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Detection and Prediction of Sudden Cardiac Death (SCD) For Personal Healthcare

机译:个人医疗保健突发心脏死亡(SCD)的检测与预测

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Sudden Cardiac Death (SCD) is one of continuing challenges to the modern clinician. It is responsible for an estimated 400,000 deaths per year in the United States and millions of deaths worldwide [2, 11]. This research developed a personal cardiac homecare system by sensing Lead-I ECG signals for detecting and predicting SCD events, which also builds in ECG identity verification. A MIT/BIH SCD Holter Database plus our ECG database were investigated. The system includes a self-made ECG amplifier, a NI DAQ card, a laptop computer, LabView and MatLab programs. The wavelet analysis was applied to detect SCD and the overall performance is 87.5% correct detection rate. In addition, artificial neural networks (ANN) were used to predict SCD events. The correct prediction rates by applying least mean square (LMS), decision based neural network (DBNN), and back propagation (BP) neural network were 67.44%, 58.14% and 55.81% respectively.
机译:突然的心脏死亡(SCD)是现代临床医生的持续挑战之一。它负责美国每年有40万人死亡,全球数百万死亡[2,11]。这项研究通过传感铅-iCCG信号来检测和预测SCD事件,开发了一种个人心脏病系统,这也在ECG身份验证中构建。调查了MIT / BIH SCD HOSTER数据库加上我们的ECG数据库。该系统包括一个自制的ECG放大器,NI DAQ卡,笔记本电脑,LabVIEW和MATLAB程序。采用小波分析检测SCD,总体性能为87.5%的正确检测率。此外,人工神经网络(ANN)用于预测SCD事件。通过应用最小均方(LMS),基于决策的神经网络(DBNN)和反向传播(BP)神经网络的正确预测率分别为67.44%,58.14%和55.81%。

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