Kristin M Kostick-Quenet, Marcelo Corrales Compagnucci, Mateo Aboy, Timo Minssen
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Patient-centric federated learning: automating meaningful consent to health data sharing with smart contracts.
Federated Learning (FL) promises to enhance data-driven health research by enabling collaborative machine learning across distributed datasets without direct data exchange. However, current FL implementations primarily reflect the data-sharing interests of institutional controllers rather than those of individual patients whose data are at stake. Existing consent mechanisms-like broad consent under HIPAA or explicit consent under the GDPR-fail to provide patients with control over how their data is used. This article explores the integration of smart contracts (SCs) into FL as a mechanism for automating, enforcing, and documenting consent in data transactions. SCs, encoded in decentralized ledger technologies, can ensure that FL processes align with patient preferences by providing an immutable, and dynamically updatable consent architecture. Integrating SCs into FL and swarm learning (SL) frameworks can mitigate ethico-legal concerns related to patient autonomy, data re-identification, and data use. This approach addresses persistent principle-agent asymmetries in biomedical data sharing by ensuring that patients, rather than data controllers alone, can specify the terms of access to insights derived from their health data. We discuss the implications of this model for regulatory compliance, data governance, and patient engagement, emphasizing its potential to foster public trust in health data ecosystems.
期刊介绍:
The Journal of Law and the Biosciences (JLB) is the first fully Open Access peer-reviewed legal journal focused on the advances at the intersection of law and the biosciences. A co-venture between Duke University, Harvard University Law School, and Stanford University, and published by Oxford University Press, this open access, online, and interdisciplinary academic journal publishes cutting-edge scholarship in this important new field. The Journal contains original and response articles, essays, and commentaries on a wide range of topics, including bioethics, neuroethics, genetics, reproductive technologies, stem cells, enhancement, patent law, and food and drug regulation. JLB is published as one volume with three issues per year with new articles posted online on an ongoing basis.