Literature DB >> 29699890

Separation of electrocardiographic from electromyographic signals using dynamic filtration.

Ivaylo Christov1, Rositsa Raikova2, Silvija Angelova1.   

Abstract

Trunk muscle electromyographic (EMG) signals are often contaminated by the electrical activity of the heart. During low or moderate muscle force, these electrocardiographic (ECG) signals disturb the estimation of muscle activity. Butterworth high-pass filters with cut-off frequency of up to 60 Hz are often used to suppress the ECG signal. Such filters disturb the EMG signal in both frequency and time domain. A new method based on the dynamic application of Savitzky-Golay filter is proposed. EMG signals of three left trunk muscles and pure ECG signal were recorded during different motor tasks. The efficiency of the method was tested and verified both with the experimental EMG signals and with modeled signals obtained by summing the pure ECG signal with EMG signals at different levels of signal-to-noise ratio. The results were compared with those obtained by application of high-pass, 4th order Butterworth filter with cut-off frequency of 30 Hz. The suggested method is separating the EMG signal from the ECG signal without EMG signal distortion across its entire frequency range regardless of amplitudes. Butterworth filter suppresses the signals in the 0-30 Hz range thus preventing the low-frequency analysis of the EMG signal. An additional disadvantage is that it passes high-frequency ECG signal components which is apparent at equal and higher amplitudes of the ECG signal as compared to the EMG signal. The new method was also successfully verified with abnormal ECG signals.
Copyright © 2018. Published by Elsevier Ltd.

Keywords:  Dynamic filtration; ECG signal; Savitzky–Golay filter; Surface EMG signal

Mesh:

Year:  2018        PMID: 29699890     DOI: 10.1016/j.medengphy.2018.04.007

Source DB:  PubMed          Journal:  Med Eng Phys        ISSN: 1350-4533            Impact factor:   2.242


  3 in total

1.  Applying Machine Learning to Finger Movements Using Electromyography and Visualization in Opensim.

Authors:  Jose Amezquita-Garcia; Miguel Bravo-Zanoguera; Felix F Gonzalez-Navarro; Roberto Lopez-Avitia; M A Reyna
Journal:  Sensors (Basel)       Date:  2022-05-14       Impact factor: 3.847

2.  Detecting compensatory movements of stroke survivors using pressure distribution data and machine learning algorithms.

Authors:  Siqi Cai; Guofeng Li; Xiaoya Zhang; Shuangyuan Huang; Haiqing Zheng; Ke Ma; Longhan Xie
Journal:  J Neuroeng Rehabil       Date:  2019-11-04       Impact factor: 4.262

3.  Electromyography Parameter Variations with Electrocardiography Noise.

Authors:  Kang-Ming Chang; Peng-Ta Liu; Ta-Sen Wei
Journal:  Sensors (Basel)       Date:  2022-08-09       Impact factor: 3.847

  3 in total

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