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A Method for Automated J Wave Detection and Characterisation Based on Feature Extraction

机译:一种基于特征提取的自动化J波检测和表征方法

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J waves are low-amplitude, high-frequency waveforms which look like notches or slurs appearing in the descending slope of the terminal portion of the QRS complex in electrocardiogram (ECG). J wave is related to early repolarization syndrome (ERS), idiopathic ventricular fibrillation (IVF) or Brugada syndrome (BrS). Patients with the three syndromes are susceptible to cardiac arrhythmias and sudden cardiac death. Accordingly, J wave detection presents a non-invasive marker for some cardiac diseases clinically. In this report, 12-lead ECG record with higher signal-to-noise ratio (SNR) is formed using multi-beat averaging method. Then, we define five feature vectors including three time-domain feature vectors and two wavelet-based feature vectors. Those feature vectors are processed by principle component analysis (PCA) to reduce its dimensionality. Finally, a Hidden Markova model (HMM), trained by a proper set of these feature vectors, is employed as a classifier. Compared with other existing methods, the results show the proposed method reveals high evaluation criteria (accuracy, sensitivity, and specificity) and is qualified to detect J waves, suggesting possible utility of this approach for defining and detection of other complex ECG waveforms.
机译:j波是低幅度,高频波形,其看起来像在心电图(ECG)中QRS复合物的终端部分的下降斜率中出现的凹口或骤降。 J Wave与早期倒钩综合征(ERS),特发性心室纤维化(IVF)或Brugada综合征(BRS)有关。三个综合征患者易患心律失常和突发的心脏死亡。因此,J波检测临床上为某些心脏病患者提供了非侵入性标记。在本报告中,使用多节拍平均方法形成具有更高信噪比(SNR)的12引导ECG记录。然后,我们定义五个特征向量,包括三个时域特征向量和两个基于小波的特征向量。这些特征向量由原理分量分析(PCA)处理,以降低其维度。最后,采用由适当的这些特征向量训练的隐藏的Markova模型(HMM)被用作分类器。与其他现有方法相比,结果显示了所提出的方法揭示了高评价标准(准确性,灵敏度和特异性)并且有资格检测J WAVE,表明这种方法可以定义和检测其他复杂的ECG波形的可能效用。

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