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A NOVEL R-PEAK DETECTION METHOD COMBINING ENERGY AND WAVELET TRANSFORM IN ELECTROCARDIOGRAM SIGNAL

机译:心电图信号中能量与小波变换相结合的新型R峰检测方法

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摘要

QRS complex is the most important part in electrocardiogram (ECG) as it contains the most important information of heart activities. R-peak detection is the first, yet crucial, step in most ECG automatic diagnose methods. Due to the existence of noise in ECG signals and changes in QRS morphology, most existing methods are not robust in different conditions. In the field of intelligent remote health caring, in addition to the detection accuracy, timeliness is also an important research issue. In this paper, wavelet transform and energy window transform are introduced, which form the basis of a novel R-peak detection method. Wavelet transform is used to efficiently reduce noise and highlight useful ECG signal for it has good time-frequency resolution characters, and energy window transform converts time domain signal to energy domain, which makes it easier to isolate QRS complex from other signals. As a result, influence from QRS morphology changes can be effectively alleviated. To validate the effectiveness of this new method, ECG records of MIT-BIH arrhythmia database are used in the experiments. The experiment results show that the proposed method is efficient and robust to noise and QRS morphology changes. The computational cost of the proposed method has also been evaluated.
机译:QRS复合体是心电图(ECG)中最重要的部分,因为它包含心脏活动的最重要信息。在大多数ECG自动诊断方法中,R峰检测是第一步,但也是至关重要的一步。由于ECG信号中存在噪声以及QRS形态发生变化,因此大多数现有方法在不同条件下均不可靠。在智能远程保健领域中,除了检测准确性外,及时性也是重要的研究课题。本文介绍了小波变换和能量窗变换,它们构成了一种新颖的R峰检测方法的基础。小波变换具有良好的时频分辨率特性,可用于有效降低噪声并突出显示有用的ECG信号,而能量窗变换可将时域信号转换为能量域,从而更容易将QRS复数与其他信号隔离。结果,可以有效地减轻来自QRS形态变化的影响。为了验证这种新方法的有效性,在实验中使用了MIT-BIH心律失常数据库的ECG记录。实验结果表明,该方法对噪声和QRS形态变化均有效且鲁棒。还评估了所提出方法的计算成本。

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