Xu Rui, Zhao Xinyu, Wang Ziyao, Zhang Hengyu, Meng Lin, Ming Dong
Laboratory of Motor Rehabilitation, Academy of Medical Engineering and Translational Medicine, Tianjin University, Tianjin, China.
College of Precision Instruments and Optoelectronics Engineering, Tianjin University, Tianjin, China.
Front Neurosci. 2022 Jul 8;16:909602. doi: 10.3389/fnins.2022.909602. eCollection 2022.
Functional electrical stimulation (FES) is widely used in neurorehabilitation to improve patients' motion ability. It has been verified to promote neural remodeling and relearning, during which FES has to produce an accurate movement to obtain a good efficacy. Therefore, many studies have focused on the relationship between FES parameters and the generated movements. However, most of the relationships have been established in static contractions, which leads to an unsatisfactory result when applied to dynamic conditions. Therefore, this study proposed a FES control strategy based on the surface electromyography (sEMG) and kinematic information during dynamic contractions. The pulse width (PW) of FES was determined by a direct transfer function (DTF) with sEMG features and joint angles as the input. The DTF was established by combing the polynomial transfer functions of sEMG and joint torque and the polynomial transfer functions of joint torque and FES. Moreover, the PW of two FES channels was set based on the muscle synergy ratio obtained through sEMG. A total of six healthy right-handed subjects were recruited in this experiment to verify the validity of the strategy. The PW of FES applied to the left arm was evaluated based on the sEMG of the right extensor carpi radialis (ECR) and the right wrist angle. The coefficient of determination ( ) and the normalized root mean square error (NRMSE) of FES-included and voluntary wrist angles and torques were used to verify the performance of the strategy. The result showed that this study achieved a high accuracy ( = 0.965 and NRMSE = 0.047) of joint angle and a good accuracy ( = 0.701 and NRMSE = 0.241) of joint torque reproduction during dynamic movements. Moreover, the DTF in real-time FES system also had a nice performance of joint angle fitting ( = 0.940 and NRMSE = 0.071) and joint torque fitting ( = 0.607 and NRMSE = 0.303). It is concluded that the proposed strategy is able to generate proper FES parameters based on sEMG and kinematic information for dynamic movement reproduction and can be used in a real-time FES system combined with bilateral movements for better rehabilitation.
功能性电刺激(FES)在神经康复中被广泛应用,以提高患者的运动能力。它已被证实能促进神经重塑和重新学习,在此过程中FES必须产生精确的运动才能获得良好的疗效。因此,许多研究都聚焦于FES参数与所产生运动之间的关系。然而,大多数此类关系是在静态收缩中建立的,当应用于动态条件时,结果并不理想。因此,本研究提出了一种基于动态收缩期间表面肌电图(sEMG)和运动学信息的FES控制策略。FES的脉冲宽度(PW)由一个直接传递函数(DTF)确定,该函数以sEMG特征和关节角度作为输入。DTF是通过将sEMG与关节扭矩的多项式传递函数以及关节扭矩与FES的多项式传递函数相结合而建立的。此外,基于通过sEMG获得的肌肉协同比率设置两个FES通道的PW。本实验共招募了六名健康的右利手受试者,以验证该策略的有效性。基于右侧桡侧腕伸肌(ECR)的sEMG和右手腕角度评估施加于左臂的FES的PW。使用包含FES和自主的手腕角度及扭矩的决定系数( )和归一化均方根误差(NRMSE)来验证该策略的性能。结果表明,本研究在动态运动期间实现了关节角度的高精度( = 0.965,NRMSE = 0.047)和关节扭矩再现的良好精度( = 0.701,NRMSE = 0.241)。此外,实时FES系统中的DTF在关节角度拟合( = 0.940,NRMSE = 0.071)和关节扭矩拟合( = 0.607,NRMSE = 0.303)方面也具有良好的性能。结论是,所提出的策略能够基于sEMG和运动学信息生成适当的FES参数,用于动态运动再现,并且可用于结合双侧运动的实时FES系统以实现更好的康复。