面向基于物联网的医疗保健的机器学习安全框架

Sandeep Pirbhulal, Nuno Pombo, Virginie Felizardo, N. Garcia, Ali Hassan Sodhro, S. Mukhopadhyay
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引用次数: 39

摘要

电子和通信技术的最新发展为电子医疗保健行业带来了显著的革命,以实现患者数据的有效传输。远程医疗监测的一个新兴应用是医疗物联网(IoMTs)。它们用于在以患者为中心的系统中传输和监测医疗信息。患者的数据非常重要,因此其安全传输是智能医疗应用的首要要求。当前时代见证了大规模使用加密和生物识别系统,以及机器学习(ML)方法分别用于身份验证和异常检测,以确保医疗系统的安全。在IoMT中,传感器设备的功率和电池有限,因此在安全性和资源效率之间提供平衡也是部署IoMT时要考虑的一个重要方面。因此,本研究旨在提出一种创新的框架,在低功耗医疗设备消耗较少资源的情况下,保护医疗信息免受外部威胁。在这项研究中,提出了基于ml的生物识别安全框架,其中从心电图信号中提取特征用于训练阶段。然而,在测试阶段,将利用从ECG生成的唯一生物特征ei和从多项式近似获得的系数来验证用户身份。该框架具有一定的科学意义和经济意义;因此,它可以用于实时医疗保健应用程序。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Towards Machine Learning Enabled Security Framework for IoT-based Healthcare
The recent developments in electronic and communication technologies have brought notable revolution in the e-healthcare industry for efficient transmission of the patient's data. One of the emergent applications of telehealth monitoring is the Internet of medical things (IoMTs). They are used to transfer and monitor medical information in patient-centred systems. Patient's data is very critical, so its secure transmission is of paramount requirement in smart healthcare applications. The current era has witnessed the large-scale usage of cryptographic and biometric systems, and machine learning (ML) approaches for authentication and anomaly detection, respectively, for securing medical systems. In IoMTs, sensor devices have limited power and battery, so to provide a balance between security and resource-efficiency is also an important aspect to consider during deploying IoMT. Therefore, this research aims to present an innovate framework to protect medical information from external threats with the consumption of less possible resources of low-powered medical devices. In this study, the ML-based biometric security framework is proposed in which features are extracted from Electrocardiogram (ECG) signals for the training phase. However, in the testing phase, the user authentication will be verified by utilizing generated unique biometric EIs from the ECG and acquired coefficients from polynomial approximation. The proposed framework has got the scientific as well as economic significance; thus, it could be used for real-time healthcare applications.
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