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EMG-Based Continuous and Simultaneous Estimation of Arm Kinematics in Able-Bodied Individuals and Stroke Survivors

机译:基于EMG的健壮个体和中风幸存者手臂运动学的连续和同时估计

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摘要

Among the potential biological signals for human-machine interactions (brain, nerve, and muscle signals), electromyography (EMG) widely used in clinical setting can be obtained non-invasively as motor commands to control movements. The aim of this study was to develop a model for continuous and simultaneous decoding of multi-joint dynamic arm movements based on multi-channel surface EMG signals crossing the joints, leading to application of myoelectrically controlled exoskeleton robots for upper-limb rehabilitation. Twenty subjects were recruited for this study including 10 stroke subjects and 10 able-bodied subjects. The subjects performed free arm reaching movements in the horizontal plane with an exoskeleton robot. The shoulder, elbow and wrist movements and surface EMG signals from six muscles crossing the three joints were recorded. A non-linear autoregressive exogenous (NARX) model was developed to continuously decode the shoulder, elbow and wrist movements based solely on the EMG signals. The shoulder, elbow and wrist movements were decoded accurately based only on the EMG inputs in all the subjects, with the variance accounted for (VAF) > 98% for all three joints. The proposed approach is capable of simultaneously and continuously decoding multi-joint movements of the human arm by taking into account the non-linear mappings between the muscle EMGs and joint movements, which may provide less effortful control of robotic exoskeletons for rehabilitation training of individuals with neurological disorders and arm impairment.
机译:在人机交互的潜在生物信号(大脑,神经和肌肉信号)中,可以无创地获取临床环境中广泛使用的肌电图(EMG)作为控制运动的运动命令。这项研究的目的是开发一个模型,该模型基于跨关节的多通道表面EMG信号来连续和同时解码多关节动态手臂运动,从而导致将肌电控制的外骨骼机器人应用于上肢康复。该研究招募了20名受试者,其中包括10名中风受试者和10名健康受试者。受试者使用外骨骼机器人在水平面内自由伸臂。记录了肩部,肘部和腕部的运动以及来自穿过三个关节的六块肌肉的表面肌电信号。开发了非线性自回归外生(NARX)模型,以仅基于EMG信号连续解码肩膀,肘部和腕部的运动。仅根据所有受试者的肌电图输入准确地解码了肩部,肘部和腕部的运动,所有三个关节的方差占(VAF)> 98%。通过考虑肌肉肌电图和关节运动之间的非线性映射,所提出的方法能够同时连续地解码人手臂的多关节运动,这可以减少对机器人外骨骼的费力控制,从而对患有以下疾病的个体进行康复训练神经系统疾病和手臂损伤。

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