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Subband higher-order statistics and cross-correlation for heartbeat type recognition based on two-lead electrocardiogram.

作者信息

Yu Sung-Nien, Liu Fan-Tsen

出版信息

Annu Int Conf IEEE Eng Med Biol Soc. 2014;2014:42-5. doi: 10.1109/EMBC.2014.6943524.

Abstract

Regular electrocardiogram beat classification system usually based on single lead ECG signal. This study designated to add a second lead of ECG signal to the system and apply higher-order statistics and inter-lead cross-correlation features to study the influence of the second lead to the recognition rates and noise-tolerance of the classifier. Discrete wavelet transformation is employed to decompose the ECG signals into different subband components and higher order statistics is recruited to characterize the ECG signals as an attempt to elevate the accuracy and noise-resistibility of heartbeat discrimination. A feed-forward back-propagation neural network (FFBNN) is employed as classifier. When compared with the system that uses only one lead, the second lead raises the recognition rate from 97.74% to 98.25%. We also study the ability of the two-lead system in resisting different levels of white Gaussian noise. More than 97.8% accuracy can be retained with the two-lead system even when the SNR decreases to 10 dB.

摘要

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