Muscle synergy analysis of lower limb based on Mechanomyography

Hanyang Zhang, Gangsheng Cao, Tongtong Zhao, Chunming Xia
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Abstract

Analysis of muscle synergy during the execution of different motions can provide a physiological basis for the rehabilitation assessment of stroke patients. Mechanomyography (MMG) signal is a kind of low-frequency signal produced during muscle vibration, has been widely applied to pattern recognition and muscle fatigue estimation. In this paper, muscle synergy was extracted from 5 channels of MMG signals recorded from 8 healthy subjects in the lower limbs using the non-negative matrix factorization (NNMF) algorithm. In addition, the similarities of muscle activation patterns of 4 different motions were analyzed, and a suitable activation threshold was selected by comparing synergistic and non-synergistic muscles through the coherence analysis method. This study provides a scientific basis for studying muscle synergy based on MMG signals.
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基于肌力图的下肢肌肉协同分析
分析不同动作执行过程中的肌肉协同作用,可为脑卒中患者的康复评估提供生理依据。肌力图(Mechanomyography, MMG)信号是肌肉振动过程中产生的一种低频信号,已广泛应用于模式识别和肌肉疲劳估计。本文采用非负矩阵分解(non-negative matrix factorization, NNMF)算法对8名健康受试者下肢MMG信号的5个通道进行肌肉协同提取。此外,分析4种不同动作的肌肉激活模式的相似性,并通过相干性分析方法,通过对协同与非协同肌肉的比较,选择合适的激活阈值。本研究为基于MMG信号的肌肉协同作用研究提供了科学依据。
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