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A Novel Approach to Predict Sudden Cardiac Death (SCD) Using Nonlinear and Time-Frequency Analyses from HRV Signals

机译:一种基于HRV信号的非线性和时频分析预测心源性猝死(SCD)的新方法

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摘要

Investigations show that millions of people all around the world die as the result of sudden cardiac death (SCD). These deaths can be reduced by using medical equipment, such as defibrillators, after detection. We need to propose suitable ways to assist doctors to predict sudden cardiac death with a high level of accuracy. To do this, Linear, Time-Frequency (TF) and Nonlinear features have been extracted from HRV of ECG signal. Finally, healthy people and people at risk of SCD are classified by k-Nearest Neighbor (k-NN) and Multilayer Perceptron Neural Network (MLP). To evaluate, we have compared the classification rates for both separate and combined Nonlinear and TF features. The results show that HRV signals have special features in the vicinity of the occurrence of SCD that have the ability to distinguish between patients prone to SCD and normal people. We found that the combination of Time-Frequency and Nonlinear features have a better ability to achieve higher accuracy. The experimental results show that the combination of features can predict SCD by the accuracy of 99.73%, 96.52%, 90.37% and 83.96% for the first, second, third and forth one-minute intervals, respectively, before SCD occurrence.
机译:调查显示,全世界数百万人死于心源性猝死(SCD)。在发现后,可以通过使用除颤器等医疗设备来减少这些死亡。我们需要提出合适的方法来协助医生以高准确度预测心脏猝死。为此,已从ECG信号的HRV中提取了线性,时频(TF)和非线性特征。最后,通过k最近邻(k-NN)和多层感知器神经网络(MLP)对健康人和处于SCD危险中的人进行分类。为了进行评估,我们比较了单独的和组合的非线性和TF特征的分类率。结果表明,HRV信号在SCD发生附近具有特殊特征,能够区分倾向于SCD的患者和正常人。我们发现时频和非线性特征的组合具有更好的能力来实现更高的精度。实验结果表明,特征组合可以在SCD发生前的第一,第二,第三和第四分钟间隔分别以99.73%,96.52%,90.37%和83.96%的精度预测SCD。

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