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Automatic detection of P, QRS and T patterns in 12 leads ECG signal based on CWT

机译:基于CWT自动检测12导联心电信号中的P,QRS和T模式

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In this paper, a new method based on the continuous wavelet transform is described in order to detect the QRS, P and T waves. QRS, P and T waves may be distinguished from noise, baseline drift or irregular heartbeats. The algorithm, described in this paper, has been evaluated using the Computers in Cardiology (CinC) Challenge 2011 database and also applied on the MIT-BIH Arrhythmia database (MITDB). The data from the CinC Challenge 2011 are standard 12 ECG leads recordings with full diagnostic bandwidth compared to the MITDB which only includes two leads for each ECG signal. Firstly, our algorithm is validated using fifty 12 leads ECG samples from the CinC collection. The samples have been chosen in the "acceptable records" list given by Physionet. The detection and the duration delineation of the QRS, P and T waves given by our method are compared to expert physician results. The algorithm shows a sensitivity equal to 0.9987 for the QRS complex, 0.9917 for the T wave and 0.9906 for the P wave. The accuracy and the Youden index values show that the method is reliable for the QRS, T and P waves detection and delineation. Secondly, our algorithm is applied to the MITDB in order to compare the detection of QRS wave to results of other some works in the literature. (C) 2015 Elsevier Ltd. All rights reserved.
机译:本文介绍了一种基于连续小波变换的新方法,以检测QRS,P和T波。 QRS,P和T波可与噪声,基线漂移或不规则心跳区分开。本文中描述的算法已使用“计算机心脏病学(CinC)Challenge 2011”数据库进行了评估,并已应用于MIT-BIH心律失常数据库(MITDB)。与MITDB相比,来自CinC Challenge 2011的数据是标准的12条ECG引线记录,具有完整的诊断带宽,而MITDB的每个ECG信号仅包含两条引线。首先,我们使用来自CinC集合的50个12导联心电图样本验证了我们的算法。样品已从Physionet提供的“可接受的记录”列表中选择。我们的方法给出的QRS,P和T波的检测和持续时间描绘与专家医师的结果进行了比较。该算法显示的灵敏度对于QRS复数等于0.9987,对于T波等于0.9917,对于P波等于0.9906。准确性和尤登指数值表明,该方法对于QRS,T和P波的检测和描绘是可靠的。其次,将我们的算法应用于MITDB,以便将QRS波的检测结果与文献中其他一些研究的结果进行比较。 (C)2015 Elsevier Ltd.保留所有权利。

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