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arXiv 提交日期: 2026-02-17
📄 Abstract - Hybrid Federated and Split Learning for Privacy Preserving Clinical Prediction and Treatment Optimization

Collaborative clinical decision support is often constrained by governance and privacy rules that prevent pooling patient-level records across institutions. We present a hybrid privacy-preserving framework that combines Federated Learning (FL) and Split Learning (SL) to support decision-oriented healthcare modeling without raw-data sharing. The approach keeps feature-extraction trunks on clients while hosting prediction heads on a coordinating server, enabling shared representation learning and exposing an explicit collaboration boundary where privacy controls can be applied. Rather than assuming distributed training is inherently private, we audit leakage empirically using membership inference on cut-layer representations and study lightweight defenses based on activation clipping and additive Gaussian noise. We evaluate across three public clinical datasets under non-IID client partitions using a unified pipeline and assess performance jointly along four deployment-relevant axes: factual predictive utility, uplift-based ranking under capacity constraints, audited privacy leakage, and communication overhead. Results show that hybrid FL-SL variants achieve competitive predictive performance and decision-facing prioritization behavior relative to standalone FL or SL, while providing a tunable privacy-utility trade-off that can reduce audited leakage without requiring raw-data sharing. Overall, the work positions hybrid FL-SL as a practical design space for privacy-preserving healthcare decision support where utility, leakage risk, and deployment cost must be balanced explicitly.

顶级标签: medical machine learning systems
详细标签: federated learning split learning privacy preservation clinical decision support membership inference attack 或 搜索:

用于隐私保护临床预测与治疗优化的混合联邦与分割学习框架 / Hybrid Federated and Split Learning for Privacy Preserving Clinical Prediction and Treatment Optimization


1️⃣ 一句话总结

这篇论文提出了一种结合联邦学习和分割学习的混合框架,让多家医院能在不共享原始患者数据的情况下,共同训练一个用于临床预测和优化治疗的AI模型,并通过实验证明该框架能在保证预测效果的同时,灵活地平衡隐私保护与通信成本。

源自 arXiv: 2602.15304