Skip to main content

Research Repository

Advanced Search

Disclosure control of machine learning models from trusted research environments (TRE): New challenges and opportunities

Mansouri-Benssassi, Esma; Rogers, Simon; Reel, Smarti; Malone, Maeve; Smith, Jim; Ritchie, Felix; Jefferson, Emily

Disclosure control of machine learning models from trusted research environments (TRE): New challenges and opportunities Thumbnail


Authors

Esma Mansouri-Benssassi

Simon Rogers

Smarti Reel

Maeve Malone

Profile image of Jim Smith

Jim Smith James.Smith@uwe.ac.uk
Professor in Interactive Artificial Intelligence

Emily Jefferson



Abstract

Introduction: Artificial intelligence (AI) applications in healthcare and medicine have increased in recent years. To enable access to personal data, Trusted Research Environments (TREs) (otherwise known as Safe Havens) provide safe and secure environments in which researchers can access sensitive personal data and develop AI (in particular machine learning (ML)) models. However, currently few TREs support the training of ML models in part due to a gap in the practical decision-making guidance for TREs in handling model disclosure. Specifically, the training of ML models creates a need to disclose new types of outputs from TREs. Although TREs have clear policies for the disclosure of statistical outputs, the extent to which trained models can leak personal training data once released is not well understood. Background: We review, for a general audience, different types of ML models and their applicability within healthcare. We explain the outputs from training a ML model and how trained ML models can be vulnerable to external attacks to discover personal data encoded within the model. Risks: We present the challenges for disclosure control of trained ML models in the context of training and exporting models from TREs. We provide insights and analyse methods that could be introduced within TREs to mitigate the risk of privacy breaches when disclosing trained models. Discussion: Although specific guidelines and policies exist for statistical disclosure controls in TREs, they do not satisfactorily address these new types of output requests; i.e., trained ML models. There is significant potential for new interdisciplinary research opportunities in developing and adapting policies and tools for safely disclosing ML outputs from TREs.

Journal Article Type Review
Acceptance Date Mar 28, 2023
Online Publication Date Apr 3, 2023
Publication Date Apr 1, 2023
Deposit Date May 24, 2023
Publicly Available Date May 24, 2023
Journal Heliyon
Electronic ISSN 2405-8440
Publisher Elsevier
Peer Reviewed Peer Reviewed
Volume 9
Issue 4
Article Number e15143
DOI https://doi.org/10.1016/j.heliyon.2023.e15143
Keywords Trusted research environment; Safe haven; AI Machine learning; Data privacy; Disclosure control
Public URL https://uwe-repository.worktribe.com/output/10612970
Publisher URL https://www.sciencedirect.com/science/article/pii/S2405844023023502?via%3Dihub

Files







You might also like



Downloadable Citations