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面向醫療健康領域的聯邦學習綜述:應用、挑戰及未來發展方向

Survey of federated learning in healthcare: Applications, challenges, and future directions

  • 摘要: 本文綜述了聯邦學習(Federated learning, FL)在醫療健康領域的應用現狀和面臨的挑戰. FL作為一種去中心化的機器學習范式,能夠在不共享原始數據的前提下實現多方協作建模,特別適用于對隱私和安全性要求極高的醫療健康數據處理. 首先介紹了FL的定義和訓練過程,重點探討了其在醫療健康領域的主要應用,包括基于分類任務(如疾病診斷)、分割任務(如醫學影像分割)以及其他任務(如電子健康記錄分析)中的具體實踐. 還深入分析了FL在醫療健康領域應用中面臨的關鍵挑戰:第一,數據異質性問題,不同醫療機構的數據分布差異顯著,導致模型性能不穩定;第二,隱私保護問題,如何在訓練和聚合過程中保障數據和模型的安全;第三,通信成本問題,特別是在大規模數據和多客戶端場景下,通信開銷較高. 針對上述挑戰,本文提出了未來發展方向,包括個性化醫療與精準醫療的算法優化、疾病預測與早期干預的深度學習模型創新,以及醫療數據安全與隱私保護的強化. 總結了FL在醫療健康領域的潛在價值與關鍵問題,為未來相關技術的研究與應用提供重要參考.

     

    Abstract: This paper provides an extensive review of federated learning (FL) applications and challenges in the healthcare domain, with emphasis on its transformative role in enabling collaborative learning while addressing critical privacy and security concerns. FL, as a decentralized machine-learning paradigm, allows multiple clients, such as hospitals or medical institutions, to collaboratively train models without sharing raw data. This renders FL particularly suitable for the healthcare sector, where sensitive patient information is governed by stringent privacy regulations and ethical considerations. This paper first introduces the fundamental concepts of FL, including its definition, architecture, and training process. How FL differs from conventional centralized learning by maintaining data localization while enabling a global model to benefit from diverse datasets is explained. This characteristic is particularly valuable in healthcare, where data are typically siloed across institutions and regions owing to legal and operational constraints. The applications of FL in healthcare are categorized into three primary areas: classification tasks, segmentation tasks, and other specialized use cases. In classification tasks, FL has been employed for disease-diagnosis models, such as for predicting diabetes risk, detecting Alzheimer’s disease, and identifying cancers. These applications demonstrate FL’s ability in leveraging distributed data for improving diagnostic accuracy. For segmentation tasks, FL is applied in medical-image analysis, including tumor-boundary delineation in MRI scans and lung-nodule detection in CT scans. Additionally, FL enables the integration and analysis of electronic health records (EHRs) across institutions, thus enhancing data utility while ensuring compliance with privacy standards. However, the deployment of FL in healthcare presents some challenges. One major issue is data heterogeneity, where variations in data distributions across institutions can adversely affect model performance and convergence. Privacy and security concerns remain significant, as FL must ensure the confidentiality of local data and the security of model updates during training and aggregation processes. Another critical challenge is the high communication cost, particularly in scenarios involving large-scale, multi-institutional collaborations. Frequent communication between clients and the central server or aggregators can introduce latency and increase resource demands. Hence, this study aims to identify innovative solutions and propose future research directions. Techniques such as personalized FL algorithms and transfer-learning approaches are proposed to address data heterogeneity. Privacy-preserving mechanisms, including differential privacy, secure multiparty computation, and homomorphic encryption, are highlighted to ensure robust data protection. Communication efficiency can be improved using advanced aggregation methods such as hierarchical FL and compression techniques. These innovations are expected to reduce communication overhead and enhance scalability in practical implementations. Results from existing studies indicate the effectiveness of FL in improving healthcare outcomes. For example, FL resulted in highly accurate multisite breast-cancer classification, improved disease-prediction models, and enabled the secure integration of EHR data. These advancements showcase FL’s potential in revolutionizing medical research and practice by fostering cross-institutional collaboration while maintaining patient confidentiality. In conclusion, this review emphasizes FL’s pivotal role in addressing critical challenges in healthcare data analysis and collaborative modeling. By leveraging its unique features and addressing its limitations, FL is well-positioned to propel significant advancements in disease diagnosis, personalized treatments, and large-scale medical research. This study serves as a foundation for future studies and advocates for continued innovation to satisfy the evolving demands of the healthcare industry.

     

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