Investigation of a Multichannel Surface Electromyogram Analysis
Method Considering Superimposed Waveforms in a Elbow Flexion
Movement
Jun Akazawa
1
and Ryuhei Okuno
2
1
School of Health Science and Medical Care, Meiji University of Integrative Medicine, Nantan-shi, Kyoto, Japan
2
Faculty of Science and Engineering, Setsunan University, Neyagawa-shi, Osaka, Japan
Keywords: Surface EMG, Superimposed Signals.
Abstract: The purpose of this study was to develop a method of decomposing the surface motor unit acton potential
(SMUAP) of a biceps brachii short head muscle when the distance from the surface electrodes to the motor
units (MUs) changes during voluntary isovelocity elbow flexion. In the preparatory study, a subject’s elbow
flexion movement had changed the shape of the SMUAP, which was probably made by a single MU larger
than the previous study. Thus, we had to develop a SMUAP decomposition method that focused on tracking
the SMUAP waveform changes and superimposed signals. The developed SMUAP decomposition
algorithm was based on a sequentially modified template matching method, considering the superimposed
signals. This was applied to the measured SMUAPs. The MU firing rates calculated with our algorithm
were almost the same as those of previous physiological studies; our algorithm was capable of decomposing
SMUAPs when the waveform of the SMUAP was generated from a single MU and responded with each
change in firing time.
1 INTRODUCTION
In physiology and medicine, methods to investigate
the behaviors of motor units (MUs) are desired.
Studies have shown that high-density surface
electrodes are suitable for analyzing the
characteristics of MUs during isometric contraction
(Merletti and Parker, 2004).
Needle electrodes have been used to analyze the
motor unit acton potential (MUAP) behavior from
the tibialis muscle during ankle joint flexion [Kato,
Murakami, and Yasuda, 1985). However, needle
electrodes restricted the angle to a small range.
To solve this problem, we used multi-channel
surface electrodes to investigate the behavior of the
MU in the biceps brachii short head muscle. Our
results showed that the firing rates (FRs) of activated
MUs were almost the same when the degree of
elbow flexion varied from 0 to 120 degree;
additionally, surface MUAPs (SMUAPs) were
identified by visual observation (Okuno, Maekawa,
Akazawa, Yhoshida, and K. Akazawa, 2005). The
measured SMUAP waveforms changed gradually;
thus, it was difficult to perform SMUAP
decomposition quantitatively.
In this study, we developed an algorithm to
decompose the SMUAPs quantitatively during
voluntary isovelocity elbow flexion. This algorithm
was based on the similar shape of SMUAP
waveforms of a single MU extracted for a short
period during isovelocity movements (Akazawa and
Okuno, 2013).
Notably, in some subjects whose fat tissue was
thin, the shape of the SMUAP was most likely
generated by a single MU; in this case, the
waveform shapes changed, making it difficult to
decompose the SMUAPs. Thus, further adjustments
to the algorithm were required to address this issue.
Akazawa, J. and Okuno, R.
Investigation of a Multichannel Surface Electromyogram Analysis Method Considering Superimposed Waveforms in a Elbow Flexion Movement.
DOI: 10.5220/0006634901950200
In Proceedings of the 11th International Joint Conference on Biomedical Engineering Systems and Technologies (BIOSTEC 2018) - Volume 4: BIOSIGNALS, pages 195-200
ISBN: 978-989-758-279-0
Copyright © 2018 by SCITEPRESS – Science and Technology Publications, Lda. All rights reserved
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