Quantifying lower-limb muscle coordination during cycling using electromyography-informed muscle synergies
Reza Ahmadi (1), Shahram Rasoulian (2), Hamidreza Heidary (1), Saied Jalal Aboodarda (2), Thomas K. Uchida (3), Walter Herzog (1, 2), and Amin Komeili (1, 2) ((1) Department of Mechanical, Manufacturing Engineering, University of Calgary, Calgary

TL;DR
This study used electromyography to analyze muscle synergies during cycling at different power levels, revealing how neuromuscular coordination adapts to increasing demands and offering new assessment tools for motor control and performance optimization.
Contribution
It introduces a novel approach combining muscle synergy analysis and coactivation indices to quantify neuromuscular coordination during cycling at various power levels.
Findings
Four muscle synergies are consistently identified across power levels.
Increased power levels lead to reduced knee coactivation and increased ankle coactivation.
Synergy and coactivation indices can effectively assess neuromuscular coordination.
Abstract
Assessment of muscle coordination during cycling may provide insight into motor control strategies and movement efficiency. This study evaluated muscle synergies and coactivation patterns as indicators of neuromuscular coordination in lower-limb across three power levels of cycling. Twenty recreational cyclists performed a graded cycling test on a stationary bicycle ergometer. Electromyography was recorded bilaterally from seven lower-limb muscles and muscle synergies were extracted using non-negative matrix factorization. The Coactivation Index (CI), Synergy Index (SI), and Synergy Coordination Index (SCI) were calculated to assess muscle coordination patterns. Four muscle synergies were identified consistently across power levels, with changes in synergy composition and activation timing correlated with increased muscular demands. As power level increased, the CI showed reduced muscle…
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