Time Domain Features of Multi-channel EMG Applied to Prediction of Physiological Parameters in Fatiguing Bicycling Exercises

Petras Razanskas, A. Verikas, Charlotte Olsson, Per-Arne Viberg
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Abstract

A set of novel time-domain features characterizing multi-channel surface EMG (sEMG) signals of six muscles (rectus femoris, vastus lateralis, and semitendinosus of each leg) is proposed for prediction of physiological parameters considered important in cycling: blood lactate concentration and oxygen uptake. Fifty one different features, including phase shifts between muscles, active time percentages, sEMG amplitudes, as well as symmetry measures between both legs, were defined from sEMG data and used to train linear and random forest models. The random forests models achieved the coefficient of determination R2 = 0:962 (lactate) and R2 = 0:980 (oxygen). The linear models were less accurate. Feature pruning applied enabled creating accurate random forest models (R2 >0:9) using as few as 7 (lactate) or 4 (oxygen) time-domain features. sEMG amplitude was important for both types of models. Models to predict lactate also relied on measurements describing interaction between front and back muscles, while models to predict oxygen uptake relied on front muscles only, but also included interactions between the two legs.
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多通道肌电时域特征在疲劳自行车运动生理参数预测中的应用
提出了一套新的时域特征来表征六块肌肉(股直肌、股外侧肌和每条腿的半腱肌)的多通道表面肌电信号,用于预测在循环中被认为重要的生理参数:血乳酸浓度和摄氧量。从肌电信号数据中定义了51个不同的特征,包括肌肉之间的相移、活动时间百分比、肌电信号振幅以及双腿之间的对称性,并用于训练线性和随机森林模型。随机森林模型的决定系数R2 = 0:962(乳酸)和R2 = 0:980(氧)。线性模型不太准确。特征修剪应用可以使用少至7(乳酸)或4(氧)时域特征创建准确的随机森林模型(R2 >0:9)。表面肌电信号振幅对两种模型都很重要。预测乳酸的模型也依赖于描述前后肌肉之间相互作用的测量,而预测摄氧量的模型只依赖于前部肌肉,但也包括两条腿之间的相互作用。
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