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Multiresolution wavelet-based QRS complex detection algorithm suited to several abnormal morphologies

机译:基于多分辨率小波的QRS复杂检测算法,适用于几种异常形态

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摘要

The electrocardiogram (ECG) signal is considered as one of the most important tools in clinical practice in order to assess the cardiac status of patients. In this study, an improved QRS (Q wave, R wave, S wave) complex detection algorithm is proposed based on the multiresolution wavelet analysis. In the first step, high frequency noise and baseline wander can be distinguished from ECG data based on their specific frequency contents. Hence, removing corresponding detail coefficients leads to enhance the performance of the detection algorithm. After this, the author's method is based on the power spectrum of decomposition signals for selecting detail coefficient corresponding to the frequency band of the QRS complex. Hence, the authors have proposed a function g as the combination of the selected detail coefficients using two parameters λ1 and λ2, which correspond to the proportion of the frequency ranges of the selected detail compared with the frequency range of the QRS complex. The proposed algorithm is evaluated using the whole arrhythmia database. It presents considerable capability in cases of low signal-to-noise ratio, high baseline wander and abnormal morphologies. The results of evaluation show the good detection performance; they have obtained a global sensitivity of 99.87%, a positive predectivity of 99.79% and a percentage error of 0.34%.
机译:心电图(ECG)信号被认为是临床实践中最重要的工具之一,目的是评估患者的心脏状况。基于多分辨率小波分析,提出了一种改进的QRS(Q波,R波,S波)复杂检测算法。第一步,可以根据特定的频率内容将高频噪声和基线漂移与ECG数据区分开。因此,去除相应的细节系数导致增强检测算法的性能。此后,作者的方法是基于分解信号的功率谱来选择与QRS复数频带相对应的细节系数的。因此,作者提出了函数 g 作为使用两个参数λ 1 和λ 2 ,它对应于所选细节的频率范围与QRS复杂度的频率范围的比例。使用整个心律失常数据库对提出的算法进行评估。在低信噪比,高基线漂移和异常形态的情况下,它具有相当大的功能。评价结果表明检测性能良好。他们的整体敏感性为99.87%,阳性率为99.79%,百分比误差为0.34%。

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