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Privacy-by-Design Environments for Large-Scale Health Research and Federated Learning from Data

Peng Zhang, Maged N. Kamel Boulos

2022International Journal of Environmental Research and Public Health23 citationsDOIOpen Access PDF

Abstract

This article offers a brief overview of 'privacy-by-design (or data-protection-by-design) research environments', namely Trusted Research Environments (TREs, most commonly used in the United Kingdom) and Personal Health Trains (PHTs, most commonly used in mainland Europe). These secure environments are designed to enable the safe analysis of multiple, linked (and often big) data sources, including sensitive personal data and data owned by, and distributed across, different institutions. They take data protection and privacy requirements into account from the very start (conception phase, during system design) rather than as an afterthought or 'patch' implemented at a later stage on top of an existing environment. TREs and PHTs are becoming increasingly important for conducting large-scale privacy-preserving health research and for enabling federated learning and discoveries from big healthcare datasets. The paper also presents select examples of successful TRE and PHT implementations and of large-scale studies that used them.

Topics & Concepts

Health dataScale (ratio)Computer scienceFederated learningInternet privacyInformation privacyData scienceEnvironmental healthComputer securityHealth careMedicineGeographyArtificial intelligencePolitical scienceLawCartographyPrivacy-Preserving Technologies in DataArtificial Intelligence in Healthcare and EducationEthics and Social Impacts of AI
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