SPEI-FL: Serverless Privacy Edge Intelligence-Enabled Federated Learning in Smart Healthcare Systems

IF 4.3 3区 计算机科学 Q2 COMPUTER SCIENCE, ARTIFICIAL INTELLIGENCE Cognitive Computation Pub Date : 2024-06-17 DOI:10.1007/s12559-024-10310-3
Mahmuda Akter, Nour Moustafa, Benjamin Turnbull
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Abstract

Smart healthcare systems promise significant benefits for fast and accurate medical decisions. However, working with personal health data presents new privacy issues and constraints that must be solved from a cybersecurity perspective. Edge intelligence-enabled federated learning is a new scheme that utilises decentralised computing that allows data analytics to be carried out at the edge of a network, enhancing data privacy. However, this scheme suffers from privacy attacks, including inference, free-riding, and man-in-the-middle attacks, especially with serverless computing for allocating resources to user needs. Edge intelligence-enabled federated learning requires client data insertion and deletion to authenticate genuine clients and a serverless computing capability to ensure the security of collaborative machine learning models. This work introduces a serverless privacy edge intelligence-based federated learning (SPEI-FL) framework to address these issues. SPEI-FL includes a federated edge aggregator and authentication method to improve the data privacy of federated learning and allow client adaptation and removal without impacting the overall learning processes. It also can classify intruders through serverless computing processes. The proposed framework was evaluated with the unstructured COVID-19 medical chest x-rays and MNIST digit datasets, and the structured BoT-IoT dataset. The performance of the framework is comparable with existing authentication methods and reported a higher accuracy than comparable methods (approximately 90% as compared with the 81% reported by peer methods). The proposed authentication method prevents the exposure of sensitive patient information during medical device authentication and would become the cornerstone of the next generation of medical security with serverless computing.

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SPEI-FL:智能医疗系统中的无服务器隐私边缘智能联合学习
智能医疗系统有望为快速、准确的医疗决策带来巨大好处。然而,个人健康数据的处理带来了新的隐私问题和限制,必须从网络安全的角度加以解决。边缘智能联合学习是一种利用分散计算的新方案,它允许在网络边缘进行数据分析,从而提高数据的隐私性。然而,这种方案受到隐私攻击,包括推理、搭便车和中间人攻击,尤其是在无服务器计算根据用户需求分配资源的情况下。支持边缘智能的联合学习需要插入和删除客户端数据以验证真正的客户端,还需要无服务器计算能力来确保协作机器学习模型的安全性。这项工作介绍了一种无服务器隐私边缘智能联合学习(SPEI-FL)框架,以解决这些问题。SPEI-FL 包括一个联合边缘聚合器和认证方法,以提高联合学习的数据隐私性,并允许在不影响整体学习过程的情况下调整和移除客户端。它还能通过无服务器计算流程对入侵者进行分类。我们用非结构化的 COVID-19 医学胸部 X 光片和 MNIST 数字数据集以及结构化的 BoT-IoT 数据集对所提出的框架进行了评估。该框架的性能与现有的身份验证方法不相上下,并且报告的准确率高于同类方法(约为 90%,而同类方法报告的准确率为 81%)。所提出的身份验证方法可防止医疗设备身份验证过程中患者敏感信息的泄露,并将成为下一代无服务器计算医疗安全的基石。
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来源期刊
Cognitive Computation
Cognitive Computation COMPUTER SCIENCE, ARTIFICIAL INTELLIGENCE-NEUROSCIENCES
CiteScore
9.30
自引率
3.70%
发文量
116
审稿时长
>12 weeks
期刊介绍: Cognitive Computation is an international, peer-reviewed, interdisciplinary journal that publishes cutting-edge articles describing original basic and applied work involving biologically-inspired computational accounts of all aspects of natural and artificial cognitive systems. It provides a new platform for the dissemination of research, current practices and future trends in the emerging discipline of cognitive computation that bridges the gap between life sciences, social sciences, engineering, physical and mathematical sciences, and humanities.
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