Fakulti Kejuruteraan Elektronik & Kejuruteraan Komputer, Universiti Teknikal Malaysia Melaka, Tunggal, Malaysia.
Regional Centre of Excellence in Biomedical Engineering and E-Health, University of Rwanda, PO BOX 4285, Kigali, Rwanda.
Biomed Eng Online. 2021 Jan 3;20(1):1. doi: 10.1186/s12938-020-00840-w.
This research has proved that mechanomyographic (MMG) signals can be used for evaluating muscle performance. Stimulation of the lost physiological functions of a muscle using an electrical signal has been determined crucial in clinical and experimental settings in which voluntary contraction fails in stimulating specific muscles. Previous studies have already indicated that characterizing contractile properties of muscles using MMG through neuromuscular electrical stimulation (NMES) showed excellent reliability. Thus, this review highlights the use of MMG signals on evaluating skeletal muscles under electrical stimulation. In total, 336 original articles were identified from the Scopus and SpringerLink electronic databases using search keywords for studies published between 2000 and 2020, and their eligibility for inclusion in this review has been screened using various inclusion criteria. After screening, 62 studies remained for analysis, with two additional articles from the bibliography, were categorized into the following: (1) fatigue, (2) torque, (3) force, (4) stiffness, (5) electrode development, (6) reliability of MMG and NMES approaches, and (7) validation of these techniques in clinical monitoring. This review has found that MMG through NMES provides feature factors for muscle activity assessment, highlighting standardized electromyostimulation and MMG parameters from different experimental protocols. Despite the evidence of mathematical computations in quantifying MMG along with NMES, the requirement of the processing speed, and fluctuation of MMG signals influence the technique to be prone to errors. Interestingly, although this review does not focus on machine learning, there are only few studies that have adopted it as an alternative to statistical analysis in the assessment of muscle fatigue, torque, and force. The results confirm the need for further investigation on the use of sophisticated computations of features of MMG signals from electrically stimulated muscles in muscle function assessment and assistive technology such as prosthetics control.
这项研究证明,肌动描记(MMG)信号可用于评估肌肉性能。在临床和实验环境中,使用电信号刺激丧失的生理功能对于刺激特定肌肉时无法进行自主收缩的情况至关重要。先前的研究已经表明,通过神经肌肉电刺激(NMES)使用 MMG 对肌肉的收缩特性进行特征描述具有出色的可靠性。因此,本综述强调了在电刺激下使用 MMG 信号评估骨骼肌的应用。总共从 Scopus 和 SpringerLink 电子数据库中确定了 336 篇原始文章,使用了 2000 年至 2020 年期间发表的研究的搜索关键字,并使用各种纳入标准筛选了这些文章纳入本综述的资格。经过筛选,有 62 项研究符合纳入标准,另外还有 2 篇文章来自参考文献,这些研究被分为以下几类:(1)疲劳,(2)扭矩,(3)力,(4)刚度,(5)电极开发,(6)MMG 和 NMES 方法的可靠性,以及(7)这些技术在临床监测中的验证。本综述发现,通过 NMES 的 MMG 为肌肉活动评估提供了特征因素,突出了来自不同实验方案的标准化肌电刺激和 MMG 参数。尽管有证据表明,在对 MMG 进行数学计算的同时进行 NMES,但处理速度的要求和 MMG 信号的波动会影响该技术,使其容易出错。有趣的是,尽管本综述并未侧重于机器学习,但在评估肌肉疲劳、扭矩和力方面,仅有少数研究采用它作为统计分析的替代方法。结果证实,需要进一步研究在肌肉功能评估和辅助技术(如假肢控制)中使用经过复杂计算的电刺激肌肉的 MMG 信号的特征。