The rapid development in Internet of Medical Things (IoMT) boosts the opportunity for real-time health monitoring using various data types such as electroencephalography (EEG) and electrocardiography (ECG). Security issues have significantly impeded the e-healthcare system implementation. Three important challenges for privacy preserving system need to be addressed: accurate diagnosis, privacy protection without compromising accuracy, and computation efficiency. It is essential to guarantee prediction accuracy since disease diagnosis is strongly related to health and life. By implementing matrix encryption method, we propose a real-time disease diagnosis scheme using support vector machine (SVM). A biomedical signal provided by the client is diagnosed such that the server does not get any information about the signal as well as the final result of the diagnosis while the proposed scheme also achieves confidentiality of the SVM classifier and the server's medical data. The proposed scheme has no accuracy degradation. Experiments on real-world data illustrate the high efficiency of the proposed scheme. It takes less than 1 second to derive the disease diagnosis result using a device with 4Gb RAMs, suggesting the feasibility to implement real-time privacy preserving health monitoring.
翻译:随着医疗物联网(IoMT)的快速发展,使用各种数据类型如脑电图(EEG)和心电图(ECG)进行实时健康监测的机会增加了。安全问题严重阻碍着电子医疗保健系统的实施。需要解决隐私保护系统的三个重要挑战:准确的诊断,不损害准确率的隐私保护以及计算效率。由于疾病诊断与健康和生命密切相关,因此必须保证预测准确性。通过实现矩阵加密方法,我们提出了一种使用支持向量机(SVM)的实时疾病诊断方案。提供的生物医学信号由客户端进行诊断,使得服务器在不获取有关信号以及诊断结果的任何信息的同时,所提出的方案也实现了SVM分类器和服务器 medical 数据的机密性。所提出的方案没有准确性降级。对实际数据进行的实验表明了所提出方案的高效性。使用4Gb RAMs的设备仅需不到1秒即可得出疾病诊断结果,表明实时隐私保护健康监测的实施是可行的。