Li Jianmin, Yue Shizhuo, Pan Lizhi
IEEE Trans Neural Syst Rehabil Eng. 2023;31:3999-4007. doi: 10.1109/TNSRE.2023.3323347. Epub 2023 Oct 18.
Human-machine interfaces (HMIs) based on electromyography (EMG) signals have been developed for simultaneous and proportional control (SPC) of multiple degrees of freedom (DoFs). The EMG-driven musculoskeletal model (MM) has been used in HMIs to predict human movements in prosthetic and robotic control. However, the neural information extracted from surface EMG signals may be distorted due to their limitations. With the development of high density (HD) EMG decomposition, accurate neural drive signals can be extracted from surface EMG signals. In this study, a neural-driven MM was proposed to predict metacarpophalangeal (MCP) joint flexion/extension and wrist joint flexion/extension. Ten non-disabled subjects (male) were recruited and tested. Four 64-channel electrode grids were attached to four forearm muscles of each subject to record the HD EMG signals. The joint angles were recorded synchronously. The acquired HD EMG signals were decomposed to extract the motor unit (MU) discharge for estimating the neural drive, which was then used as the input to the MM to calculate the muscle activation and predict the joint movements. The Pearson's correlation coefficient (r) and the normalized root mean square error (NRMSE) between the predicted joint angles and the measured joint angles were calculated to quantify the estimation performance. Compared to the EMG-driven MM, the neural-driven MM attained higher r values and lower NRMSE values. Although the results were limited to an offline application and to a limited number of DoFs, they indicated that the neural-driven MM outperforms the EMG-driven MM in prediction accuracy and robustness. The proposed neural-driven MM for HMI can obtain more accurate neural commands and may have great potential for medical rehabilitation and robot control.
基于肌电图(EMG)信号的人机接口(HMI)已被开发用于多自由度(DoF)的同步和比例控制(SPC)。EMG驱动的肌肉骨骼模型(MM)已被用于HMI中,以预测假肢和机器人控制中的人体运动。然而,从表面EMG信号中提取的神经信息可能因其局限性而失真。随着高密度(HD)EMG分解技术的发展,可以从表面EMG信号中提取准确的神经驱动信号。在本研究中,提出了一种神经驱动的MM来预测掌指(MCP)关节的屈伸和腕关节的屈伸。招募并测试了10名非残疾男性受试者。将四个64通道电极网格附着在每个受试者的四块前臂肌肉上,以记录HD EMG信号。同时记录关节角度。对采集到的HD EMG信号进行分解,提取运动单元(MU)放电以估计神经驱动,然后将其作为MM的输入来计算肌肉激活并预测关节运动。计算预测关节角度与测量关节角度之间的皮尔逊相关系数(r)和归一化均方根误差(NRMSE),以量化估计性能。与EMG驱动的MM相比,神经驱动的MM获得了更高的r值和更低的NRMSE值。尽管结果仅限于离线应用和有限数量的自由度,但它们表明神经驱动的MM在预测准确性和鲁棒性方面优于EMG驱动的MM。所提出的用于HMI的神经驱动MM可以获得更准确的神经指令,并且在医学康复和机器人控制方面可能具有巨大潜力。