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首页> 外文期刊>Pattern Recognition: The Journal of the Pattern Recognition Society >Quantitative evaluation of a wavelet-based method in ventricular late potential detection
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Quantitative evaluation of a wavelet-based method in ventricular late potential detection

机译:基于小波的心室晚期电位检测方法的定量评估

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Ventricular late potentials (VLPs) are low-amplitude, high-frequency waveforms appearing in the terminal part of the QRS complex in electrocardiogram (ECG) of patients who are susceptible to ventricular tachycardia and sudden cardiac death, after surviving myocardial infarction. Accordingly, VLP detection presents a prominent non-invasive marker for some cardiac diseases clinically. This paper proposes a VLP detection method based on the wavelet transform and investigates its performance. In this method, a modified vector magnitude waveform is formed using discrete wavelet transform for each high-resolution ECG (HRECG) record; then, by applying the continuous wavelet transform to the QRS complex end part in this waveform, a feature vector is extracted from the resultant time-scale plot. This wavelet-based feature vector is processed by principle component analysis to reduce its dimensionality. Finally, a supervised feedforward artificial neural network, trained by a proper set of these feature vectors, is employed as a classifier. To evaluate the proposed method performance, a HRECG database consisting of the real VLP-negative and simulated VLP-positive patterns is used. In a comparative approach, different VLP detection techniques including the conventional time-domain method, developed by Simson, and some methods utilizing distinct diagnostic features are also applied to this database to investigate the capability of the proposed method in VLP analysis more completely. The results show the proposed method, employing the wavelet transform in both pre-processing and feature extraction stages, reveals high evaluation criteria (accuracy, sensitivity, and specificity) and is qualified to detect VLPs. (c) 2006 Pattern Recognition Society. Published by Elsevier Ltd. All rights reserved.
机译:心室迟发性(VLP)是在幸存者心肌梗死后易患室性心动过速和心源性猝死的患者的心电图(ECG)QRS复合波末端出现的低振幅高频波形。因此,VLP检测在临床上为某些心脏病提供了突出的非侵入性标记。提出了一种基于小波变换的VLP检测方法,并对其性能进行了研究。在这种方法中,对每个高分辨率ECG(HRECG)记录使用离散小波变换来形成修改的矢量幅度波形;然后,通过将连续小波变换应用于此波形中的QRS复数末端部分,从所得的时标图中提取特征向量。通过主成分分析对该基于小波的特征向量进行处理,以减小其维数。最后,由这些特征向量的适当集合训练的监督前馈人工神经网络被用作分类器。为了评估所提出方法的性能,使用了由实际VLP阴性和模拟VLP阳性模式组成的HRECG数据库。在一种比较方法中,包括Simsim开发的常规时域方法在内的各种VLP检测技术以及一些利用独特诊断功能的方法也被应用于该数据库,以更全面地研究该方法在VLP分析中的能力。结果表明,该方法在预处理和特征提取阶段均采用小波变换,具有较高的评估标准(准确性,敏感性和特异性),并且能够检测VLP。 (c)2006模式识别学会。由Elsevier Ltd.出版。保留所有权利。

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