利用熵、谱参数和递归量化分析对肌表电图疲劳进行评价

O. Sayli, H. B. Çotuk
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引用次数: 1

摘要

表面肌电图(EMG)通常用于检测肌肉激活,发现与参考相比较的肌肉激活水平-特别是在低力水平下-并评估肌肉疲劳水平。肌电信号是非平稳的,是复杂系统的响应。评估肌肉疲劳最常用的方法是从肌电信号的功率谱中计算平均频率(MNF)和中位数频率(MDF)的下降。在长时间的肌肉激活过程中,随着肌肉持续进入疲劳状态,传导速度下降,而运动单元同步增加。运动单元的同步会影响肌电信号的复杂度。考虑到这一点,使用熵和递归量化分析(RQA)方法以及MNF和MCF参数对肌电信号进行分析,因为熵和RQA方法提供了确定信号复杂性变化的度量。结果表明,随着疲劳的发生,MNF的下降伴随着熵的下降和%DET的增加。这些发现可以用运动单元同步引起的规律性增加来解释。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Use of entropy, spectral parameters and recurrence quantification analysis for the evaluation of muscle fatigue from surface electromyography
Surface electromyography (EMG) is commonly used to detect muscle activation, to find muscle activation level compared to a reference-especially at low force levels- and to evaluate muscle fatigue level. EMG signal is nonstationary and is the response of complex system. The most commonly used method to assess muscle fatigue is to compute decline in mean (MNF) and median (MDF) frequencies which are found from power spectrum of EMG signal. As the muscle continuously passes to fatigue state during a prolonged muscle activation, conduction velocity declines whereas motor unit synchronization increases. The motor unit synchronization should effect EMG signal complexity. Considering this, the EMG signals are analysed with entropy and recurrence quantification analysis (RQA) methods along with MNF and MCF parameters since entropy and RQA methods give measure to determine complexity changes in the signal. It was found that MNF decline is accompanied with entropy decline and %DET increase as the fatigue occurs. These findings could be explained by increased regularity caused by motor unit synchronization.
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