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Premature Ventricular Contraction Detection from Ambulatory ECG Using Recurrent Neural Networks

机译:使用循环神经网络从动态心电图检测室性早搏

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Premature ventricular contraction (PVC) is usually considered to as benign arrhythmia in the absence of structural heart diseases. However, frequent premature beats may significantly increase the risk of heart failure and even death by an arrhythmia-induced cardiomyopathy. Therefore, high PVC counts have been considered as an approach to predict the risk of severe arrhythmias. Progress of wearable devices provides a convenient tool for the detection of premature contraction in casual life. Considering the huge quantities of data recorded by wearable devices, reliable and low-cost data analysis programs should be developed for real time PVC detection. In this research, we use recurrent neural networks with, long short-term memory to detect PVC. Through validating with MIT-BIH arrhythmia database, the detection accuracy of this method is 96%-99%.
机译:在没有结构性心脏病的情况下,室性早搏(PVC)通常被认为是良性心律失常。但是,频繁的早搏可能会明显增加心律失常所致心肌病导致心力衰竭的风险,甚至导致死亡。因此,高PVC计数已被认为是预测严重心律失常风险的一种方法。可穿戴设备的进步为检测休闲生活中的过早收缩提供了一种方便的工具。考虑到可穿戴设备记录的大量数据,应开发可靠且低成本的数据分析程序以进行实时PVC检测。在这项研究中,我们使用具有长短期记忆的递归神经网络来检测PVC。通过MIT-BIH心律失常数据库的验证,该方法的检测准确率为96%-99%。

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