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Detection of ECG waveforms by using artificial neural networks

机译:通过使用人工神经网络检测ECG波形

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摘要

The ECG has considerable diagnostic significance in medicine. It is important to detect and display waveforms on the ECG recordings fast and automatically. In this study, waveform detection is performed by using artificial neural networks (ANNs). After the detection of the R peak of the QRS complex, feature vectors are formed by using the amplitudes of the significant frequency components of the DFT frequency spectrum. Grow and Learn (GAL) and Kohonen networks are comparatively examined to detect 4 different ECG waveforms. The comparative performance results of GAL, and Kohonen networks indicate that the GAL network results in faster learning and better classification performance with less number of nodes.
机译:心电图在医学中具有相当大的诊断意义。重要的是要快速和自动地检测和显示心电图录制的波形。在该研究中,通过使用人工神经网络(ANN)来执行波形检测。在检测QRS复合物的R峰值之后,通过使用DFT频谱的显着频率分量的幅度来形成特征向量。成长和学习(GAL)和Kohonen网络相对较称检测4个不同的心电图波形。 GAL和Kohonen网络的比较绩效结果表明GAL网络导致更快的学习和更好的分类性能,少量节点。

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