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Sensitivity and stability analysis of sEMG indices in evaluating muscle fatigue of Rectus Femoris caused by all-out cycling exercise

机译:sEMG指数在评估全骑自行车运动引起的直肌直肌疲劳中的敏感性和稳定性分析

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Objective: This experiment was designed to explore the optimum surface Electromyography (sEMG) indices in evaluating muscle fatigue of Rectus Femoris (RF) caused by all-out cycling exercise. Methods: eight professional cyclists participated in this study. Each subject performed 60-second all-out cycling exercise for one time and the sEMG of RF was recorded during the process. The braking torque imposed on cycling motion was 8% of each subject's weight. Combined with time-domain, flourier transform, wavelet packet transformation and nonlinear analysis method, RMS, MPF, MNF and nonlinear Lempel-Ziv complexity C(n) were calculated. Sensitivity and stability of each index in evaluating muscle fatigue of RF caused by all-out cycling exercise was compared and analyzed. Results: MPF?MNF and C(n) all decreased during muscle fatigue, having significant negative correlations with cycling exercise endurance time and significant positive correlations with pedaling rate and power output. MNF was found to have the highest fatigue sensitivity while RMS had the lowest fatigue sensitivity. The sensitivity of MPF and C(n) had no significant difference. As refer to stability, C(n) was the optimum index and MNF the second, followed by MPF and RMS. Conclusions: During all-out cycling exercise process, RF did vigorous dynamic contraction, making sEMG collected from the surface of RF nonlinear and non-stationary. The index of MNF based on wavelet packet transformation and the index of Lempel-Ziv complexity C(n) based on nonlinear analysis demonstrated high utility, suggesting the potential application of these methods as fatigue indices in evaluating muscle fatigue caused by all-out cycling exercise.
机译:目的:本实验旨在探索最佳表面肌电图(sEMG)指数,以评估由全力骑自行车运动引起的直肌(RF)的肌肉疲劳。方法:八名专业自行车手参加了这项研究。每个受试者进行一次60秒钟的全力以赴的自行车运动,并在此过程中记录RF的sEMG。施加于自行车运动的制动扭矩为每个受试者体重的8%。结合时域,傅立叶变换,小波包变换和非线性分析方法,计算出RMS,MPF,MNF和非线性Lempel-Ziv复杂度C(n)。比较和分析了在评估由全面自行车运动引起的RF肌肉疲劳中每个指标的敏感性和稳定性。结果:MPF,MNF和C(n)在肌肉疲劳过程中均下降,与自行车运动耐力时间呈显着负相关,与踩踏速度和功率输出呈显着正相关。发现MNF具有最高的疲劳敏感性,而RMS具有最低的疲劳敏感性。 MPF和C(n)的敏感性没有显着差异。至于稳定性,C(n)是最佳指数,MNF是第二个指数,其次是MPF和RMS。结论:在全面的自行车运动过程中,RF进行了剧烈的动态收缩,从而使sEMG从RF的表面呈非线性且不稳定。基于小波包变换的MNF指数和基于非线性分析的Lempel-Ziv复杂度C(n)指数显示出很高的实用性,表明这些方法作为疲劳指数在评估全面自行车运动引起的肌肉疲劳中的潜在应用。

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