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Neural network based analysis of the signal-averaged electrocardiogram

机译:基于神经网络的信号平均心电图分析

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Standard time-domain late potential analysis of the signal-averaged ECG is based on the QRS duration and the terminal low-amplitude portion of the QRS. The authors evaluated the capacities of neural networks (NN) to differentiate patients with and without malignant arrhythmias based on the complete QRS data without prior parameter extraction. In 74 patients with and 116 patients without inducible ventricular tachycardia (sVT) signal-averaged ECGs were recorded. Following high-pass 40 Hz filtering and non-linear scaling (tanh), the vector-ECG was used as input to a backpropagation network with 230 inputs and 3 layers. The network was trained to discriminate between patients with and without sVT. NN classification was comparable to standard VLP analysis in terms of accuracy (66% versus 65%) specificity (72% versus 61%) and positive predictive value (56% versus 54%). Potential advantages of the NN approach are its independence from an exact QRS-offset computation and its ability to handle noisy signals.
机译:信号平均ECG的标准时间域晚期电位分析基于QRS持续时间和QR的终端低幅度部分。作者评估了神经网络(NN)的能力,以基于没有先前参数提取的完整QRS数据,将患有和不具有恶性心律失常的患者区分患者。在74例患有116名没有诱导心室心动过速(SVT)的患者中,记录了信号平均的心电图。在高通40 Hz滤波和非线性缩放(TanH)之后,将矢量ECG用作具有230个输入和3层的反向慢化网络的输入。培训网络培训以区分患者和没有SVT的患者。 NN分类在准确度(66%对65%)特异性(66%对61%)和阳性预测值(56%与54%)方面相当的标准VLP分析。 NN方法的潜在优势是其独立于精确的QRS偏移计算及其处理嘈杂信号的能力。

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