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Effects of Nonstationarity on Muscle Force Signals Regularity During a Fatiguing Motor Task

机译:运动疲劳过程中非平稳性对肌肉力量信号规律性的影响

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Physiological signals present fluctuations that can be assessed from their temporal structure, also termed complexity. The complexity of a physiological signal is usually quantified using entropy estimators, such as Sample Entropy. Recent studies have shown a loss of force signal complexity with the development of neuromuscular fatigue. However, these studies did not consider the stationarity of the force signals which is an important prerequisite of Sample Entropy measurements. Here, we investigated the effect of the potential nonstationarity of force signals on the kinetics of neuromuscular fatigue-induced change in force signal's complexity. Eleven men performed submaximal intermittent isometric contractions of knee extensors until exhaustion. Neuromuscular fatigue was assessed from changes in voluntary and electrically evoked contractions. Sample Entropy values were computed from submaximal force signals throughout the fatiguing task. The Dickey-Fuller test was used to statistically investigate the stationarity of force signals and the Empirical Mode Decomposition was applied to detrend these signals. Maximal voluntary force, central voluntary activation and muscle twitch decreased throughout the task (all p < 0.05), indicating the development of global, central and peripheral fatigue, respectively. We found an increase in Sample Entropy with fatigue (p = 0.024) when not considering the nonstationarity of force signals (i.e., 43% of nonstationary signals). After applying the Empirical Mode Decomposition, we found a decrease in Sample Entropy with fatigue (p = 0.002). These findings confirm the presence of nonstationarity in force signals during submaximal isometric contractions which influences the kinetics of Sample Entropy with neuromuscular fatigue.
机译:生理信号呈现出可以从其时间结构(也称为复杂性)进行评估的波动。通常使用熵估计器(例如样本熵)来量化生理信号的复杂度。最近的研究表明,随着神经肌肉疲劳的发展,力信号的复杂性逐渐丧失。但是,这些研究没有考虑力信号的平稳性,而平稳性是样本熵测量的重要前提。在这里,我们研究了力信号潜在的非平稳性对神经肌肉疲劳引起的力信号复杂性变化的动力学的影响。十一名男子进行了最大程度的膝部伸肌间歇性等长收缩,直至筋疲力尽。通过自愿性和电诱发性收缩的变化评估神经肌肉疲劳。从整个疲劳任务的次最大力信号计算出样本熵值。使用Dickey-Fuller检验对力信号的平稳性进行统计研究,并采用经验模态分解法对这些信号进行反趋势化。在整个任务期间,最大自愿力量,中枢自愿激活和肌肉抽搐减少(所有p <0.05),分别指示了整体,中枢和周围疲劳的发展。当不考虑力信号的非平稳性(即非平稳信号的43%)时,我们发现样本熵随着疲劳而增加(p = 0.024)。应用经验模态分解后,我们发现样品熵随着疲劳而降低(p = 0.002)。这些发现证实了在最大等距收缩过程中力信号中存在非平稳性,这会影响具有神经肌肉疲劳的样本熵的动力学。

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