Investigation of Fatigue Using Different EMG Features

Azadeh Aghamohammadi-Sereshki, Mohammad Javad Darvishi Bayazi, F. T. Ghomsheh, F. Amirabdollahian
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引用次数: 2

Abstract

Rehabilitative exercise for people suffering from upper limb impairments has the potential to improve their neuro-plasticity due to repetitive training. Our study investigates the usefulness of Electroencephalogram and Electromyogram (EMG) signals for incorporation in humanrobot interaction loop. Twenty healthy participants recruited who performed a series of physical and cognitive tasks, with an inherent fatiguing component in those tasks. Here we report observed effects on EMG signals. Participants performed a Biceps curl repetitions using a suitable dumbbell in three phases. In phase 1, the initial weight was set to achieve maximum voluntary contraction (MVC). Phase 2 followed with 80 % MVC and phase 3 had 60% MVC. After each phase, they had a break around 3 minutes. EMG data were acquired from Biceps, Triceps, and Brachioradialis muscles. Different EMG features were explored to inform on muscle fatigue during this interaction. Comparing EMG during the first and last dumbbell of each phase demonstrated that the muscle fatigue had caused an increase in the average power (94% of cases) and amplitude (91%) and a decrease in the mean (80%) and the median frequency (57%) of EMG, which was more noticeable in Biceps. The results from integrated EMG showed a continuous rise in all three muscles which was more pronounced in Biceps muscle. Given these results, we identify EMG average power as the most reliable feature for informing on muscle fatigue.
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不同肌电特征对疲劳的研究
由于重复训练,上肢损伤患者的康复训练有可能改善他们的神经可塑性。我们的研究探讨了脑电图和肌电图(EMG)信号在人机交互回路中的作用。招募了20名健康的参与者,他们完成了一系列的体力和认知任务,这些任务中有固有的疲劳成分。在这里,我们报告观察到的对肌电信号的影响。参与者使用合适的哑铃分三个阶段重复二头肌弯曲。在第一阶段,设置初始权重以实现最大自主收缩(MVC)。第二阶段是80%的MVC,第三阶段是60%的MVC。每个阶段结束后,他们有大约3分钟的休息时间。肌电图数据取自肱二头肌、肱三头肌和肱桡肌。在这种相互作用中,研究人员探索了不同的肌电图特征,以了解肌肉疲劳情况。比较各组哑铃第一个阶段和最后一个阶段的肌电图,发现肌肉疲劳导致肌电图平均功率(94%)和振幅(91%)增加,平均频率(80%)和中位数频率(57%)下降,其中二头肌肌电图下降更为明显。综合肌电图的结果显示,所有三块肌肉都持续上升,其中二头肌更明显。鉴于这些结果,我们确定肌电图平均功率是告知肌肉疲劳的最可靠特征。
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