» Articles » PMID: 16899649

Decomposition of Surface EMG Signals

Overview
Journal J Neurophysiol
Specialties Neurology
Physiology
Date 2006 Aug 11
PMID 16899649
Citations 120
Authors
Affiliations
Soon will be listed here.
Abstract

This report describes an early version of a technique for decomposing surface electromyographic (sEMG) signals into the constituent motor unit (MU) action potential trains. A surface sensor array is used to collect four channels of differentially amplified EMG signals. The decomposition is achieved by a set of algorithms that uses a specially developed knowledge-based Artificial Intelligence framework. In the automatic mode the accuracy ranges from 75 to 91%. An Interactive Editor is used to increase the accuracy to > 97% in signal epochs of about 30-s duration. The accuracy was verified by comparing the firings of action potentials from the EMG signals detected simultaneously by the surface sensor array and by a needle sensor. We have decomposed up to six MU action potential trains from the sEMG signal detected from the orbicularis oculi, platysma, and tibialis anterior muscles. However, the yield is generally low, with typically < or = 5 MUs per contraction. Both the accuracy and the yield should increase as the algorithms are developed further. With this technique it is possible to investigate the behavior of MUs in muscles that are not easily studied by needle sensors. We found that the inverse relationship between the recruitment threshold and the firing rate previously reported for muscles innervated by spinal nerves is also present in the orbicularis oculi and the platysma, which are innervated by cranial nerves. However, these two muscles were found to have greater and more widespread values of firing rates than those of large limb muscles.

Citing Articles

Variations in Neuromuscular Functions After Platelet-Rich Plasma and Dextrose Injections in Chronic Lateral Epicondylitis: A Randomized Controlled Study.

Chen Y, Hong C, Hsu K, Kuan F, Su W, Chen Y Sports Health. 2025; :19417381251314056.

PMID: 39885826 PMC: 11786260. DOI: 10.1177/19417381251314056.


The effects of resistance training to near volitional failure on motor unit recruitment during neuromuscular fatigue.

Beausejour J, Knowles K, Pagan J, Rodriguez J, Sheldon D, Ruple B PeerJ. 2024; 12:e18163.

PMID: 39421412 PMC: 11485100. DOI: 10.7717/peerj.18163.


Differential training benefits and motor unit remodeling in wrist force precision tasks following high and low load blood flow restriction exercises under volume-matched conditions.

Lin Y, Wong C, Chen Y, Chen Y, Hwang I J Neuroeng Rehabil. 2024; 21(1):123.

PMID: 39030574 PMC: 11264616. DOI: 10.1186/s12984-024-01419-5.


The Decomposition Method of Surface Electromyographic Signals: A Novel Approach for Motor Unit Activity and Recruitment Description.

Sadek P, Otahal J Physiol Res. 2024; 73(3):343-349.

PMID: 39027952 PMC: 11299776. DOI: 10.33549/physiolres.935166.


S-WD-EEMD: A hybrid framework for imbalanced sEMG signal analysis in diagnosis of human knee abnormality.

Vijayvargiya A, Sinha A, Gehlot N, Jena A, Kumar R, Moran K PLoS One. 2024; 19(5):e0301263.

PMID: 38820390 PMC: 11142505. DOI: 10.1371/journal.pone.0301263.