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"Data makes the story come to life:" understanding the ethical and legal implications of Big Data research involving ethnic minority healthcare workers in the United Kingdom-a qualitative study

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posted on 2023-02-03, 10:04 authored by Edward Dove, Ruby Reed-Berendt, Manish Pareek, UKREACH Study Collaborative Grp UK REACH Study Collaborative Grp
The aim of UK-REACH (“The United Kingdom Research study into Ethnicity And COVID-19 outcomes in Healthcare workers”) is to understand if, how, and why healthcare workers (HCWs) in the United Kingdom (UK) from ethnic minority groups are at increased risk of poor outcomes from COVID-19. In this article, we present findings from the ethical and legal stream of the study, which undertook qualitative research seeking to understand and address legal, ethical, and social acceptability issues around data protection, privacy, and information governance associated with the linkage of HCWs’ registration data and healthcare data. We interviewed 22 key opinion leaders in healthcare and health research from across the UK in two-to-one semi-structured interviews. Transcripts were coded using qualitative thematic analysis. Participants told us that a significant aspect of Big Data research in public health is varying drivers of mistrust—of the research itself, research staff and funders, and broader concerns of mistrust within participant communities, particularly in the context of COVID-19 and those situated in more marginalised community settings. However, despite the challenges, participants also identified ways in which legally compliant and ethically informed approaches to research can be crafted to mitigate or overcome mistrust and establish greater confidence in Big Data public health research. Overall, our research indicates that a “Big Data Ethics by Design” approach to research in this area can help assure (1) that meaningful community and participant engagement is taking place and that extant challenges are addressed, and (2) that any new challenges or hitherto unknown unknowns can be rapidly and properly considered to ensure potential (but material) harms are identified and minimised where necessary. Our findings indicate such an approach, in turn, will help drive better scientific breakthroughs that translate into medical innovations and effective public health interventions, which benefit the publics studied, including those who are often marginalised in research.

Funding

This study is supported by a grant (MR/V027549/1) to the University of Leicester from the Medical Research Council (MRC)-UK Research and Innovation (UKRI), and National Institute for Health Research (NIHR) rapid response panel to tackle COVID-19, and by core funding provided by NIHR Leicester Biomedical Research Centre, a partnership between the University of Leicester and University Hospitals of Leicester NHS Trust. This work is carried out with the support of BREATHE—The Health Data Research Hub for Respiratory Health [MC_PC_19004] funded through the UK Research and Innovation Industrial Strategy Challenge Fund and delivered through Health Data Research UK. MP is funded by a NIHR Development and Skills Enhancement Award.

History

Citation

Dove, E.S., Reed-Berendt, R., Pareek, M. et al. “Data makes the story come to life:” understanding the ethical and legal implications of Big Data research involving ethnic minority healthcare workers in the United Kingdom—a qualitative study. BMC Med Ethics 23, 136 (2022). https://doi.org/10.1186/s12910-022-00875-9

Author affiliation

Department of Respiratory Sciences

Version

  • VoR (Version of Record)

Published in

BMC MEDICAL ETHICS

Volume

23

Pagination

136

Publisher

BMC

issn

1472-6939

eissn

1472-6939

Acceptance date

2022-12-12

Copyright date

2022

Available date

2023-02-03

Spatial coverage

England

Language

English

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