计算机科学
联合学习
机器学习
方案(数学)
健康档案
图形
人工智能
原始数据
独立同分布随机变量
珍珠
数据共享
数据挖掘
医疗保健
理论计算机科学
医学
数学分析
哲学
统计
替代医学
数学
神学
病理
随机变量
经济
程序设计语言
经济增长
作者
Tao Tang,Zhuoyang Han,Zhen Cai,Shuo Yu,Xiaokang Zhou,Taiwo Oseni,Sajal K. Das
标识
DOI:10.1109/tnnls.2024.3370297
摘要
Understanding the latent disease patterns embedded in electronic health records (EHRs) is crucial for making precise and proactive healthcare decisions. Federated graph learning-based methods are commonly employed to extract complex disease patterns from the distributed EHRs without sharing the client-side raw data. However, the intrinsic characteristics of the distributed EHRs are typically non-independent and identically distributed (Non-IID), significantly bringing challenges related to data imbalance and leading to a notable decrease in the effectiveness of making healthcare decisions derived from the global model. To address these challenges, we introduce a novel personalized federated learning framework named PEARL, which is designed for disease prediction on Non-IID EHRs. Specifically, PEARL incorporates disease diagnostic code attention and admission record attention to extract patient embeddings from all EHRs. Then, PEARL integrates self-supervised learning into a federated learning framework to train a global model for hierarchical disease prediction. To improve the performance of the client model, we further introduce a fine-tuning scheme to personalize the global model using local EHRs. During the global model updating process, a differential privacy (DP) scheme is implemented, providing a high-level privacy guarantee. Extensive experiments conducted on the real-world MIMIC-III dataset validate the effectiveness of PEARL, demonstrating competitive results when compared with baselines.
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