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A Remote Healthcare Monitoring System for Faster Identification of Cardiac Abnormalities from Compressed ECG Using Advanced Data Mining Approach

机译:使用高级数据挖掘方法从压缩心电图中更快地识别心脏异常的远程医疗监控系统

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Cardiac Disease has become very common perhaps because of increasingly busy lifestyles. The rapid advancement of mobile communication technologies offers innumerable opportunities for the development of software and hardware applications for remote monitoring of chronic disease. This paper describes a remote health-monitoring service that provides an end-to-end solution. We present an efficient data mining-based solution that recognizes different CVDs (such as ventricular flutter/fibrillation, atrial fibrillation, atrial premature beat, premature ventricular contraction) from the compressed ECG, it was proposed to perform real-time classification of Cardiac Vascular Disease (CVD) based on data mining techniques. The subset of the features selection from the compressed ECG was performed using the Genetic algorithm and the clustering was performed using Expectation Maximization.
机译:心脏疾病已经变得非常普遍,也许是由于日益繁忙的生活方式所致。移动通信技术的飞速发展为开发用于远程监控慢性病的软件和硬件应用程序提供了无数的机会。本文介绍了一种远程健康监控服务,该服务提供了端到端解决方案。我们提出了一种基于数据挖掘的有效解决方案,该解决方案可以从压缩的ECG识别不同的CVD(例如心室扑动/心律失常,房颤,房性早搏,室性早搏),建议对心肌血管疾病进行实时分类(CVD)基于数据挖掘技术。使用遗传算法执行从压缩ECG中选择特征的子集,使用期望最大化执行聚类。

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