Sensors (Apr 2024)

Rectified Latent Variable Model-Based EMG Factorization of Inhibitory Muscle Synergy Components Related to Aging, Expertise and Force–Tempo Variations

  • Subing Huang,
  • Xiaoyu Guo,
  • Jodie J. Xie,
  • Kelvin Y. S. Lau,
  • Richard Liu,
  • Arthur D. P. Mak,
  • Vincent C. K. Cheung,
  • Rosa H. M. Chan

DOI
https://doi.org/10.3390/s24092820
Journal volume & issue
Vol. 24, no. 9
p. 2820

Abstract

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Muscle synergy has been widely acknowledged as a possible strategy of neuromotor control, but current research has ignored the potential inhibitory components in muscle synergies. Our study aims to identify and characterize the inhibitory components within motor modules derived from electromyography (EMG), investigate the impact of aging and motor expertise on these components, and better understand the nervous system’s adaptions to varying task demands. We utilized a rectified latent variable model (RLVM) to factorize motor modules with inhibitory components from EMG signals recorded from ten expert pianists when they played scales and pieces at different tempo–force combinations. We found that older participants showed a higher proportion of inhibitory components compared with the younger group. Senior experts had a higher proportion of inhibitory components on the left hand, and most inhibitory components became less negative with increased tempo or decreased force. Our results demonstrated that the inhibitory components in muscle synergies could be shaped by aging and expertise, and also took part in motor control for adapting to different conditions in complex tasks.

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