Federated Learning for Smart Healthcare: A Survey

Dinh C. Nguyen, Viet Quoc Pham, P. Pathirana, Ming Ding, A. Seneviratne, Zihuai Lin, O. Dobre, W. Hwang
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引用次数: 185

Abstract

Recent advances in communication technologies and the Internet-of-Medical-Things (IOMT) have transformed smart healthcare enabled by artificial intelligence (AI). Traditionally, AI techniques require centralized data collection and processing that may be infeasible in realistic healthcare scenarios due to the high scalability of modern healthcare networks and growing data privacy concerns. Federated Learning (FL), as an emerging distributed collaborative AI paradigm, is particularly attractive for smart healthcare, by coordinating multiple clients (e.g., hospitals) to perform AI training without sharing raw data. Accordingly, we provide a comprehensive survey on the use of FL in smart healthcare. First, we present the recent advances in FL, the motivations, and the requirements of using FL in smart healthcare. The recent FL designs for smart healthcare are then discussed, ranging from resource-aware FL, secure and privacy-aware FL to incentive FL and personalized FL. Subsequently, we provide a state-of-the-art review on the emerging applications of FL in key healthcare domains, including health data management, remote health monitoring, medical imaging, and COVID-19 detection. Several recent FL-based smart healthcare projects are analyzed, and the key lessons learned from the survey are also highlighted. Finally, we discuss interesting research challenges and possible directions for future FL research in smart healthcare.
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智能医疗保健的联邦学习:一项调查
通信技术和医疗物联网(IOMT)的最新进展已经改变了由人工智能(AI)实现的智能医疗。传统上,人工智能技术需要集中的数据收集和处理,由于现代医疗网络的高可扩展性和日益增长的数据隐私问题,这在现实的医疗场景中可能是不可行的。联邦学习(FL)作为一种新兴的分布式协作式人工智能范例,通过协调多个客户(例如医院)在不共享原始数据的情况下执行人工智能训练,对智能医疗保健特别有吸引力。因此,我们对FL在智能医疗中的使用进行了全面调查。首先,我们介绍了FL的最新进展、动机和在智能医疗中使用FL的要求。然后讨论了智能医疗领域最新的FL设计,从资源感知FL、安全和隐私感知FL到激励FL和个性化FL。随后,我们对FL在关键医疗领域的新兴应用进行了最新的回顾,包括健康数据管理、远程健康监测、医学成像和COVID-19检测。本文分析了最近几个基于fl的智能医疗保健项目,并强调了从调查中吸取的关键经验教训。最后,我们讨论了有趣的研究挑战和未来智能医疗领域FL研究的可能方向。
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