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Automatic pattern recognition in ECG time series.

机译:ECG时间序列中的自动模式识别。

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摘要

In this paper, a technique for the automatic detection of any recurrent pattern in ECG time series is introduced. The wavelet transform is used to obtain a multiresolution representation of some example patterns for signal structure extraction. Neural Networks are trained with the wavelet transformed templates providing an efficient detector even for temporally varying patterns within the complete time series. The method is also robust against offsets and stable for signal to noise ratios larger than one. Its reliability was tested on 60 Holter ECG recordings of patients at the Department of Cardiology (University of Bonn). Due to the convincing results and its fast implementation the method can easily be used in clinical medicine. In particular, it solves the problem of automatic P wave detection in Holter ECG recordings.
机译:本文介绍了一种自动检测ECG时间序列中任何重复模式的技术。小波变换用于获得一些示例模式的多分辨率表示,以进行信号结构提取。用小波变换的模板训练神经网络,即使在整个时间序列内随时间变化的模式也可提供有效的检测器。该方法对于偏移也很鲁棒,对于大于1的信噪比也很稳定。在心脏病学系(波恩大学)的60个Holter ECG记录上测试了其可靠性。由于令人信服的结果及其快速实施,该方法可轻松用于临床医学。特别是,它解决了动态心电图记录中自动P波检测的问题。

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