A low-distortion filter method to reject muscle noise in multi-lead electrocardiogram systems.

D Wei, E Harasawa, H Hosaka
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Abstract

This paper proposes a low-distortion filter method for rejection of muscle noise in multilead electrocardiogram (ECG) systems. This approach combines low-pass filtering with a modified version of source consistency filtering. The low-pass filtering splits the raw ECG signal into a muscle-noise-free part and a muscle-noise-overlapping part. The modified source consistency filtering then extracts the signal components from the muscle-noise-overlapping part. The extracted signal components are restored to the muscle-noise-free part as the output. The performance of our method was verified with simulated and clinically recorded ECG signals. The simulated ECG signals were created from computer simulation using three-dimensional, realistically shaped heart and torso models. The ideal signals are superimposed with white noise to simulate muscle noise and with a low frequency sine wave to simulate baseline drift. For verification, our method was compared with Butterworth low-pass filters. The results show that our method can effectively reduce muscle noise with less distortion of the QRS wave than conventional low-pass filters.

一种抑制多导联心电图系统肌肉噪声的低失真滤波方法。
提出了一种低失真滤波方法来抑制多导联心电图系统中的肌肉噪声。这种方法结合了低通滤波和源一致性滤波的改进版本。低通滤波将原始心电信号分解为无肌肉噪声部分和有肌肉噪声重叠部分。改进的源一致性滤波从肌肉噪声重叠部分提取信号分量。将提取的信号分量恢复到无肌肉噪声部分作为输出。通过模拟和临床记录的心电信号验证了该方法的性能。模拟的心电信号是利用三维的、真实形状的心脏和躯干模型通过计算机模拟产生的。理想的信号是用白噪声来模拟肌肉噪声,用低频正弦波来模拟基线漂移。为了验证,将我们的方法与巴特沃斯低通滤波器进行了比较。结果表明,与传统的低通滤波器相比,该方法可以有效地降低肌肉噪声,且QRS波失真较小。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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