The internet of medical things (IoMT) allows the collection of physiological data using sensors, then their transmission to remote servers, which allows physicians and health professionals to analyze these data continuously and permanently and detect disease at an early stage. However, the use of wireless communication to transfer data exposes it to cyberattacks, and the sensitive and private nature of this data may represent a prime interest for attackers. Using traditional security methods on devices with limited storage and computing capacity is ineffective. On the other hand, using machine learning for intrusion detection can provide an adapted security response to the requirements of IoMT systems. In this context, a comprehensive survey on how machine learning (ML)-based intrusion detection systems address security and privacy issues in IoMT systems is performed. For this purpose, the generic three-layer architecture of IoMT and the security requirement of IoMT systems are provided. Then the various threats that can affect IoMT security are presented, and the advantages, disadvantages, methods, and datasets used in each solution based on ML are identified. Finally, some challenges and limitations of applying ML on each layer of IoMT are discussed, which can serve as a future research direction.
翻译:医疗用物的互联网(IOMT)使得能够利用传感器收集生理数据,然后将其传送到远程服务器,使医生和保健专业人员能够持续和永久地分析这些数据,并在早期阶段发现疾病;然而,使用无线通信将数据传输给网络攻击,而这些数据的敏感和私人性质可能代表攻击者的首要利益;在储存和计算能力有限的装置上使用传统的安全方法是无效的;另一方面,利用机器学习探测入侵,可以提供经调整的安全措施,满足IOMT系统的要求;在这方面,对机器学习(ML)入侵探测系统如何解决IOMT系统的安全和隐私问题进行了全面调查;为此目的,提供了IOMT通用的三层结构以及IOMT系统的安全要求;然后提出了可能影响IOMT安全的各种威胁,并确定了根据ML在每种解决办法中使用的优势、劣势、方法和数据集;最后,讨论了对IOMT系统每一层应用ML的一些挑战和限制,可以作为未来的研究方向。