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A Novel Diagnostic Algorithm for Heart Disease in ECG Monitoring System

机译:心电监护系统中一种新型的心脏病诊断算法

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Healthcare Internet of Things (HIoT) can connect mobile and wearable devices in the medical field, making disease monitoring and diagnosis possible anytime and anywhere. Most of these mobile and wearable devices can collect physiological signals of the human body in real time. Among them, ECG signal as a non-invasively collected signal that can effectively reflect the physiological changes of the heart plays a vital role in clinical and HIoT. We firstly propose a practical ECG monitoring system based on Humeds Portable ECG Monitor. Secondly, based on wavelet transform (WT) and deep convolutional neural network (DCNN), we propose a new algorithm suitable for the diagnosis of atrial fibrillation (AF) and arrhythmia. The sensitivity of AF is 0.978 and the accuracy rate of arrhythmia diagnosis is 0.991. Thirdly, we collected ECG data from 17 volunteers and verified the AF algorithm, the final average accuracy is 0.852. The ECG monitoring system designed in this paper can be used as a complete and effective application of HIoT. The algorithm designed in this paper is not only applicable to the ECG monitoring system proposed but also can be integrated as a potential algorithm in other ECG mobile and wearable devices.
机译:医疗保健物联网(HIoT)可以连接医疗领域的移动设备和可穿戴设备,从而使随时随地进行疾病监测和诊断成为可能。这些移动和可穿戴设备中的大多数可以实时收集人体的生理信号。其中,ECG信号作为一种无创收集的信号,可以有效反映心脏的生理变化,在临床和HIoT中起着至关重要的作用。我们首先提出一种基于Humeds便携式ECG监护仪的实用ECG监护系统。其次,基于小波变换(WT)和深度卷积神经网络(DCNN),提出了一种适用于心房颤动(AF)和心律失常诊断的新算法。 AF的敏感性为0.978,心律失常的诊断准确率为0.991。第三,我们从17名志愿者那里收集了心电图数据并验证了AF算法,最终平均准确度为0.852。本文设计的ECG监控系统可以作为HIoT的完整有效的应用程序。本文设计的算法不仅适用于所提出的ECG监测系统,而且还可以作为潜在的算法集成到其他ECG移动和可穿戴设备中。

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