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An Efficient and Automatic ECG Arrhythmia Diagnosis System using DWT and HOS Features and Entropy- Based Feature Selection Procedure

机译:使用DWT和HOS特征和基于熵的特征选择程序的一种高效和自动的ECG心律失常诊断系统

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摘要

Primary recognition of heart diseases by exploiting computer aided diagnosis (CAD) machines, decreases the vast rate of fatality among cardiac patients. Recognition of heart abnormalities is a staggering task because the low changes in ECG signals may not be exactly specified with eyesight. In this paper, an efficient approach for ECG arrhythmia diagnosis is proposed based on a combination of discrete wavelet transform and higher order statistics feature extraction and entropy based feature selection methods. Using the neural network and support vector machine, five classes of heartbeat categories are classified. Applying the neural network and support vector machine method, our proposed system is able to classify the arrhythmia classes with high accuracy (99.83%) and (99.03%), respectively. The advantage of the presented procedure has been experimentally demonstrated compared to the other recently presented methods in terms of accuracy.
机译:通过利用计算机辅助诊断(CAD)机器,对心脏病(CAD)机器进行初始识别,降低了心脏病患者的大量死亡率。心脏异常的识别是一个惊人的任务,因为ECG信号的低变化可能无法用视力恰好指定。本文基于离散小波变换和高阶统计特征提取和熵的特征选择方法,提出了一种有效的ECG心律失常诊断方法。使用神经网络和支持向量机,五类心跳类别分类。应用神经网络和支持向量机方法,我们所提出的系统能够分别以高精度(99.83%)和(99.03%)分类的心律失常课程。与其他最近呈现的方法在准确度方面进行了实验证明了所提出的程序的优点。

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