DeepCAD: A Stand-alone Deep Neural Network-based Framework for Classification and Anomaly Detection in Smart Healthcare Systems

Nur Imtiazul Haque, Mohammad Rahman, S. Ahamed
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引用次数: 1

Abstract

Contemporary smart healthcare systems (SHSs) frequently use wireless body sensor devices (WBSDs) for vital sign monitoring and the internet of medical things (IoMT) network for rapid communication with a cloud-based controller. The SHS controllers generate required control decisions based on the patient status to enable real-time patient medication/treatment. Hence, the correct medical delivery primarily depends on accurately identifying the patient's status. Accordingly, SHSs mostly leverage deep neural network (DNN)-based machine learning (ML) models for patient status classification due to their prediction accuracy and complex relation capturing capability. Nevertheless, the open IoMT network is prone to several cyberattacks, including adversarial ML-based attacks, which can exploit DNN models and create a life-threatening event in a safety-critical SHS. Existing solutions usually propose outlier detection or transfer learning-based ML models on top of the patient status classification model to deal with SHS security issues. However, incorporating a separate anomaly detection model increases the model complexity and raises feasibility issues for real-time deployment. This work presents a novel framework, DeepCAD, that considers training a stand-alone DNN model integrated with anomaly detection rules for classification and anomaly detection in SHS. The proposed framework is verified on the Pima Indians Diabetes and Parkinson datasets.
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DeepCAD:一个独立的基于深度神经网络的框架,用于智能医疗系统中的分类和异常检测
当代智能医疗系统(SHSs)经常使用无线身体传感器设备(wbsd)进行生命体征监测,并使用医疗物联网(IoMT)网络与基于云的控制器进行快速通信。SHS控制器根据患者状态生成所需的控制决策,以实现对患者的实时用药/治疗。因此,正确的医疗交付主要取决于准确识别患者的状态。因此,由于其预测准确性和复杂关系捕获能力,SHSs主要利用基于深度神经网络(DNN)的机器学习(ML)模型进行患者状态分类。然而,开放的IoMT网络容易受到多种网络攻击,包括基于ml的对抗性攻击,这些攻击可以利用DNN模型,并在安全关键的SHS中创建危及生命的事件。现有的解决方案通常在患者状态分类模型的基础上提出离群值检测或基于迁移学习的ML模型来处理SHS的安全问题。然而,合并单独的异常检测模型增加了模型的复杂性,并提出了实时部署的可行性问题。这项工作提出了一个新的框架,DeepCAD,它考虑训练一个独立的DNN模型与异常检测规则相结合,用于SHS中的分类和异常检测。在皮马印第安人糖尿病和帕金森数据集上验证了所提出的框架。
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