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Muscle Synergies in Joystick Manipulation

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Journal Front Physiol
Date 2023 Oct 30
PMID 37900948
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Abstract

Extracting muscle synergies from surface electromyographic signals (sEMGs) during exercises has been widely applied to evaluate motor control strategies. This study explores the relationship between upper-limb muscle synergies and the performance of joystick manipulation tasks. Seventy-seven subjects, divided into three classes according to their maneuvering experience, were recruited to perform the left and right reciprocation of the joystick. Based on the motion encoder data, their manipulation performance was evaluated by the mean error, standard deviation, and extreme range of position of the joystick. Meanwhile, sEMG and acceleration signals from the upper limbs corresponding to the entire trial were collected. Muscle synergies were extracted from each subject's sEMG data by non-negative matrix factorization (NMF), based on which the synergy coordination index (SCI), which indicates the size of the synergy space and the variability of the center of activity (CoA), evaluated the temporal activation variability. The synergy pattern space and CoA of all participants were calculated within each class to analyze the correlation between the variability of muscle synergies and the manipulation performance metrics. The correlation level of each class was further compared. The experimental results evidenced a positive correlation between manipulation performance and maneuvering experience. Similar muscle synergy patterns were reflected between the three classes and the structure of the muscle synergies showed stability. In the class of rich maneuvering experience, the correlation between manipulation performance metrics and muscle synergy is more significant than in the classes of trainees and newbies, suggesting that long-term training and practicing can improve manipulation performance, stability of synergy compositions, and temporal activation variability but not alter the structure of muscle synergies determined by a specific task. Our approaches and findings could be applied to 1) reduce manipulation errors, 2) assist maneuvering training and evaluation to enhance transportation safety, and 3) design technical support for sports.

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References
1.
Soubeyrand M, Assabah B, Begin M, Laemmel E, Dos Santos A, Creze M . Pronation and supination of the hand: Anatomy and biomechanics. Hand Surg Rehabil. 2017; 36(1):2-11. DOI: 10.1016/j.hansur.2016.09.012. View

2.
Kargo W, Nitz D . Early skill learning is expressed through selection and tuning of cortically represented muscle synergies. J Neurosci. 2003; 23(35):11255-69. PMC: 6741030. View

3.
Kieliba P, Tropea P, Pirondini E, Coscia M, Micera S, Artoni F . How are Muscle Synergies Affected by Electromyography Pre-Processing?. IEEE Trans Neural Syst Rehabil Eng. 2018; 26(4):882-893. DOI: 10.1109/TNSRE.2018.2810859. View

4.
Tang L, Chen X, Cao S, Wu D, Zhao G, Zhang X . Assessment of Upper Limb Motor Dysfunction for Children with Cerebral Palsy Based on Muscle Synergy Analysis. Front Hum Neurosci. 2017; 11:130. PMC: 5362624. DOI: 10.3389/fnhum.2017.00130. View

5.
Kibushi B, Hagio S, Moritani T, Kouzaki M . Speed-Dependent Modulation of Muscle Activity Based on Muscle Synergies during Treadmill Walking. Front Hum Neurosci. 2018; 12:4. PMC: 5787572. DOI: 10.3389/fnhum.2018.00004. View