EMG知情神经肌肉骨骼建模估计电刺激过程中的肌肉力和关节力矩。

Matthew J Hambly, Ana Carolina C De Sousa, David G Lloyd, Claudio Pizzolato
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引用次数: 0

摘要

本研究实施了一种基于肌电图(EMG)的神经肌肉骨骼(NMS)模型,评估功能性电刺激(FES)过程中意志对肌肉力量和关节力矩的贡献。NMS模型使用运动和EMG(肱二头肌和肱三头肌)数据进行校准,这些数据记录自在配备EMG控制的闭环FES系统的情况下进行加权肘部屈伸循环运动的健全参与者(n=3)。使用三种计算方法执行模型:(i)EMG驱动,(ii)EMG混合和(iii)EMG辅助估计肌肉力量和关节力矩。EMG混合模式和EMG辅助模式都能够估计肘部力矩(均方根误差和决定系数),但EMG混合方法也能够量化FES期间对肌肉力量和肘部力矩的意志贡献。所提出的建模方法可以评估患者在FES康复过程中对肌肉力量的意志贡献,并可以用作恢复、生物反馈的生物标志物,以及FES和机器人系统的实时控制。
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EMG-Informed Neuromusculoskeletal Modelling Estimates Muscle Forces and Joint Moments During Electrical Stimulation.

This study implemented an electromyogram (EMG)-informed neuromusculoskeletal (NMS) model evaluating the volitional contributions to muscle forces and joint moments during functional electrical stimulation (FES). The NMS model was calibrated using motion and EMG (biceps brachii and triceps brachii) data recorded from able-bodied participants (n=3) performing weighted elbow flexion and extension cycling movements while equipped with an EMG-controlled closed-loop FES system. Models were executed using three computational approaches (i) EMG-driven, (ii) EMG-hybrid and (iii) EMG-assisted to estimate muscle forces and joint moments. Both EMG-hybrid and EMG-assisted modes were able estimate the elbow moment (root mean squared error and coefficient of determination), but the EMG-hybrid method also enabled quantifying the volitional contributions to muscle forces and elbow moments during FES. The proposed modelling method allows for assessing volitional contributions of patients to muscle force during FES rehabilitation, and could be used as biomarkers of recovery, biofeedback, and for real-time control of combined FES and robotic systems.

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