一种结合体表肌电图的心电图排斥方法。

Q3 Medicine Open Biomedical Engineering Journal Pub Date : 2014-03-07 eCollection Date: 2014-01-01 DOI:10.2174/1874120701408010013
Sara Abbaspour, Ali Fallah
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引用次数: 17

摘要

当从靠近心脏的肌肉记录肌电信号时,代表心脏电活动的心电图信号对肌电信号的记录产生干扰。因此,由于杂质,从该区域记录的肌电信号不能使用。本文提出了一种将人工神经网络与小波变换相结合的方法,以消除肌电图信号中的心电图伪影,提高检测结果的准确性。为此,首先使用神经网络对污染信号进行清理。通过这个过程,可以去除大量的噪声。然而,低频噪声成分仍然存在于信号中,可以使用小波去除。最后,将所提方法的结果与其他文献中用于从肌电图中去除心电图的方法进行了比较。本文从信噪比、相对误差、功率谱密度和相干性等定性和定量指标进行了评价和比较。信噪比和相对误差分别为15.6015和0.0139。
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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A combination method for electrocardiogram rejection from surface electromyogram.

The electrocardiogram signal which represents the electrical activity of the heart provides interference in the recording of the electromyogram signal, when the electromyogram signal is recorded from muscles close to the heart. Therefore, due to impurities, electromyogram signals recorded from this area cannot be used. In this paper, a new method was developed using a combination of artificial neural network and wavelet transform approaches, to eliminate the electrocardiogram artifact from electromyogram signals and improve results. For this purpose, contaminated signal is initially cleaned using the neural network. With this process, a large amount of noise can be removed. However, low-frequency noise components remain in the signal that can be removed using wavelet. Finally, the result of the proposed method is compared with other methods that were used in different papers to remove electrocardiogram from electromyogram. In this paper in order to compare methods, qualitative and quantitative criteria such as signal to noise ratio, relative error, power spectrum density and coherence have been investigated for evaluation and comparison. The results of signal to noise ratio and relative error are equal to 15.6015 and 0.0139, respectively.

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来源期刊
Open Biomedical Engineering Journal
Open Biomedical Engineering Journal Medicine-Medicine (miscellaneous)
CiteScore
1.60
自引率
0.00%
发文量
4
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