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Phase-space Reconstruction of Electrocardiogram for Heartbeat Classification

机译:心电图分类的心电图的相空间重构

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Heartbeat classification is crucial for cardiac arrhythmia analysis. QRS complex presents important characteristics which are beneficial to distinguish abnormal beats from normal beats. In the present study we propose a novel descriptor for QRS complex. The waveform is transformed to a two-dimensional phase space and then mapped to a one-dimensional portrait partition area (PPA). The proposed morphological descriptor has advantages of no need to detect Q and S characteristic points, tolerating R-peak misalignment and taking into account temporal relation of data samples. On the basis of 32 records from the M1T/BIII arrhythmia database, normal QRS and premature ventricular contraction (PVC) beats show different phase space portraits and PPA. An artificial neuronal network using PPA as the input feature was built for heartbeat classification. Our results showed that the sensitivity and specificity of distinguishing PVC from normal QRS achieved 0.9699 and 0.9651 in the testing sets, respectively.
机译:心跳分类对于心律不齐分析至关重要。 QRS复合体具有重要的特征,有助于区分异常搏动和正常搏动。在本研究中,我们提出了QRS复合体的新型描述符。波形被转换到二维相空间,然后映射到一维纵向分区(PPA)。所提出的形态描述符具有不需要检测Q和S特征点,可以容忍R峰未对准以及考虑到数据样本的时间关系的优点。根据M1T / BIII心律失常数据库的32条记录,正常QRS和室性早搏(PVC)搏动显示不同的相空间画像和PPA。建立了使用PPA作为输入功能的人工神经网络来进行心跳分类。我们的结果表明,在测试组中区分PVC与正常QRS的敏感性和特异性分别达到0.9699和0.9651。

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