Feature extraction from ECG for classification by artificial neural networks

Louis C. Pretorius, Cobus Nel
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引用次数: 15

Abstract

The ability of properly trained artificial neural networks to correctly classify patterns makes them particularly suitable for the interpretation of ECG (electrocardiography) signals. Attention was given to three classes of ECGs, namely, normal and two cardiac myopathies, and anterior and inferior infarctions. Suitable features were extracted from the digitized bipolar limb lead ECG signals, and results are presented to show that a multilayer perceptron can correctly discriminate between the three chosen classes.<>
心电特征提取与人工神经网络分类
经过适当训练的人工神经网络正确分类模式的能力使其特别适合于ECG(心电图)信号的解释。注意三种类型的心电图,即正常和两种心肌病变,以及前梗死和下梗死。从数字化的双极肢体导联心电信号中提取合适的特征,结果表明多层感知器可以正确区分所选的三种类型
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