School of Mechanical Aerospace & Systems Engineering Division of Mechanical Engineering, KAIST, Daejeon, Republic of Korea.
Med Biol Eng Comput. 2010 Nov;48(11):1149-57. doi: 10.1007/s11517-010-0641-y. Epub 2010 Jun 4.
Mechanomyography (MMG) is the muscle surface oscillations that are generated by the dimensional change of the contracting muscle fibers. Because MMG reflects the number of recruited motor units and their firing rates, just as electromyography (EMG) is influenced by these two factors, it can be used to estimate the force exerted by skeletal muscles. The aim of this study was to demonstrate the feasibility of MMG for estimating the elbow flexion force at the wrist under an isometric contraction by using an artificial neural network in comparison with EMG. We performed experiments with five subjects, and the force at the wrist and the MMG from the contributing muscles were recorded. It was found that MMG could be utilized to accurately estimate the isometric elbow flexion force based on the values of the normalized root mean square error (NRMSE = 0.131 ± 0.018) and the cross-correlation coefficient (CORR = 0.892 ± 0.033). Although MMG can be influenced by the physical milieu/morphology of the muscle and EMG performed better than MMG, these experimental results suggest that MMG has the potential to estimate muscle forces. These experimental results also demonstrated that MMG in combination with EMG resulted in better performance estimation in comparison with EMG or MMG alone, indicating that a combination of MMG and EMG signals could be used to provide complimentary information on muscle contraction.
肌电图(MMG)是由收缩肌纤维的尺寸变化产生的肌肉表面振动。由于 MMG 反映了募集的运动单位数量及其放电率,就像肌电图(EMG)受到这两个因素的影响一样,它可以用于估计骨骼肌的力。本研究的目的是通过人工神经网络比较肌电图(EMG),证明在等长收缩下,使用 MMG 估计腕部肘部弯曲力的可行性。我们对五名受试者进行了实验,并记录了腕部的力和来自参与肌肉的 MMG。结果发现,基于归一化均方根误差(NRMSE = 0.131 ± 0.018)和互相关系数(CORR = 0.892 ± 0.033)的值,MMG 可用于准确估计等长肘部弯曲力。尽管 MMG 可能会受到肌肉物理环境/形态的影响,并且 EMG 的表现优于 MMG,但这些实验结果表明 MMG 具有估计肌肉力量的潜力。这些实验结果还表明,与 EMG 或 MMG 单独使用相比,MMG 与 EMG 的组合可实现更好的性能估计,这表明 MMG 和 EMG 信号的组合可用于提供有关肌肉收缩的互补信息。