Ibitoye Morufu Olusola, Hamzaid Nur Azah, Abdul Wahab Ahmad Khairi, Hasnan Nazirah, Olatunji Sunday Olusanya, Davis Glen M
Department of Biomedical Engineering, Faculty of Engineering, University of Malaya, Kuala Lumpur 50603, Malaysia.
Department of Biomedical Engineering, Faculty of Engineering and Technology, University of Ilorin, P.M.B 1515, Ilorin 24003, Kwara State, Nigeria.
Sensors (Basel). 2016 Jul 19;16(7):1115. doi: 10.3390/s16071115.
The difficulty of real-time muscle force or joint torque estimation during neuromuscular electrical stimulation (NMES) in physical therapy and exercise science has motivated recent research interest in torque estimation from other muscle characteristics. This study investigated the accuracy of a computational intelligence technique for estimating NMES-evoked knee extension torque based on the Mechanomyographic signals (MMG) of contracting muscles that were recorded from eight healthy males. Simulation of the knee torque was modelled via Support Vector Regression (SVR) due to its good generalization ability in related fields. Inputs to the proposed model were MMG amplitude characteristics, the level of electrical stimulation or contraction intensity, and knee angle. Gaussian kernel function, as well as its optimal parameters were identified with the best performance measure and were applied as the SVR kernel function to build an effective knee torque estimation model. To train and test the model, the data were partitioned into training (70%) and testing (30%) subsets, respectively. The SVR estimation accuracy, based on the coefficient of determination (R²) between the actual and the estimated torque values was up to 94% and 89% during the training and testing cases, with root mean square errors (RMSE) of 9.48 and 12.95, respectively. The knee torque estimations obtained using SVR modelling agreed well with the experimental data from an isokinetic dynamometer. These findings support the realization of a closed-loop NMES system for functional tasks using MMG as the feedback signal source and an SVR algorithm for joint torque estimation.
在物理治疗和运动科学中,神经肌肉电刺激(NMES)期间实时估计肌肉力量或关节扭矩存在困难,这激发了近期对基于其他肌肉特征进行扭矩估计的研究兴趣。本研究调查了一种计算智能技术的准确性,该技术基于从八名健康男性身上记录的收缩肌肉的肌动图信号(MMG)来估计NMES诱发的膝关节伸展扭矩。由于支持向量回归(SVR)在相关领域具有良好的泛化能力,因此通过它对膝关节扭矩进行模拟建模。所提出模型的输入为MMG幅度特征、电刺激水平或收缩强度以及膝关节角度。通过最佳性能指标确定了高斯核函数及其最优参数,并将其用作SVR核函数来构建有效的膝关节扭矩估计模型。为了训练和测试该模型,数据分别被划分为训练子集(70%)和测试子集(30%)。基于实际扭矩值与估计扭矩值之间的决定系数(R²),SVR估计精度在训练和测试情况下分别高达94%和89%,均方根误差(RMSE)分别为9.48和12.95。使用SVR建模获得的膝关节扭矩估计值与等速测力计的实验数据吻合良好。这些发现支持了实现一个闭环NMES系统,该系统使用MMG作为反馈信号源,并采用SVR算法进行关节扭矩估计,以完成功能性任务。