, but are not limited to:

  • Characterizing the natural history of a disease
  • Providing information that can help determine sample size, selection criteria, and study endpoints when planning an interventional study
  • Selecting suitable study participants—based on factors such as demographic characteristics, disease duration or severity, and past history or response to prior therapy—to include in an interventional study (e.g., randomized trial) that will assign a drug to assess that drug’s safety or effectiveness
  • Identifying biomarkers or clinical characteristics that are associated with important clinical outcomes of relevance to the planning of interventional and non-interventional studies
  • Supporting, in appropriate clinical circumstances, inferences about safety and effectiveness in the context of:
      • A non-interventional study evaluating a drug received during routine medical practice and captured by the registry
      • An externally controlled trial including registry data as an external control arm

The data collected in a given registry and the procedures for data collection are relevant when considering how registry data can be used. For example, registries used for quality assurance purposes related to the delivery of care for a particular health care institution or health care system tend to collect limited data related to the provision of care. Registries designed to address specific research questions tend to systematically collect longitudinal data in a defined population, on factors characterizing patients’ clinical status, treatments received, and subsequent clinical events (as per Section II of the Draft FDA Guidance) [1].

Using Registry Data to Support Regulatory Decisions

[Garbage in = Garbage out]

Image Source: https://xkcd.com/2295/ 

Before using any RWD (including registry data) for regulatory decision-making, sponsors should consider whether the data are fit-for-use by assessing the data’s relevance and reliability. The term relevance includes the availability of key data elements (patient characteristics, exposures, outcomes) and a sufficient number of representative patients for the study, and the term reliability includes data accuracy, completeness, provenance, and traceability (as per Section III.A of the Draft FDA Guidance) [1].

Data Accuracy = Correctness of collection, transmission, and processing of data (as per the Glossary of the Draft FDA Guidance) [1].

Completeness = The presence of the necessary data to address the study question, design, and analysis (as per the Glossary of the Draft FDA Guidance) [1].

Provenance = An audit trail that “accounts for the origin of a piece of data (in a database, document or repository) together with an explanation of how and why it got to the present place” (as per the Glossary of the Draft FDA Guidance) [1].

Traceability = Permits an understanding of the relationships between the analysis results (tables, listings, and figures in the study report), analysis datasets, tabulation datasets, and source data (as per the Glossary of the Draft FDA Guidance) [1].

Registry data can have varying degrees of suitability within a regulatory context, depending on several factors, including how the data are intended to be used for regulatory purposes; the patient population enrolled; the data collected; and how registry datasets are created, maintained, curated, and analyzed. Registry data collected initially for one purpose (e.g., to obtain comprehensive clinical information on patients with a particular disease) may or may not be fit for-use for another purpose (e.g., to examine a drug-outcome association in a subset of these patients) (as per Section III.A of the Draft FDA Guidance) [1].

According to the FDA, sponsors should consider both the strength and limitations of using registries as a source of data to generate evidence for regulatory decision-making (as per Section III.A of the Draft FDA Guidance) [1].

Registry strengths:

    • Registries may have advantages over other RWD sources, given that registries collect structured and predetermined data elements and can offer longitudinal, curated data about a defined population of patients and their corresponding disease course, complications, and medical care. 
    • Registries can systematically collect patient-reported data that medical claims datasets or EHR datasets may lack.

Registry limitations:

  • Existing registries may focus on one disease, with limited information on comorbid conditions, even after linkage to other data sources.
  • Enrolled patients may not be representative of the target population of interest due to challenges related to patient recruitment and retention.
      • For example, patients with more severe disease may be more likely to be enrolled in a registry compared to patients with milder disease; or enrolled patients might have different self-care practices, socioeconomic backgrounds, or levels of supportive care versus the entire population of interest. These issues can potentially introduce bias into analyses that make use of registry data.
  • Additional potential limitations of registries involve issues with data heterogeneity (e.g., different clinical characteristics across various populations) and variation in approaches used to address data quality.

Relevance of Registry Data

When considering whether to use an existing registry for regulatory purposes, a sponsor’s overall assessment of the relevance of registry data should consider whether the registry is adequate for evaluating the scientific objectives (as per Section III.B of the Draft FDA Guidance) [1].

For example, the EMA recommends conducting a feasibility analysis prior to writing the study protocol, to guide its development and facilitate the discussion with national competent authorities (e.g., FDA, EMA), health technology assessors (HTAs) and other parties. The feasibility analysis should be performed in collaboration with registry holders and include the following information, as applicable (as per Section 3.3 of the EMA – Guideline on Registry-Based Studies, October 2021) [2]:

  • General Description – General description of the registry or network of registries; the Checklist for evaluating the suitability of registries for registry-based studies can be used to prepare this description; the epidemiology of the disease, this is more precise, medicines use and standards of care applied in the country or registry setting should be described if relevant for the specific study.
  • Availability of Core Data Elements – Analysis of the availability in the registry of the core data elements needed for the planned study period (as availability of data elements may vary over time), including relevant confounding and effect-modifying variables, whether they are mapped to any standard terminologies (e.g., MedDRA, OMOP common data model), the frequency of their recording and the capacity to collect any additional data elements or introduce additional data collection methods if necessary .
  • Quality and Completeness of the Data Elements – Analysis of the quality, completeness and timeliness of the available data elements needed for the study, including information on missing data and possible data imputations, risk of duplicate data for the same patient, results of any verification or validation performed (e.g., through an audit), analysis of the differences between several registries available in the network and their possible impact on data integration, description of the methods applied for data linkage as applicable, and possible interoperability measures that can be adopted.
  • Adverse Event Reporting Processes – Description of processes in place for the identification of adverse events and prompt reporting of suspected adverse reactions occurring in the course of treatments, and capacity to introduce additional processes for their collection and reporting if needed.
  • Study Size and Patient Recruitment – Study size estimation and analysis of the time needed to complete patient recruitment for the clinical study by providing available data on the number of centres involved in the registry(ies), numbers of registered patients and active patients, number of new patients enrolled per month/year, number of patients exposed to the medicinal product(s) of interest, duration of follow-up, missing data and losses to follow-up, need and possibility to obtain informed consent.
  • Bias – Evaluation of any potential information bias, selection bias due to the inclusion/exclusion criteria of centres (e.g., primary, secondary or tertiary care) and patients, potential time-related bias between and within registry(ies), and potential bias due to loss to follow-up.
  • Confounding – Evaluation of any potential confounding that may arise, especially if some data elements cannot be collected or measured.
  • Analytical Issues – Analytical issues that may arise based on the data characteristics and the study design.
  • Data Privacy – Any data privacy issues, possible limitations in relation to informed consent and governance related issues such as data access, data sharing and funding source.
  • Suitability of the Registry – Overall evaluation of the suitability of the registry for the specific study, taking into account any missing information on the above-mentioned aspects.

Reliability of Registry Data

When considering using an existing registry or establishing a new registry, sponsors should ensure there are processes and procedures to govern (as per Section III.C of the Draft FDA Guidance) [1]:

  • Registry operation
  • Education and training of registry staff
  • Resource planning
  • General practices that help ensure the quality of the registry data. 

Such governance attributes help ensure that the registry can achieve its objectives and should include, but not be limited to:

  • An established data dictionary and rules for the validation of queries and edit checks of registry data (as applicable), to be made available for those who intend to use the registry data to perform analyses
      • To support the collection of reliable data within a registry, a registry’s data dictionary should include:
        1. Data elements and how the data elements are defined 
        2. Ranges and allowable values for the data elements 
        3. Reference to the source data for the data elements
  • Defined processes and procedures for the registry, such as:
      • Data collection, curation, management, and storage, including processes in place to help ensure that data within a registry can be confirmed by source data (as applicable) for that registry
      • Plans for how patients, researchers, and clinicians will access and interact with the registry data and the registry’s data collection systems
      • Terms and conditions for use of the registry data by parties other than the registry creator (e.g., terms and conditions a sponsor should satisfy to permit combining the registry data with data from another source)
  • Conformance with 21 CFR part 11, as applicable, including maintenance of access controls and audit trails to demonstrate the provenance of the registry data and to support traceability of the data

Factors that FDA considers when assessing the reliability of registry data include (as per Section III.C of the Draft FDA Guidance):

  • How the data were collected (data accrual)
  • Whether the registry personnel and processes in place during data collection and analysis provide adequate assurance that errors are minimized and that data integrity is sufficient. 
  • Whether the registry has privacy and security controls in place to ensure that the confidentiality and security of data are preserved.

Quality Considerations when Using RWD from Registries to Support Regulatory Decisions

Based on the draft guidance provided by the FDA in their November 2021 publication, what quality aspects of registries (e.g., policies and procedures) should registry owners and study sponsors should consider when addressing these FDA recommendations?

Quality Consideration #1: Policies and Procedures to Support FDA Review of Submissions that Include Registry Data (as per Section III.E of the Draft FDA Guidance) [1].

Sponsors interested in using a specific registry as a data source to support a regulatory decision should meet with the relevant FDA review division before conducting a study that will include registry data (as per Section III.E of the Draft FDA Guidance) [1]. 

Sponsors should:

  • Confer with FDA regarding:
      • The ability to accurately define and evaluate the target population based on the planned inclusion and exclusion criteria
      • Which data elements will come from the registry (versus other data sources) and their adequacy, as well as the frequency and timing of data collection
      • The planned approach for linking the registry to another registry or other data system, when linking is anticipated
      • The planned methods to ascertain and validate outcomes, including diagnostic requirements and the level of validation or adjudication of outcomes FDA agrees is needed
      • The planned methods to validate the diagnosis of the disease being studied.
  • Submit protocols and statistical analysis plans for FDA review and comment before conducting an interventional or a non-interventional study when including data from registries.
  • Predefine all essential elements of a registry study’s design, analysis, and conduct in the protocol and describe how that element will be ascertained from the selected RWD source or sources.
  • Ensure that patient-level data are provided to FDA in accordance with applicable legal and regulatory requirements.
  • Ensure that source records necessary to verify the RWD are made available for inspection as applicable.

Quality Consideration #2: Conduct a feasibility analysis of the registry to guide protocol development and facilitate discussions with regulators (as per Section III.B of the Draft FDA Guidance) [1].

  • Conduct a feasibility analysis prior to writing the study protocol, to guide its development and facilitate the discussion with national competent authorities (e.g., FDA, EMA), health technology assessors (HTAs) and other parties. The feasibility analysis should be performed in collaboration with registry holders (as per Section 3.3 of the EMA – Guideline on Registry-Based Studies, October 2021) [2].

Quality Consideration #3: Policies and procedures should be in place to support the reliability of the registry data, including (as per Section III.C of the Draft FDA Guidance) [1]:

  • Pre-specifying data validation rules for queries and edit checks of registry data
  • Validating the electronic systems used to collect registry data
  • Enabling FDA and persons interested in using the registry’s data to assess the quality of the data, including to help address issues such as errors in coding or interpretation of the source document or documents, as well as data entry, transfer, or transformation errors. 
  • Plans for how patients, researchers, and clinicians will access and interact with the registry data and the registry’s data collection systems
  • Terms and conditions for use of the registry data by parties other than the registry creator (e.g., terms and conditions a sponsor should satisfy to permit combining the registry data with data from another source)

Quality Consideration #4: Policies and Procedures for Linking a Registry to Another Registry or Another Data System (as per Section III.D of the Draft FDA Guidance) [1]. 

If a registry is to be populated with data from another data system, sponsors should:

  • Consider the potential impact of the additional data on overall integrity of the registry data. 
  • Use strategies to correct for redundant data, to resolve any inconsistencies in the data, and to address other potential problems, such as the ability to protect patient privacy while transferring data securely. 
  • Have a plan for addressing the adequacy of patient-level linkages (i.e., that the same patient is being matched). 
  • Consider any jurisdictional requirements (e.g., country-specific laws) when seeking to link patient-level data to another registry or data system.
  • Consider whether the data sources to be linked are interoperable and support appropriate informatics strategies to ensure data integration.
  • Ensure that:
    1. Sufficient testing is conducted to demonstrate interoperability of the linked data systems, 
    2. The automated electronic transmission of data elements to the registry functions in a consistent and repeatable fashion, and 
    3. Data are accurately, consistently, and completely transmitted.
  • Use predefined rules to check for logical consistency and value ranges to confirm that data within a registry were retrieved accurately from a linked data source and that the operational definitions for the linked variables are aligned.

Quality Consideration #5: Documentation of the Process Used to Validate the Transfer of Data (as per Section III.D of the Draft FDA Guidance) [1].

Documentation of the process sponsors used to validate the transfer of data should be available for FDA to review during sponsor inspections. Sponsors should also ensure that software updates to the registry database or additional data sources do not affect the integrity, interoperability, and security of data transmitted to the registry. For example, issues such as the correct temporal alignment of linked data and registry data should be considered (as per Section III.D of the Draft FDA Guidance) [1].

The appropriateness of using additional data sources also depends on how the sponsor intends to use the linked data and the ability to obtain similar data for all patients. For example, for each potential data source, the sponsor should consider whether:

  • The linkage is appropriate for the proposed research question (e.g., the additional data source provides relevant clinical detail and/or long-term follow-up information)
  • The data can be accurately matched to patients in the registry and whether linking records between the two (or more) databases can be performed accurately
  • The variables of interest in the registry and additional data sources have consistent definitions and reliable ascertainment approaches
  • The data have been captured with sufficient accuracy, consistency, and completeness to meet registry objectives

After a sponsor decides to use an additional data source or sources to supplement the registry, the sponsor should: 

  • Develop the approach and algorithms needed to link such data to a registry.
  • Determine how data integrity will be evaluated, including how assessments of any inaccuracies introduced by the linkage (e.g., overcounts of a particular data measure) will be made. 
  • Use appropriate methods for data entry, coding, cleaning, and transformation for each linked data source.

Quality Consideration #6: Policies and Procedures to Support Data Management Strategies, including (as per Section III.C of the Draft FDA Guidance) [1]:

  • Standard Operation Procedures (SOPs) for Data Aggregation and Data Curation: Trained staff should follow standard operating procedures to aggregate data for a registry and carry out data curation
  • Implement and maintain version control by documenting the date, time, and originator of data entered in the registry; performing preventative and/or corrective actions to address changes to the data (including flagging erroneous data without deleting the erroneous data, while inserting the corrected data for subsequent use); and describing reasons for any changes to data without obscuring previous entries.
  • Ensure data transferred from another data format or system are not altered in the migration process
  • Seek to integrate data in the registry that were previously collected using data formats or technology (e.g., operating systems, hardware, software) that are now outdated
  • Account for changes in clinical information over time (e.g., criteria for disease diagnosis, cancer staging)
  • Explain the auditing rules and methods used and the mitigation strategies used to reduce errors 
  • Describe the types of errors that were identified based on audit findings and how the data were corrected

Quality Consideration #7: Periodic Assessment of Data Consistency, Accuracy and Completeness (as per Section III.C of the Draft FDA Guidance) [1].

  • Adequate controls should be in place to ensure confidence in the reliability, quality, and integrity of the electronic source data [4]
  • Indicators of data consistency, accuracy, and completeness should be assessed periodically, with the frequency dependent on the purposes of the registry data (e.g., for the sole purpose of facilitating recruitment in a randomized controlled trial versus using the registry data in an interventional or non-interventional study analysis). 
  • Routine descriptive statistical analyses should be performed to detect the extent of any missing data, inconsistent data, outliers, and losses to follow-up

Conclusion

Whether registry data are fit-for-use in regulatory decision-making (e.g., as a data source for non-interventional studies) depends on the attributes that support the collection of relevant and reliable data as well as additional scientific considerations related to study design and study conduct (as per Section I of the Draft FDA Guidance) [1].

What does this mean for sponsors who are looking to utilise existing disease registries and their associated real world data (RWD) to support their drug development and life cycle management activities?

Study sponsors should ensure they have documented policies and procedures in place that enable them to address these FDA recommendations, so that they can systematically assess and use (appropriate quality) registry data as a source of real world data (RWD) to support their drug development strategies, new drug applications (NDAs)/marketing authorisation applications (MAAs), label extensions and post-marketing commitments (PMCs)/post-marketing requirements (PMRs).

Examples of the policies, procedures and documentation recommended in the draft FDA guidance [1], include:

    1. Policies and procedures to support FDA review of submissions that Include registry data (Study Sponsor).
    2. Conducting a feasibility analysis of the registry to guide protocol development and facilitate discussions with regulators (Sponsor).
    3. Policies and procedures to support the reliability of the registry data (Registry Owner).
    4. Policies and procedures for linking a registry to another registry or another data system (Registry Owner).
    5. Documentation of the process(es) used to validate the transfer of data (Registry Owner and Study Sponsor).
    6. Policies and procedures to support data management strategies (Registry Owner and Study Sponsor).
    7. Periodic assessment of data consistency, accuracy, and completeness (Registry Owner and Study Sponsor).

References

1. Draft FDA Guidance – Real-World Data: Assessing Registries to Support Regulatory Decision-Making for Drug and Biological Products Guidance for Industry (November 2021)

Link: https://www.fda.gov/regulatory-information/search-fda-guidance-documents/real-world-data-assessing-registries-support-regulatory-decision-making-drug-and-biological-products  

2. EMA – Guideline on Registry-Based Studies (October 2021)

Link: https://www.ema.europa.eu/en/guideline-registry-based-studies-0  

3. Draft FDA Guidance – Use of Electronic Records and Electronic Signatures in Clinical Investigations Under 21 CFR Part 11 — Questions and Answers (June 2017)

Link: https://www.fda.gov/regulatory-information/search-fda-guidance-documents/use-electronic-records-and-electronic-signatures-clinical-investigations-under-21-cfr-part-11 

4. FDA Guidance – Electronic Source Data in Clinical Investigations (September 2013)

Link: https://www.fda.gov/regulatory-information/search-fda-guidance-documents/electronic-source-data-clinical-investigations 

Useful Links

21 CFR 11 – Electronic Records; Electronic Signatures

Link: https://www.ecfr.gov/current/title-21/chapter-I/subchapter-A/part-11  

EUnetHTA – REQueST Tool and its vision paper (September 2019)

Link: https://www.eunethta.eu/request-tool-and-its-vision-paper/ 

RWR Insights | Quality Considerations when Using RWD from Registries to Support Regulatory Decisions – USA2022-08-07T16:41:11+00:00

RWR Insights | USA – Overview of the Current (draft) FDA Guidance and Considerations for Sponsors who are Intending to Use Non-Interventional Study Data to Support Regulatory Submissions to the FDA

RWR CONTEXT

We have created a consolidated version of these three (3) FDA Guidance documents to help provide an overview of the current (draft) FDA guidance and considerations for sponsors who are intending to use non-interventional study data to support regulatory submissions to the FDA.

There is a lot to digest and it should be remembered that these are still draft guidance documents that are subject to stakeholder feedback.  Even so, this does represent FDAs current thinking on these topics.

6 FEBRUARY 2022 – In 2021, the FDA published three (3) draft guidance documents that are intended to provide sponsors, researchers, and other interested stakeholders with considerations when proposing to use real world data (e.g., electronic health records and medical claims data) in clinical studies submitted to FDA in support of a regulatory decision regarding the effectiveness and safety of a drug (e.g., as part of a new drug application (NDA) or biologics license application (BLA)).

    1. Draft FDA Guidance – Considerations for the Use of Real-World Data and Real- World Evidence to Support Regulatory Decision-Making for Drug and Biological Products (8 December 2021) [Link] [1]
    2. Draft FDA Guidance Data Standards for Drug and Biological Product Submissions Containing Real-World Data (October 2021) [Link] [2]
    3. Draft FDA Guidance – Real-World Data: Assessing Electronic Health Records and Medical Claims Data to Support Regulatory Decision-Making for Drug and Biological Products (September 2021) [Link] [3]

The emphasis on the intended purpose of the clinical studies is important because it determines which legal standards are applicable to the study (see Figure 1).  There are additional regulatory requirements, recommendations and considerations for non-interventional studies that are designed with the intent of supporting an NDA or BLA. 

Figure 1 – Applicability of Code of Federal Regulations (CFRs) to Non-Interventional Studies Based on Whether Results are Intended to Support a New Drug Application (NDA)

 

We have created a consolidated version of these three (3) FDA Guidance documents to help provide an overview of the current (draft) FDA guidance and considerations for sponsors who are intending to use non-interventional study data to support regulatory submissions to the FDA [Link] [4].  

Definitions – Interventional Study versus Non-Interventional Study

Interventional study: An Interventional study (also referred to as a clinical trial) is a study in which participants, either healthy volunteers or volunteers with the disease being studied, are assigned to one or more interventions, according to a study protocol, to evaluate the effects of those interventions on subsequent health-related biomedical or behavioral outcomes. One example of an interventional study is a traditional randomized controlled trial, in which some participants are randomly assigned to receive a drug of interest (test article), whereas others receive an active comparator drug or placebo. Clinical trials with pragmatic elements (e.g., broad eligibility criteria, recruitment of participants in usual care settings) and single-arm trials are other types of interventional study designs.

Ref: Section II of the Draft FDA Guidance – Considerations for the Use of Real-World Data and Real- World Evidence to Support Regulatory Decision-Making for Drug and Biological Products (8 December 2021) [1]

Link: https://www.fda.gov/media/154714/download  

Non-Interventional Study: A non-interventional study (also referred to as an observational study) is a type of study in which patients received the marketed drug of interest during routine medical practice and are not assigned to an intervention according to a protocol. Examples of non-interventional study designs include:

(1) observational cohort studies, in which patients are identified as belonging to a study group according to the drug or drugs received or not received during routine medical practice, and subsequent biomedical or health outcomes are identified, and 

(2) case-control studies, in which patients are identified as belonging to a study group based on having or not having a health-related biomedical or behavioral outcome, and antecedent treatments received are identified.

Ref: Section II of the Draft FDA Guidance – Considerations for the Use of Real-World Data and Real- World Evidence to Support Regulatory Decision-Making for Drug and Biological Products (8 December 2021) [1]

Link: https://www.fda.gov/media/154714/download  

Applicability of 21 CFR Part 312 [Investigational New Drug Application] to Non-Interventional Studies

According to the recent FDA guidance, non-interventional studies are not clinical investigations as defined under § 312.3 and do not require an IND [ref 1].  This is a much appreciated clarification on the applicability of 21 CFR 312 to non-interventional studies!

Ref1: Section III.A of the Draft FDA Guidance – Considerations for the Use of Real-World Data and Real- World Evidence to Support Regulatory Decision-Making for Drug and Biological Products (8 December 2021) [1]

Link: https://www.fda.gov/media/154714/download  

Although many non-interventional studies involve only the analysis of data reflecting the use of a marketed drug in routine medical practice, certain non-interventional studies include ancillary protocol-specified activities or procedures (e.g., questionnaires, laboratory tests, imaging studies) that collect additional data to help address questions of interest in these studies. FDA does not consider these types of studies to be clinical investigations under part 312, and an IND is not required [ref 1].

Ref1: Section III.B.1 of the Draft FDA Guidance – Considerations for the Use of Real-World Data and Real- World Evidence to Support Regulatory Decision-Making for Drug and Biological Products (8 December 2021)

Link: https://www.fda.gov/media/154714/download  

Satisfying the Applicable Legal Standards

Regardless of a study’s interventional or non-interventional design, the evidence submitted by a sponsor in a marketing application to support the safety and/or effectiveness of a drug must satisfy the applicable legal standards for the application to be approved or licensed [ref 1].

Ref1: Section III.B.1 of the Draft FDA Guidance – Considerations for the Use of Real-World Data and Real- World Evidence to Support Regulatory Decision-Making for Drug and Biological Products (December 2021) [1]

Link: https://www.fda.gov/media/154714/download   

The three (3) draft FDA guidance documents lay out the recommendation and considerations when proposing to use real world data (e.g., electronic health records and medical claims data) in clinical studies submitted to FDA in support of a regulatory decision regarding the effectiveness and safety of a drug (e.g., as part of a new drug application (NDA) or biologics license application (BLA)) [1] [2] [3].  In particular, these include:

    • Early engagement with the FDA
    • Transparency regarding data collection and analysis
    • Posting study protocols and results on a publicly available database such as clinical trials.gov
    • Ensuring the reliability and relevance of the data 
    • Appropriateness of data sources
    • Previous experience with data sources
    • Missing data
    • Validation
    • Data Quality During Data Accrual, Curation, and Transformation into the Final Study-Specific Dataset
    • Ability to Submit Patient-Level RWD to FDA
    • Data Access Agreements
    • Documentation of Processes for Managing Real-World Data
    • Considerations for Conforming Real-World Data to Currently Supported FDA Study Data Standards
    • Considerations for Mapping Real-World Data to Study Data Submission Standards
    • Considerations for Data Transformations
    • Data Management Processes and Maintaining Data Integrity During Data Curation and Transformation
    • Study Monitoring 
    • Risk-Based Quality Management Approach to Study Oversight [Risk-Based Monitoring]
    • Safety Reporting
    • Compliance with 21 CFR 11
    • Sponsor Responsibilities – Design, Conduct, and Oversight of Non-Interventional Studies
    • Sponsor Responsibilities – Responsibilities Logs and Documented Roles and Responsibilities

There is a lot to digest and it should be remembered that these are still draft guidance documents that are subject to stakeholder feedback.  Even so, this does represent FDAs current thinking on these topics and provides a very comprehensive overview of what study sponsors need to consider and address when designing non-interventional studies with a view to generating real world evidence to support any aspects of a new drug application.

References

1. Draft FDA Guidance – Considerations for the Use of Real-World Data and Real- World Evidence to Support Regulatory Decision-Making for Drug and Biological Products (8 December 2021)

Link: https://www.fda.gov/media/154714/download 

2. Draft FDA Guidance Data Standards for Drug and Biological Product Submissions Containing Real-World Data (October 2021)

Link: https://www.fda.gov/media/153341/download 

3. Draft FDA Guidance – Real-World Data: Assessing Electronic Health Records and Medical Claims Data to Support Regulatory Decision-Making for Drug and Biological Products (September 2021)

Link: https://www.fda.gov/media/152503/download 

4. Consolidated FDA Guidance on Using RWD and RWE to Support Regulatory Submissions (February 2022)

Link: https://rwr-regs.com/mp-files/rwr-insights-consolidated-fda-guidance-on-using-rwd-and-rwe-to-support-regulatory-submissions.docx/ 

Useful Resources

FDA Webpage – Real World Evidence

Link: https://www.fda.gov/science-research/science-and-research-special-topics/real-world-evidence 

FDA Webpage – 21st Century Cures Act Deliverables

Link: https://www.fda.gov/regulatory-information/21st-century-cures-act/21st-century-cures-act-deliverables 

RWR Insights | USA – Overview of the Current (draft) FDA Guidance and Considerations for Sponsors who are Intending to Use Non-Interventional Study Data to Support Regulatory Submissions to the FDA2022-08-07T16:48:06+00:00

Insight | 2021 End of Year Summary

RWR CONTEXT

A tangible example of how real world evidence (RWE) can be used to support label extensions for existing drugs.

Note the FDA’s emphasis on:

“This approval reflects how a well-designed, non-interventional study relying on fit-for-purpose real-world data (RWD), when compared with a suitable control, can be considered adequate and well-controlled under FDA regulations”

Hopefully, we will see similar approvals in Europe and the rest of the World

12 January 2021 – At lot happened in the second half of 2021 with respect to new real world research guidelines and regulations.

Most notably in the second half of 2021, we’ve seen guidance published by regulators (EMA, FDA and MHRA) on their expectations when applicants use real world data (RWD) and real world evidence (RWE) to support regulatory decisions, such as marketing authorisation applications (MAAs and NDAs) and label extensions.

The various guidelines (see below) include expectations with regards to the design, conduct and oversight of non-interventional studies and cover elements such as data access contracts, data standards, data integrity, audit trails, 21 CFR 11 compliance, risk-based quality management, monitoring, safety reporting and posting on clinicaltrials.gov.

Significant updates in the second half of 2021, included:

    • New regulations and guidelines with direct applicability to real world research (Bulgaria, EU, Spain)
    • Changes to research ethics committee online application tools (France, New Zealand)
    • New research transparent requirements (UK)
    • National laws supplementing the EU Medical Devices Regulation (Denmark, Finland, Hungary)

Moderate updates in the second half of 2021, included:

    • New or revised national legislation or guidelines (Argentina, Canada, India, Norway, Poland, UK)
    • Updates to research Ethics committee/ institutional review board policies, procedures and guidelines (Bulgaria, Croatia, Latvia, UK)
    • Updated requirements for post-marketing surveillance studies (Australia)
    • New guidelines for registries and registry-based studies (EU, USA)
    • Guidance/draft guidance on the use of RWD and RWE to support regulatory decisions (UK, USA)
    • Informed consent (Latvia, Spain)
    • Revised NIS reporting requirements (UK)
    • Medical Devices (EU, Hungary, Lithuania, UK)
    • Digital Health Technology (USA)
    • Artificial Intelligence (USA)
    • Big Data (EU)

Minor updates in the second half of 2021, included:

    • New or revised legislation or guidelines (Brazil, Canada, EU, France, Norway, UK, USA)
    • General regulator updates (Australia, Finland, Germany, Hungary, USA)
    • Regulatory decisions based on RWE (USA)
    • Updates to research Ethics committee/ institutional review board policies, procedures and guidelines (Brazil, Bulgaria, Germany, Hong Kong, Hungary, Ireland, Lithuania, New Zealand, Norway)
    • Updates to pharmacoepidemiology guidelines (EU)
    • Data privacy and data access (Norway, UK)
    • Medical devices (EU, Switzerland, UK, USA)
    • ICMJE recommendations for publication of research results in journals (Global)
    • Revision 1 of ICH E8 (Global)

Full details of the real world research regulatory updates in the second half of 2021 can be found in our ‘H2 2021 Summary Report’.

Insight | 2021 End of Year Summary2022-08-07T16:55:34+00:00

Insights | Patient Centricity and the Patient Voice

RWR CONTEXT

The “patient voice” is recognised as an essential asset in the development of medicines that matter to patients.  

In the context of the design and conduct of NIS, the solution is to listen to the viewpoint of patients and caregivers’ by using patient advocacy groups, patient/carer surveys and inclusion of patients/ carers in protocol steering committees.

Patients and caregivers have a unique perspective of the disease and the needs of that patient group.

“Our industry has long spoken of “patient centricity” as a key to progress. But the concept has fallen short – largely due to well-meaning conversations about patients rather than with patients. It is a relatively recent phenomenon wherein true “patient voice” is recognised as an essential asset in the development of medicines that matter to patients.”

[Maryna Kolochavina – Rare and Orphan Disease Expert and Patient Advocate]

‘Patient Voice’ and ‘Listening to the Patient Voice’ are terms we hear quite often, but what does this mean? What is the ‘patient voice’?

Put simply, patient voice refers to the opinions and experiences of your patients and how these views inform the medical treatment they receive [1].

Why is the Patient Voice so Important to Non-Interventional Studies? 

Patient voice makes up at least 50% of patient engagement.  If patients don’t feel their voice is being heard they won’t feel engaged and satisfied with their healthcare. Poor engagement levels lead to worsened public health through [2]:

  • Non-adherence to recommended care
  • A greater likelihood of bad lifestyle decisions
  • A lack of knowledge regarding both treatment options and preventative measures

The solution, in the context of the design and conduct of NIS, is to listen to the viewpoint of patients and caregivers’ by [3]: 

  • Using patient advocacy groups
  • Using patient/caregiver surveys
  • Insertion of patients/caregivers into the protocol steering committees
  • Attendance at regulatory advisory committee 

Engaging Patients in Medicines Regulation 

The European Medicines Agency (EMA) and the US Food and Drug Administration (FDA) both consider that the voices of patients in medicines regulation are essential, as they bring the unique perspective of someone living with a disease, as a patient or carer [4].

Regulator and Regulatory Initiatives Include:

  1. EMA Patient’s and Consumer’s Working Party [5]: Provides a platform for exchange of information and discussion of issues of common interest between EMA and patients and consumers
  2. FDA Patient Representative Program [6]: Offers patients and caregivers the opportunity to provide critical advice to the agency as it regulates medical products
  3. Section 204 of the proposed 21st Century Cures 2.0 Act – Patient Experience Data [7]: Requires drug manufacturers/sponsors to collect and report on patient experience data as part of the clinical trial. Requires FDA to fully consider all patient experience data collected during the clinical trial 

Why is the Patient Voice so Important to Innovation, Drug Development and Real World Research?

Patients and caregivers have a unique perspective of the disease and the needs of that patient group that are vital to drug development [3].

The future of clinical research relies on our ability to listen and respond [to patients] – this is the sweet spot where innovation happens. It’s also a crucial part of creating remarkable patient experiences [1].

References

1. MD Group –Why We Need to Listen to the Patient Voice

Link: https://mdgroup.com/blog/why-we-need-to-listen-to-the-patient-voice/

2. Jayex – What Is Patient Voice and Why Does it Matter?

Link: https://www.jayex.com/en-au/blog/why-patient-voice-is-key-to-improving-patient-engagement 

3. Lee, D. 11 – Listening to the patients’ voice, Editor(s): Philippe Auby, In Woodhead Publishing Series in Biomedicine, Clinical Research in Paediatric Psychopharmacology, Woodhead Publishing, 2020, Pages 173-182, ISBN 9780081006160, 

Link: https://www.sciencedirect.com/science/article/pii/B9780081006160000113 

 4. Mavris M, Furia Helms A, Bere N. Engaging patients in medicines regulation: a tale of two agencies. Nat Rev Drug Discov. 2019 Nov;18(12):885-886. doi: 10.1038/d41573-019-00164-y. PMID: 31780842.

Link: https://media.nature.com/original/magazine-assets/d41573-019-00164-y/d41573-019-00164-y.pdf  

5. EMA Patient’s and Consumer’s Working Party

Link: https://www.ema.europa.eu/en/committees/working-parties-other-groups/chmp/patients-consumers-working-party 

6. FDA Patient Representative Program

Link: https://www.fda.gov/patients/learn-about-fda-patient-engagement/about-fda-patient-representative-program 

7. Section 204 of the 21st Century Cures 2.0 Act – Discussion Draft

Link: https://degette.house.gov/sites/degette.house.gov/files/Cures%202.0_DISCUSSION%20DRAFT.pdf 

Insights | Patient Centricity and the Patient Voice2022-08-07T17:00:50+00:00

Insights – Document Management and Archiving Requirements for Observational Studies

RWR CONTEXT

The TMF Reference Model’s specially designed Study Master File will not have an impact on the regulatory requirements for conducting real world research studies in the country of interest…but if used…it will make your real world research studies much easier to manage and less resource intensive (and less frustrating!).

5 NOVEMBER 2021 – Did you know that there is a DIA TMF Reference model for observational studies? 

  • [Lean Version] Real-World Studies Document Index Provides a proposed Document Index for use on real-world studies, based on the TMF Reference Model for clinical trials (v1.0 Approved 29-July-2020) [1]
  • [Detailed Version – with guidance notes] Study Master File [2]

For years, those of us who have been running observational studies (also known as non-interventional studies) have been the ‘poor relation’ with regards to document management tools and offerings.  We’ve had to ‘bootstrap’ existing clinical trial tools to fit the significantly different document requirements for observational studies.  This is why, in 2018 a group of frustrated experts got together with the blessing of the TMF Reference Model Steering Committee…and the rest, as they say…is history…

Why is a Stand Alone Study Master File Needed?

Those of you who are involved in Real World Studies (RWS) know that trying to file your documents using the existing TMF Reference Model (TMF RM) based on ICH E6 can be challenging.  Your study isn’t a clinical trial and as a result, at least 40% of the artifacts in the index are irrelevant.  The result?  You start from the beginning every time you set up a new study and  ‘switch off’ the tabs that aren’t applicable. Alternatively, you may be required to use the existing TMF RM in accordance with your organisation’s policy and disregard tabs that aren’t relevant. Additionally, you hope that an auditor of your ‘real world study TMF’ understands your study and doesn’t penalize you for missing documents (or documents that were never generated, because your study is not a clinical trial).

Real World Studies are increasingly being used to support drug development, product licensing, label claims and reimbursement. Consequently the need for an audit-ready framework has become a critical requirement to effectively collect and manage the documents that evidence integrity in relation to study conduct and study data.

Designing a Solution

To address this, a working group of RWS experts* convened in March 2018 to develop a framework for filing essential documents for non-interventional and observational studies. In designing the Real World Study-Document Index (RWS-DI), the group took into account the ethical standards, regulatory requirements, guidelines and industry best practices applicable to non-interventional studies (NIS). The group developed the RWS-DI based on a prospective study design to provide maximum coverage of the potential documents (or artifacts) across the range of real world study designs, from non-interventional studies, retrospective chart reviews, to prospective product registry studies.

The result is a listing of core and recommended artifacts relevant to Real World Studies (which are not clinical trials) while remaining  as consistent as possible with the TMF-RM format and structure. The RWS-DI adapted the TMF RM removing artifacts specific to clinical trials such as Investigational Product Dossier (IMPD) or Investigator’s Brochure (IB) and replaced terminology such as ‘trial’ with ‘study’ and ‘subject’ with ‘patient’.

The RWS-DI was sanctioned under the auspices of the DIA TMF Reference Model Steering Committee throughout its development. It was endorsed by the DIA TMF Reference Model Steering Committee as a ‘stand-alone’ deliverable for launch to the wider research community. It is anticipated that, as the RWS-DI becomes widely adopted, it will evolve to reflect user community requirements. Feedback, enquiries, and suggestions for enhancements for incorporation in future versions can be made using the e-mail address stuart.mccully@phoenix-rwr.co.uk.

The Real World Studies Working Group comprised of the following members, all of whom work within the Real-World Study environment and contributed their expertise throughout the duration of the project.

Shelley Brigstock Study Project Manager, Novo Nordisk

Kath Firth Head of Quality Operations, GSK

Tara Isherwood               Senior Director, Regulatory Advice and Delivery, Syneos Health

Russell Joyce Director and Principal Consultant, Heath Barrowcliff Consulting

Jeff Kirsch* Senior Director, Quality & Risk Management and Governance, GSK

Stuart McCully               Founder, Phoenix RWR

Linda Rudolph               Principal Consultant, Quality Werx, LLC

____________________________________________________

*Currently-Director and Founder, Jeff Kirsch Consulting, Ltd

Want to Learn More?

Speak to the Master Architect – Russell Joyce.  Russell is one of the founders of the TMF Reference Model and the chair of the Study Master File working group (Real World Study Document Index)

Email: russell@heathbarrowcliffconsulting.co.uk 

Web: https://heath-barrowcliff-consulting.co.uk/  

LinkedIn: https://www.linkedin.com/in/russell-joyce-18524918/  

References

1. Real-World Studies Document Index Provides a proposed Document Index for use on real-world studies, based on the TMF Reference Model for clinical trials (v1.0 Approved 29-July-2020)

Link: https://tmfrefmodel.com/wp-content/uploads/TMF-RM-Deliverable-Real-World-Studies-Document-Index-v1-2020-07-29.xlsx 

2. Study Master File

Link: https://studymasterfile.com/rws-di-2/ 

Insights – Document Management and Archiving Requirements for Observational Studies2022-08-07T17:06:27+00:00

Insights | Bulgaria – ‘How To’ Guide for Non-Interventional Studies

RWR CONTEXT

Summary of the requirements for conducting prospective non-interventional studies (NIS) in Bulgaria. Includes the updates implemented by the recent NIS Ordinance (Ordinance № 8 of March 31, 2021).

June 2021 – Our three (3) step ‘How To’ guide for conducting prospective voluntary NIS in Bulgaria:

  1. Study Classification – Clinical Trial or Non-Interventional Study?
  2. Submission Requirements – Approvals, Notifications and Registration
  3. Submission Documents – Initial Application and Substantial Amendments

Definition: A non-interventional study shall be conducted with medicinal products authorised for use in the Republic of Bulgaria where these are studied in order to obtain additional information about the product prescribed in the usual manner in compliance with the conditions determined in the marketing authorisation. No additional diagnostic or monitoring procedures, different from the usual practices shall be applied to the patients in non-interventional studies, and epidemiological methods should be used for the analysis of the collected data (as per Article 145(1) of the Medicinal Products in Human Medicine Act)[1].

Regulatory Consideration 1: Study Classification – Is your study a non-interventional study or a clinical trial?

Use the following simple decision tree to determine whether your proposed clinical study is a clinical trial or a non-interventional study

Regulatory Consideration 2: Approvals, Notifications and Registration

Bulgaria is one of the few European countries where the competent authority for medicinal products (Bulgarian Drug Agency)[2] must approve non-interventional studies (see below).

Approvals:

  1. Bulgarian Drug Agency (BDA)[2]
  2. Ethical Commission for Clinical Trials (ECKI)[3]

Notifications: Not Applicable

Registration: EU PAS Register (Optional)

Fee: BGN 400

Regulatory Consideration 3: Submission Documents

Initial Application[4]:

1. Administrative documentation
. Administrative documentation
– Application form^
– Cover letter
– List of the regulatory bodies to which an application has been submitted and their decision
– List of all planned centers, principal investigators and research teams for the territory of the Republic of Bulgaria
– Copy of the recommendations of the Scientific Committee of the European Medicines Agency for consultation on trial planning (if applicable)
– Assignment letter or contract for authorization of the person who submits the application on behalf of the sponsor, when the applicant is not the sponsor
– Document for current registration, issued by a competent authority, to the contracting authority and the applicant on the territory of the European Union
– Declaration that the documentation submitted to the BDA and the Ethics Commission contains the same information.
2. Information for Participant:
– Information about the patient / participant and a form of informed consent – original and in Bulgarian
– Description of the procedures for recruiting patients / participants
– Description of the procedures for obtaining informed consent from a legal representative, where foreseen
– Ethical justification in case of recruitment of participants who are not able to give informed consent
– Any other information that will be used to recruit participants and / or provide to a participant before or during the non-interventional study.

3. The protocol documentation:
– Protocol of the study with all current changes
– Summary of the protocol in Bulgarian
– Assessment of the scientific value of the study by a specialist in the relevant field, when available
– Ethical evaluation of the protocol by the principal or coordinating researcher, when it is not part of the protocol
– A page of the protocol, signed by the sponsor and the principal investigator for each of the proposed centers
4. Documentation for the Medicinal Product:
– Current brief description of the product (SmPC)
5. The Documentation for the Technical Requirements and the Personnel:
– Description of the necessary equipment and / or technical requirements for implementation of the protocol
– Documents certifying the available technical possibilities for implementation of the protocol
– Permit for carrying out medical activity under Art. 47, para. 1 of the PPA / registration certificate under Art. 40, para. 1 of the Health Insurance Act for the medical institution – center of the non-interventional research.
6. Financing and Administrative Organization of the Study:
– Insurance
– Contract between the sponsor and the medical institution
– Contract between the sponsor and the researcher
– Data on the source of funding of the study, when the contracting authority is a non-profit legal entity
– Documentation that the fee has been paid = 400 BGN

Substantial Amendments[5][*]:

1. Application form^^
2. Cover letter
3. Summary of the planned change
4. List of the updated documents
5. The updated documentation reflecting the changes
6. Pages from the documentation with marked changes, comparing the current and the new texts
7. Justification of the changes
8. Documentation that the fee has been paid = 120 BGN
9. A copy of the positive opinion of the ethics committee, when it becomes available.

* Both the BDA and ECKI need to approve any substantial amendments: https://iisda.government.bg/adm_services/services/service_provision/6858
^ NIS Application Form: https://iisda.government.bg/adm_services/service_sample_file/6844_76240
^^ NIS Substantial Amendment Application Form: https://iisda.government.bg/adm_services/service_sample_file/6858_76336

References

1. Article 145(1) of the Medicinal Products in Human Medicine Act (ZLPHM)
Link: https://www.bda.bg/images/stories/documents/legal_acts/20210208_ZLPHM_English.pdf

2. Bulgarian Drug Agency (BDA)
Link: https://www.bda.bg/bg/

3. Ethical Commission for Clinical Trials (ECKI)
Link: https://www.bda.bg/bg/%d0%b7%d0%b0-%d0%b8%d0%b0%d0%bb/%d0%b4%d1%80%d1%83%d0%b3%d0%b8-%d0%ba%d0%be%d0%bc%d0%b8%d1%81%d0%b8%d0%b8/67-cemi

4. BDA/ECKI – Approval of a Non-Interventional Study of a Medicinal Product
Link: https://iisda.government.bg/adm_services/services/service_provision/6844

5. BDA – Issuance of Approval for a Significant Change in a Non-Interventional Study
Link: https://iisda.government.bg/adm_services/services/service_provision/6858

Useful Resources:

ECKI – Issuance of an Opinion by the Ethics Committee for Clinical Trials for Making a Significant Change in a Clinical Trial or Non-Interventional Study
Link: https://iisda.government.bg/adm_services/services/service_provision/92971

NIS Ordinance – Ordinance № 8 of March 31, 2021 on the terms and conditions for conducting non-interventional studies of medicinal products on the territory of the Republic of Bulgaria
Link [Bulgarian]: https://www.bda.bg/images/stories/documents/regulations/naredbi/20210415/%D0%9D%D0%90%D0%A0%D0%95%D0%94%D0%91%D0%90%20%E2%84%96%208%20%D0%9E%D0%A2%2031%20%D0%9C%D0%90%D0%A0%D0%A2%202021%20%D0%93..pdf
Link [English]: https://nis-regs.com/wp-content/uploads/2021/06/NIS-Ordinance-2021.pdf

Medicinal Products in Human Medicine Act (ZLPHM)
Link: https://www.bda.bg/images/stories/documents/legal_acts/20210208_ZLPHM_English.pdf
Note1: Articles 81 to 144 = Clinical Trials
Note2: Article 145 = Non-interventional Studies.
Note3: Articles 183 to 194 = Pharmacovigilance

Guideline on good pharmacovigilance practices (GVP) – Module VIII Addendum I – Requirements and recommendations for the submission of information on non-interventional post-authorisation safety studies (Rev 3) (EMA/395730/2012 Rev 3; 15 June 2020)
Link: https://www.ema.europa.eu/en/documents/scientific-guideline/guideline-good-pharmacovigilance-practices-gvp-module-viii-addendum-i-requirements-recommendations_en-1.pdf

Insights | Bulgaria – ‘How To’ Guide for Non-Interventional Studies2022-08-07T17:27:58+00:00

Insights | Real World Research in Mental Health

RWR CONTEXT

RWR, when done properly, is a low-cost / high-quality alternative to traditional research.  Improving mental health across the board needs to focus not just on pharmaceutical interventions.  Strengthening the implementation of research evidence and good practice into a range of settings where people seek support is equally important.

June 2021 – Mental health disorders remain the highest unmet medical need, surpassing cancer.  One in four of us is affected by mental illness.  That’s a friend, a partner, a child or maybe even you.  Fortunately, health crises this prevalent attract large budgets and significant awareness campaigns.

Usually

In 2019, $3.7 billion was spent around the world researching mental health, which sounds big, but that is only 4% of total global health research.  It’s too little, unchanging over time, and disproportionate to the burden of suffering attributable to mental health disorders globally.

It is also too inequitable, with less than 10% of funding being spent in countries that have 90% of global health problems. And more importantly it is too skewed, with more than 50% devoted to biological and aetiological research, and about 7% allocated to health services research, clinical research, and prevention[1].  We continue to chase a pharmaceutical solution to a human problem, with little sign of the kind of success seen in virtually any other disease.

And then came COVID-19.  We now have a pandemic within a pandemic.  Everywhere you look there is evidence of the massive impact on mental health that lockdowns, loss of loved ones, loss of jobs or just being on the front line of healthcare has had.  In 2019, 8% of the US population thought mental health was the most important health issue, 13% thought it was cancer.  In 2020 that flipped on its head – 13% now say it’s mental health and 9% say it’s cancer[2].
So, being realistic, mental health will never get the kind of funding that it deserves, so how can we make the most of what funding is available?

Researchers and scientists are expanding current approved therapeutics in new indications as well as looking at non-traditional technologies to help patients dealing with mental health issues and they are increasingly doing this by turning to real-world research (RWR) data. There is a significant opportunity to generate insights from real-world data on mental health disorders to get a much better understanding of the issues facing individuals on a day-to-day level and then to develop novel, scalable solutions to address this increasing burden.

RWR, when done properly, is a low-cost / high-quality alternative to traditional research.  Improving mental health across the board needs to focus not just on pharmaceutical interventions.  Strengthening the implementation of research evidence and good practice into a range of settings where people seek support is equally important.

A key part of enabling this will be to support mental health delivery staff to be research literate, encourage RWR at the front line and then making research findings accessible and relevant for local implementation.  Unfortunately, within the clinical research world the experience and expertise required to deliver high quality real-world research lags behind randomised clinical trials in the same way mental health is the poor cousin to oncology.  Developing systems and processes to ensure that money spent on RWR data in mental health carries the same reliability as randomised controlled trials (RCTs) will be equally important.

Although RCTs remain crucial for coverage and reimbursement decisions by payers, RWR can be employed to assess clinically meaningful endpoints, gauge the impact of interventions on the quality of healthcare, and help payers make appropriate data-driven decisions.

The future for mental health research may well be Real.

References:

1. Vikram Patel. Mental Health Research Funding: Too little, too inequitable, too skewed
Lancet, Volume 8, Issue 3, P171-172, March 01, 2021
Link: https://www.thelancet.com/journals/lancet/article/PIIS2215-0366(20)30471-5/fulltext

2. America Speaks – Survey data reflecting the views of Americans on medical, health, and scientific research. Poll Data Summary, Volume 20.
Link: https://www.researchamerica.org/sites/default/files/PollDataSummary_vol20.pdf

Insights | Real World Research in Mental Health2022-08-07T17:28:48+00:00
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