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Detecting Malicious Nodes in Medical Smartphone Networks Through Euclidean Distance-Based Behavioral Profiling

机译:通过基于欧氏距离的行为分析来检测医疗智能手机网络中的恶意节点

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With the increasing digitization of the healthcare industry, a wide range of medical devices are Internet- and inter-connected. Mobile devices (e.g., smartphones) are one common facility used in the healthcare industry to improve the quality of service and experience for both patients and healthcare personnel. The underlying network architecture to support such devices is also referred to as medical smartphone networks (MSNs). Similar to other networks, MSNs also suffer from various attacks like insider attacks (e.g., leakage of sensitive patient informa-tion by a malicious insider). In this work, we focus on MSNs and design a trust-based intrusion detection approach through Euclidean distance-based behavioral profiling to detect malicious devices (or called nodes). In the evaluation, we collaborate with healthcare organizations and implement our approach in a real simulated MSN environment. Experimental results demonstrate that our approach is promising in effectively identifying malicious MSN nodes.
机译:随着医疗保健行业数字化的不断发展,各种各样的医疗设备都通过Internet互连。移动设备(例如,智能手机)是医疗保健行业中用于提高患者和医疗保健人员的服务质量和体验的一种常见设施。支持此类设备的基础网络体系结构也称为医疗智能手机网络(MSN)。与其他网络类似,MSN也会遭受各种攻击,例如内部攻击(例如,恶意内部人员泄漏敏感的患者信息)。在这项工作中,我们将重点放在MSN上,并通过基于欧氏距离的行为分析来设计基于信任的入侵检测方法,以检测恶意设备(或称为节点)。在评估中,我们与医疗机构合作,并在真实的模拟MSN环境中实施我们的方法。实验结果表明,我们的方法有望有效地识别恶意MSN节点。

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