Rampichini Susanna, Vieira Taian Martins, Castiglioni Paolo, Merati Giampiero
Department of Biomedical Sciences for Health, Università degli Studi di Milano, 20133 Milan, Italy.
Laboratorio di Ingegneria del Sistema Neuromuscolare (LISiN), Dipartimento di Elettronica e Telecomunicazioni, Politecnico di Torino, 10129 Turin, Italy.
Entropy (Basel). 2020 May 7;22(5):529. doi: 10.3390/e22050529.
The surface electromyography (sEMG) records the electrical activity of muscle fibers during contraction: one of its uses is to assess changes taking place within muscles in the course of a fatiguing contraction to provide insights into our understanding of muscle fatigue in training protocols and rehabilitation medicine. Until recently, these myoelectric manifestations of muscle fatigue (MMF) have been assessed essentially by linear sEMG analyses. However, sEMG shows a complex behavior, due to many concurrent factors. Therefore, in the last years, complexity-based methods have been tentatively applied to the sEMG signal to better individuate the MMF onset during sustained contractions. In this review, after describing concisely the traditional linear methods employed to assess MMF we present the complexity methods used for sEMG analysis based on an extensive literature search. We show that some of these indices, like those derived from recurrence plots, from entropy or fractal analysis, can detect MMF efficiently. However, we also show that more work remains to be done to compare the complexity indices in terms of reliability and sensibility; to optimize the choice of embedding dimension, time delay and threshold distance in reconstructing the phase space; and to elucidate the relationship between complexity estimators and the physiologic phenomena underlying the onset of MMF in exercising muscles.
表面肌电图(sEMG)记录肌肉纤维在收缩过程中的电活动:其用途之一是评估在疲劳收缩过程中肌肉内部发生的变化,以便深入了解我们对训练方案和康复医学中肌肉疲劳的认识。直到最近,这些肌肉疲劳的肌电表现(MMF)基本上都是通过线性sEMG分析来评估的。然而,由于许多并发因素,sEMG表现出复杂的行为。因此,近年来,基于复杂性的方法已被尝试应用于sEMG信号,以更好地确定持续收缩期间MMF的发作。在这篇综述中,在简要描述用于评估MMF的传统线性方法之后,我们基于广泛的文献搜索,介绍了用于sEMG分析的复杂性方法。我们表明,其中一些指标,如那些从递归图、熵或分形分析中得出的指标,可以有效地检测MMF。然而,我们也表明,在可靠性和敏感性方面比较复杂性指标、在重建相空间时优化嵌入维度、时间延迟和阈值距离的选择以及阐明复杂性估计器与运动肌肉中MMF发作背后的生理现象之间的关系,仍有更多工作要做。