IEEE J Biomed Health Inform. 2023 Feb;27(2):722-731. doi: 10.1109/JBHI.2022.3186250. Epub 2023 Feb 3.
The coronavirus pandemic has overburdened medical institutions, forcing physicians to diagnose and treat their patients remotely. Moreover, COVID-19 has made humans more conscious about their health, resulting in the extensive purchase of IoT-enabled medical devices. The rapid boom in the market worth of the internet of medical things (IoMT) captured cyber attackers' attention. Like health, medical data is also sensitive and worth a lot on the dark web. Despite the fact that the patient's health details have not been protected appropriately, letting the trespassers exploit them. The system administrator is unable to fortify security measures due to the limited storage capacity and computation power of the resource-constrained network devices'. Although various supervised and unsupervised machine learning algorithms have been developed to identify anomalies, the primary undertaking is to explore the swift progressing malicious attacks before they deteriorate the wellness system's integrity. In this paper, a Dew-Cloud based model is designed to enable hierarchical federated learning (HFL). The proposed Dew-Cloud model provides a higher level of data privacy with greater availability of IoMT critical application(s). The hierarchical long-term memory (HLSTM) model is deployed at distributed Dew servers with a backend supported by cloud computing. Data pre-processing feature helps the proposed model achieve high training accuracy (99.31%) with minimum training loss (0.034). The experiment results demonstrate that the proposed HFL-HLSTM model is superior to existing schemes in terms of performance metrics such as accuracy, precision, recall, and f-score.
冠状病毒大流行使医疗机构不堪重负,迫使医生远程诊断和治疗患者。此外,COVID-19 使人们更加关注自己的健康,导致对物联网医疗设备的广泛购买。物联网医疗市场价值的快速增长引起了网络攻击者的注意。与健康一样,医疗数据也很敏感,在暗网上价值不菲。尽管患者的健康细节没有得到适当的保护,但还是让入侵者利用了这些信息。由于资源受限的网络设备的存储容量和计算能力有限,系统管理员无法加强安全措施。尽管已经开发了各种监督和无监督的机器学习算法来识别异常,但主要任务是在恶意攻击恶化健康系统的完整性之前,探索迅速发展的恶意攻击。在本文中,设计了一种基于露水云的模型来实现分层联邦学习(HFL)。所提出的露水云模型提供了更高的数据隐私级别,并具有更大的物联网关键应用程序可用性。分层长短期记忆(HLSTM)模型部署在分布式露水服务器上,后端由云计算支持。数据预处理功能有助于所提出的模型实现高训练精度(99.31%)和最小训练损失(0.034)。实验结果表明,所提出的 HFL-HLSTM 模型在准确性、精度、召回率和 F1 分数等性能指标方面优于现有方案。