动态疲劳运动中肌肉电活动的可见性图和度统计分析

N. Makaram, R. Swaminathan
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引用次数: 1

摘要

肌肉力量的减少是几种神经肌肉疾病的常见症状。这种现象被称为肌肉疲劳。在正常受试者中,它通常是可逆的。表面肌电图(sEMG)信号通常用于分析肌肉疲劳。这些信号本质上是非线性和非平稳的。在这项工作中,尝试使用可见性图的度分布来分析非疲劳和疲劳条件下的表面肌电信号。上肢肌肉即肱二头肌在6公斤负荷下动态收缩时的肌电信号被记录下来。共有58名受试者自愿参加这项研究。对信号进行预处理,构造可见性图。对度分布的变化进行了研究和表征。结果表明,所记录的信号本质上是复杂的。非疲劳状态和疲劳状态的度分布明显不同。在疲劳状态下,高阶节点所占比例较大。此外,在非疲劳情况下,度的衰减率更大,表明信号是相对随机的。统计检验表明,当$\mathbf{p} < \mathbf{0.005}$时,提取的特征显著。看来,这种分析方法将有助于表征各种神经肌肉状况。
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Analysis of Muscle's Electrical Activity During Dynamic Fatiguing Exercise Using Visibility Graph and Degree Statistics
The reduction in muscle force is a common symptom of several neuromuscular diseases. This phenomenon is called muscle fatigue. In normal subjects, it is generally reversible. Surface electromyography (sEMG) signals are commonly used to analyze muscle fatigue. These signals are nonlinear and nonstationary in nature. In this work, an attempt is made to analyse sEMG signals in nonfatigue and fatigue conditions using the degree distribution of visibility graphs. The sEMG signals are recorded from the upper limb muscle namely the biceps brachii during dynamic contraction with a six-kilogram load. A total of 58 subjects volunteered for the study. The signals are preprocessed, and visibility graphs are constructed. The variation in the degree distribution is studied and characterized. The results indicate that the signals recorded are complex in nature. The degree distributions are distinct between nonfatigue and fatigue conditions. In fatigue, the percentage of higher degree nodes are more. Further, the decay rate of degree is larger in the case of nonfatigue indicating the signal is comparatively random. The statistical test indicates that the features extracted are significant with a $\mathbf{p} < \mathbf{0.005}$. It appears that this method of analysis would be useful for characterizing various neuromuscular conditions.
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