Development of a segmentation algorithm for ECG signals, simultaneously applying continuous and discrete wavelet transform

Catalina Bustamante Arcila, Sara Duque Vallejo, A. Orozco-Duque, John Bustamante Osorno
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引用次数: 3

Abstract

This paper presents the development of a segmentation algorithm for ECG signals, using simultaneously discrete and continuous wavelet transform. Here, it has been proposed the use of the discrete transform in order to make the pre-processing, signal filtering and detection of QRS complex; also the continuous transform to correct R and S wave detection as well as for the T wave, enabling the characteristics components identification in ECG signal. The algorithm was implemented in MATLAB® software and the QT Database was used for validation, considering the detection and delineation in signals with small or negative polarity QRS complex; and inverted T waves or with depression or elevation in the ST segment. For QRS complex it was found a sensibility Se=99,8% and a positive predictivity of P+=99,8%; and for the T wave a sensibility of Se=97,6 and a positive predictivity of P+=97,4%. The results show that the algorithm can be applied in signals with different morphologies even with low Signal to noise ratio and baseline.
同时应用连续和离散小波变换的心电信号分割算法
本文提出了一种利用离散和连续小波变换同时分割心电信号的算法。本文提出利用离散变换使QRS的预处理、信号滤波和检测变得复杂;并对正确的R波、S波检测以及T波进行连续变换,使心电信号的特征分量识别成为可能。该算法在MATLAB®软件中实现,并使用QT数据库进行验证,考虑到小极性或负极性QRS复合体信号的检测和描绘;反T波或ST段凹陷或升高。QRS复合体的敏感性Se= 99.8%,阳性预测值P+= 99.8%;对T波的敏感性Se=97,6,正预测性P+=97,4%。结果表明,在低信噪比和低基线条件下,该算法也能适用于不同形态的信号。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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