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Analyzing the influence of curl speed in fatiguing biceps brachii muscles using sEMG signals and multifractal detrended moving average algorithm

机译:使用sEMG信号和多重分形趋势移动平均算法分析卷曲速度对肱二头肌疲劳的影响

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In this work, an attempt has been made to analyze surface electromyography (sEMG) signals of fatiguing biceps brachii muscles at different curl speeds using multifractal detrended moving average (MFDMA) algorithm. For this purpose, signals are recorded from fifty eight healthy subjects while performing curl exercise at their comfortable speed until fatigue. The signals of first and last curls are considered as nonfatigue and fatigue conditions, respectively. Further, the number of curls performed by each subject and the endurance time is used for computing the normalized curl speed. The signals are grouped into fast, medium and slow using curl speeds. The curl segments are subjected to MFDMA to derive degree of multifractality (DOM), maximum singularity exponent (MXE) and exponent length multifractality index (EMX). The results show that multifractal features are able to differentiate sEMG signals in fatiguing conditions. The multifractality increased with faster curls as compared with slower curl speed by 12%. High statistical significance is observed using EMX and DOM values between curl speed and fatigue conditions. It appears that this method of analyzing sEMG signals with curl speed can be useful in understanding muscle dynamics in varied neuromuscular conditions and sports medicine.
机译:在这项工作中,已尝试使用多重分形趋势移动平均(MFDMA)算法分析不同卷曲速度下的肱二头肌肌肉疲劳的表面肌电图(sEMG)信号。为此目的,记录了来自五十八名健康受试者的信号,同时以他们舒适的速度进行卷曲运动直至疲劳。第一次卷曲和最后一次卷曲的信号分别被认为是非疲劳和疲劳状态。此外,由每个对象执行的卷曲次数和耐久时间用于计算归一化的卷曲速度。使用卷曲速度将信号分为快速,中速和慢速。对卷曲段进行MFDMA,以得出多重分数度(DOM),最大奇异指数(MXE)和指数长度多重分数指数(EMX)。结果表明,多重分形特征能够在疲劳条件下区分sEMG信号。与较慢的卷曲速度相比,卷曲更快的多重分数增加了12%。使用卷曲速度和疲劳条件之间的EMX和DOM值可以观察到很高的统计意义。看来,这种以卷曲速度分析sEMG信号的方法可能有助于理解各种神经肌肉状况和运动医学中的肌肉动力学。

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