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Application of neural networks to separate interferences and ECG signals

机译:神经网络在分离干扰和心电图信号中的应用

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The analysis of the electrocardiogram (EGG) is not an easy job when muscle signals and other noisy signals corrupt the ECG hiding important information. These interferences normally overlap the heart signal spectrum; hence analog or digital filtering implies changes in ECG morphology that can affect the diagnostic result. In this work, an artificial neural network (ANN) which separates the interferences from the ECG is presented. This separation is based on the independence of these signals. The ANN combines the ECGs acquired simultaneously at different positions of the body surface, and is trained in order to minimize the averaged mutual information between its outputs. The ANN output signals are the ECG independent components.
机译:当肌肉信号和其他嘈杂信号损坏ECG隐藏重要信息时,心电图(鸡蛋)的分析不是一件容易的作业。这些干扰通常重叠心脏信号谱;因此,模拟或数字滤波意味着可以影响诊断结果的ECG形态的变化。在这项工作中,提出了分离ECG干扰的人工神经网络(ANN)。这种分离基于这些信号的独立性。 ANN将同时获取的ECG组合在体表的不同位置,并接受训练,以便最小化其输出之间的平均相互信息。 ANN输出信号是ECG独立组件。

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