Recent technological advancements have considerately improved healthcare systems to provide various intelligent healthcare services and improve the quality of life. Federated learning (FL), a new branch of artificial intelligence (AI), opens opportunities to deal with privacy issues in healthcare systems and exploit data and computing resources available at distributed devices. Additionally, the Metaverse, through integrating emerging technologies, such as AI, cloud edge computing, Internet of Things (IoT), blockchain, and semantic communications, has transformed many vertical domains in general and the healthcare sector in particular. Obviously, FL shows many benefits and provides new opportunities for conventional and Metaverse healthcare, motivating us to provide a survey on the usage of FL for Metaverse healthcare systems. First, we present preliminaries to IoT-based healthcare systems, FL in conventional healthcare, and Metaverse healthcare. The benefits of FL in Metaverse healthcare are then discussed, from improved privacy and scalability, better interoperability, better data management, and extra security to automation and low-latency healthcare services. Subsequently, we discuss several applications pertaining to FL-enabled Metaverse healthcare, including medical diagnosis, patient monitoring, medical education, infectious disease, and drug discovery. Finally, we highlight significant challenges and potential solutions toward the realization of FL in Metaverse healthcare.
翻译:近年来科技的发展大大提高了医疗系统的智能化程度,提供了各种智能化医疗服务以改善人类的生活质量。联邦学习(FL)是人工智能(AI)中的一个新兴领域,可以解决医疗系统中的隐私问题,同时利用分布式设备上的数据和计算资源。此外,元宇宙通过整合人工智能、云计算、物联网(IoT)、区块链和语义通信等新兴技术,改变了许多垂直领域,尤其是医疗领域。显然,FL在传统医疗领域和元宇宙医疗领域都表现出很多优势,激励我们在此提供一个关于FL在元宇宙医疗系统中应用的研究综述。首先,我们介绍物联网医疗系统、传统医疗领域和元宇宙医疗领域的FL基础知识。随后,我们讨论FL在元宇宙医疗领域的多个优势,包括改进隐私保护和扩展性、更好的互操作性、更好的数据管理和额外的安全性、自动化和低延迟的医疗服务。随后,我们讨论FL在元宇宙医疗环境中的几个应用,包括医学诊断、患者监测、医学教育、传染病和药物发现等。最后,我们重点讨论FL在元宇宙医疗领域实现的重大挑战和潜在解决方案。