Department of Mechanical Engineering, The University of Texas at Austin, Austin, TX 78712, USA.
Sensors (Basel). 2021 Feb 3;21(4):1024. doi: 10.3390/s21041024.
Current methods for evaluating fatigue separately assess intramuscular changes in individual muscles from corresponding alterations in movement output. The purpose of this study is to investigate if a system-based monitoring paradigm, which quantifies how the dynamic relationship between the activity from multiple muscles and force changes over time, produces a viable metric for assessing fatigue. Improvements made to the paradigm to facilitate online fatigue assessment are also discussed. Eight participants performed a static elbow extension task until exhaustion, while surface electromyography (sEMG) and force data were recorded. A dynamic time-series model mapped instantaneous features extracted from sEMG signals of multiple synergistic muscles to extension force. A metric, called the Freshness Similarity Index (FSI), was calculated using statistical analysis of modeling errors to reveal time-dependent changes in the dynamic model indicative of performance degradation. The FSI revealed strong, significant within-individual associations with two well-accepted measures of fatigue, maximum voluntary contraction (MVC) force (rrm=-0.86) and ratings of perceived exertion (RPE) (rrm=0.87), substantiating the viability of a system-based monitoring paradigm for assessing fatigue. These findings provide the first direct and quantitative link between a system-based performance degradation metric and traditional measures of fatigue.
目前评估疲劳的方法分别评估来自相应运动输出变化的单个肌肉的肌肉内变化。本研究的目的是探讨一种基于系统的监测范式,该范式量化了多个肌肉的活动与力随时间的动态关系如何产生评估疲劳的可行指标。还讨论了为促进在线疲劳评估而对该范式进行的改进。八名参与者进行了静态肘部伸展任务,直到筋疲力尽,同时记录表面肌电图 (sEMG) 和力数据。动态时间序列模型将从多个协同肌肉的 sEMG 信号中提取的瞬时特征映射到伸展力上。使用建模误差的统计分析计算了一个称为新鲜度相似性指数 (FSI) 的指标,以揭示指示性能下降的动态模型随时间的变化。FSI 与两种公认的疲劳测量方法(最大自主收缩 (MVC) 力(rrm=-0.86)和感知用力 (RPE) 评级(rrm=0.87))表现出强烈的、显著的个体内相关性,证实了基于系统的监测范式评估疲劳的可行性。这些发现提供了基于系统的性能下降指标与传统疲劳测量之间的第一个直接和定量联系。