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A study of models for handgrip force prediction from surface electromyography of extensor muscle

机译:基于伸肌表面肌电图预测握力的模型研究

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摘要

Force production involves the coordination of multiple muscles, and the produced force levels can be attributed to the electrophysiology activities of those related muscles. This study is designed to explore the activity modes of extensor carpi radialis longus (ECRL) using surface electromyography (sEMG) at the presence of different handgrip force levels. We attempt to compare the performance of both the linear and nonlinear models for estimating handgrip forces. To achieve this goal, a pseudo-random sequence of handgrip tasks with well controlled force ranges is defined for calibration. Eight subjects (all university students, five males, and three females) have been recruited to conduct both calibration and voluntary trials. In each trial, sEMG signals have been acquired and preprocessed with RootMeanSquare (RMS) method. The preprocessed signals are then normalized with amplitude value of Maximum Voluntary Contraction (MVC)-related sEMG. With the sEMG data from calibration trials, three models, Linear, Power, and Logarithmic, are developed to correlate the handgrip force output with the sEMG activities of ECRL. These three models are subsequently employed to estimate the handgrip force production of voluntary trials. For different models, the RootMeanSquareErrors (RMSEs) of the estimated force output for all the voluntary trials are statistically compared in different force ranges. The results show that the three models have different performance in different force ranges. Linear model is suitable for moderate force level (30%50% MVC), whereas a nonlinear model is more accurate in the weak force level (Power model, 10%30% MVC) or the strong force level (Logarithmic model, 50%80% MVC).
机译:力量的产生涉及多条肌肉的协调,而产生的力量水平可以归因于那些相关肌肉的电生理活动。本研究旨在在存在不同握力水平的情况下,使用表面肌电图(sEMG)探索radial肌腕伸肌(ECRL)的活动模式。我们尝试比较线性模型和非线性模型的性能,以估计把手力。为了实现此目标,定义了具有良好控制力范围的伪随机序列的手柄任务以进行校准。招募了八名受试者(所有大学生,五名男性和三名女性)进行校准和自愿试验。在每个试验中,均已获取sEMG信号并使用RootMeanSquare(RMS)方法进行了预处理。然后使用与最大自愿收缩(MVC)相关的sEMG的幅度值对预处理的信号进行归一化。利用来自校准试验的sEMG数据,开发了线性,功率和对数三种模型,以将手握力输出与ECRL的sEMG活动相关联。随后使用这三个模型来估计自愿试验的握力。对于不同的模型,所有自愿试验的估计力输出的RootMeanSquareErrors(RMSE)在不同的力范围内进行统计比较。结果表明,这三种模型在不同的力范围内具有不同的性能。线性模型适合中等力水平(30%50%MVC),而非线性模型在弱力水平(Power模型,10%30%MVC)或强力水平(对数模型,50%80)更准确%MVC)。

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