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Predicting Blood Lactate Concentration and Oxygen Uptake from sEMG Data during Fatiguing Cycling Exercise

机译:从疲劳自行车运动中的sEMG数据预测血乳酸浓度和摄氧量

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摘要

This article presents a study of the relationship between electromyographic (EMG) signals from vastus lateralis, rectus femoris, biceps femoris and semitendinosus muscles, collected during fatiguing cycling exercises, and other physiological measurements, such as blood lactate concentration and oxygen consumption. In contrast to the usual practice of picking one particular characteristic of the signal, e.g., the median or mean frequency, multiple variables were used to obtain a thorough characterization of EMG signals in the spectral domain. Based on these variables, linear and non-linear (random forest) models were built to predict blood lactate concentration and oxygen consumption. The results showed that mean and median frequencies are sub-optimal choices for predicting these physiological quantities in dynamic exercises, as they did not exhibit significant changes over the course of our protocol and only weakly correlated with blood lactate concentration or oxygen uptake. Instead, the root mean square of the original signal and backward difference, as well as parameters describing the tails of the EMG power distribution were the most important variables for these models. Coefficients of determination ranging from R2 = 0.77 to R2 = 0.98 (for blood lactate) and from R2 = 0.81 to R2 = 0.97 (for oxygen uptake) were obtained when using random forest regressors.
机译:本文介绍了在疲劳的自行车运动中收集的来自股外侧肌,股直肌,股二头肌和半腱肌的肌电图(EMG)信号与其他生理测量(例如血液中的乳酸浓度和氧气消耗)之间的关系的研究。与选择信号的一个特定特征(例如中值或平均频率)的常规做法相反,使用多个变量在频谱域中获得对EMG信号的全面表征。基于这些变量,建立了线性和非线性(随机森林)模型来预测血液中的乳酸浓度和耗氧量。结果表明,在动态锻炼中,平均频率和中位数频率是预测这些生理量的次佳选择,因为它们在我们的操作过程中没有表现出明显的变化,并且仅与血液中的乳酸浓度或摄氧量弱相关。相反,原始信号的均方根和后向差异以及描述EMG功率分布尾部的参数是这些模型最重要的变量。测定系数范围为R 2 = 0.77至R 2 = 0.98(对于血乳酸)和R 2 = 0.81至R 2 = 0.97(用于氧气吸收)。

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