Routinely-collected healthcare data has the potential to improve the lives and wellbeing of patients across the world, through better understanding of disease, and research on existing and new treatments.
Presented today at ESC Congress and simultaneously published in The BMJ, Lancet Digital Health and European Heart Journal, an international team propose a framework to improve the integrity and quality of studies using healthcare data, and boost confidence in using the results for clinical decision support.
The approach was compiled by a wide range of global stakeholders, including researchers from HDR UK Midlands, and Spiros Denaxas and Angela Wood – both Associate Directors of the BHF Data Science Centre. Coordinated by the BigData@Heart consortium and the European Society of Cardiology, the group also included patients and patient advocacy groups, regulators, government agencies and leading medical journals, plus representatives from professional societies, academic institutions, the pharmaceutical industry and payers. Participants convened to review opportunities and challenges, and develop pragmatic advice on how healthcare data can be applied to research across the spectrum of disease.
“Health data science has undergone rapid development in recent years, including the common adoption of electronic healthcare record systems. However, concerns over quality, data privacy, transparency and comparability have limited the use of evidence generated using structured healthcare data. These issues have also restricted acceptance by regulators, reimbursement authorities and guideline task forces,” states the paper.
Author Professor Dipak Kotecha of the University of Birmingham, University Hospitals Birmingham NHS Foundation Trust and HDR UK Midlands, UK said: “With the support of patients and the public, routinely collected healthcare information provides an exciting opportunity to answer important clinical questions in populations representative of our communities. Our ability to apply findings from studies that use these data sources is critically dependent on transparency at every stage. This international framework will enable robust and effective use of healthcare data for clinical research and provide those working in this field with guidance on how to design better studies for maximal benefit to patient care.”
The CODE-EHR framework was iteratively developed to provide researchers with step-by-step guidance on how to achieve appropriate governance and transparency, and for stakeholders to have confidence in the reported findings. Minimum standards are outlined for five key areas, with preferred standards providing the direction for future research:
- Dataset construction and linkage; clarifying the source, completeness and linkage of any healthcare data used in the study.
- Data fit for purpose; providing detail on the coding systems used, any data manipulation, and assessment of data quality.
- Disease outcome and definitions; allowing other researchers to re-use and improve by clearly stating all codes and algorithms used, including those for patient identification, therapy, procedures, comorbidities and outcomes.
- Analysis; describing how outcome events were analysed to allow for validation and replication.
- Ethics and governance; communicating processes for consent, data privacy, and patient and public involvement.
Report author Professor Folkert Asselbergs of the University Medical Center Utrecht, the Netherlands and University College London, UK said: “The use of real-world data in large-scale registries and randomised trials is ushering in a new era of clinical evidence generation. The CODE-EHR framework addresses public concerns about data sharing and provides greater clarity on the use of real-world healthcare data for a broad range of stakeholders to improve clinical care.”
1Kotecha D, Asselbergs FW, et al. CODE-EHR best practice framework for the use of structured electronic healthcare records in clinical research. BMJ. 2022. https://doi.org/10.1136/bmj-2021-069048.
2Kotecha D, Asselbergs FW, et al. CODE-EHR best practice framework for the use of structured electronic healthcare records in clinical research. Lancet Digit Health. 2022.
3Kotecha D, Asselbergs FW, et al. CODE-EHR best practice framework for the use of structured electronic healthcare records in clinical research. Eur Heart J. 2022. DOI: https://doi.org/10.1093/eurheartj/ehac426.
Register by 18 October 2023
BHF Data Science Centre Webinar: October 2023
Register by 19 September 2023
BHF Data Science Centre September Webinar
20 September 2023