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Towards fairness-aware and privacy-preserving enhanced collaborative learning for healthcare

Medicine and Health

Towards fairness-aware and privacy-preserving enhanced collaborative learning for healthcare

F. Zhang, D. Zhai, et al.

Federated Learning can harness distributed patient data while preserving privacy, but disparities in computing resources risk unequal AI outcomes. We introduce a resource-adaptive collaborative learning framework that dynamically matches varying institutional capacities to improve model accuracy and fairness. This research was conducted by Feilong Zhang, Deming Zhai, Guo Bai, Junjun Jiang, Qixiang Ye, Xiangyang Ji, and Xianming Liu.

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Abstract
The widespread integration of AI algorithms in healthcare has sparked ethical concerns, particularly regarding privacy and fairness. Federated Learning (FL) offers a promising solution to learn from a broad spectrum of patient data without directly accessing individual records, enhancing privacy while facilitating knowledge sharing across distributed data sources. However, healthcare institutions face significant variations in access to crucial computing resources, with resource budgets often linked to demographic and socio-economic factors, exacerbating unfairness in participation. While heterogeneous federated learning methods allow institutions with varying computational capacities to collaborate, they fail to address the performance gap between resource-limited and resource-rich institutions. As a result, resource-limited institutions may receive suboptimal models, further reinforcing disparities in AI-driven healthcare outcomes. Here, we propose a resource-adaptive framework for collaborative learning that dynamically adjusts to varying computational capacities, ensuring fair participation. Our approach enhances model accuracy, safeguards patient privacy, and promotes equitable access to trustworthy and efficient AI-driven healthcare solutions.
Publisher
Nature Communications
Published On
Mar 23, 2025
Authors
Feilong Zhang, Deming Zhai, Guo Bai, Junjun Jiang, Qixiang Ye, Xiangyang Ji, Xianming Liu
Tags
Federated Learning
Resource-adaptive framework
Fairness in healthcare AI
Privacy-preserving learning
Heterogeneous computing
Model accuracy equity
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