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Automated detection of cybersecurity attacks in healthcare systems with recursive feature elimination and multilayer perceptron optimization

机译:通过递归特征消除和多层感知器优化自动检测医疗保健系统中的网络安全攻击

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摘要

Widespread proliferation of interconnected healthcare equipment, accompanying soft-ware, operating systems, and networks in the Internet of Medical Things (IoMT) raises the risk of security compromise as the bulk of IoMT devices are not built to withstand inter -net attacks. In this work, we have developed a cyber-attack and anomaly detection model based on recursive feature elimination (RFE) and multilayer perceptron (MLP). The RFE approach selected optimal features using logistic regression (LR) and extreme gradient boosting regression (XGBRegressor) kernel functions. MLP parameters were adjusted by using a hyperparameter optimization and 10-fold cross-validation approach was per -formed for performance evaluations. The developed model was performed on various IoMT cybersecurity datasets, and attained the best accuracy rates of 99.99, 99.94, 98.12, and 96.2, using Edith Cowan University-Internet of Health Things (ECU-IoHT), Intensive Care Unit (ICU Dataset), Telemetry data, Operating systems' data, and Network data from the testbed IoT/IIoT network (TON-IoT), and Washington University in St. Louis enhanced healthcare monitoring system (WUSTL-EHMS) datasets, respectively. The proposed method has the ability to counter cyber attacks in healthcare applications. (c) 2022 Nalecz Institute of Biocybernetics and Biomedical Engineering of the Polish Academy of Sciences. Published by Elsevier B.V. All rights reserved.
机译:医疗物联网 (IoMT) 中互联的医疗保健设备、随附的软件、操作系统和网络的广泛扩散增加了安全隐患的风险,因为大部分 IoMT 设备都无法抵御网间攻击。在这项工作中,我们开发了一种基于递归特征消除(RFE)和多层感知器(MLP)的网络攻击和异常检测模型。RFE 方法使用逻辑回归 (LR) 和极端梯度提升回归 (XGBRegressor) 核函数选择最优特征。使用超参数优化调整 MLP 参数,并采用 10 倍交叉验证方法进行性能评估。使用Edith Cowan大学-物联网物联网(ECU-IoHT)、重症监护病房(ICU数据集)、遥测数据、操作系统数据以及来自测试平台IoT/IIoT网络(TON-IoT)和圣路易斯华盛顿大学增强型医疗监测系统(WUSTL-EHMS)数据集的网络数据,在各种IoMT网络安全数据集上进行了开发的模型,并获得了99.99%、99.94%、98.12%和96.2%的最佳准确率。 分别。所提出的方法能够对抗医疗保健应用中的网络攻击。(c) 2022 年波兰科学院纳莱茨生物控制论和生物医学工程研究所。由以下开发商制作:Elsevier B.V.保留所有权利。

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