首页> 外文期刊>IEEE Transactions on Biomedical Engineering >EMG-Based Real-Time Linear-Nonlinear Cascade Regression Decoding of Shoulder, Elbow, and Wrist Movements in Able-Bodied Persons and Stroke Survivors
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EMG-Based Real-Time Linear-Nonlinear Cascade Regression Decoding of Shoulder, Elbow, and Wrist Movements in Able-Bodied Persons and Stroke Survivors

机译:基于EMG的实时线性 - 非线性级联回归肩部,肘部和手腕运动中的肩部和行程运动和中风幸存者

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摘要

Objective: This study aimed to decode shoulder, elbow and wrist dynamic movements continuously and simultaneously based on multi-channel surface electromyography signals, useful for electromyography controlled exoskeleton robots for upper-limb rehabilitation. Methods: Ten able-bodied subjects and ten stroke subjects were instructed to voluntarily move the shoulder, elbow and wrist joints back and forth in a horizontal plane with an exoskeleton robot. The shoulder, elbow and wrist movements and surface electromyography signals from six muscles crossing the joints were recorded. A set of three parallel linear-nonlinear cascade decoders was developed to continuously estimate the selected shoulder, elbow and wrist movements based on a generalized linear model using the anterior deltoid, posterior deltoid, biceps brachii, long head triceps brachii, flexor carpi radialis, and extensor carpi radialis muscle electromyography signals as the model inputs. Results: The decoder performed well for both healthy and stroke populations. As movement smoothness decreased, decoding performance decreased for the stroke population. Conclusion: The proposed method is capable of simultaneously and continuously estimating multi-joint movements of the human arm in real-time by characterizing the nonlinear mappings between muscle activity and kinematic signals based on linear regression. Significance: This may prove useful in developing myoelectric controlled exoskeletons for motor rehabilitation of neurological disorders.
机译:目的:本研究旨在连续地解码肩部,弯头和手腕动态运动,并同时基于多通道表面肌电图信号,可用于对肢体康复的电拍摄控制的外骨骼机器人。方法:指示十个能够体内的受试者和十个中风主体,以在带有外骨骼机器人的水平面中来回移动肩部,肘部和手腕接头。记录肩部,弯头和手腕运动和从接头交叉的六个肌肉的表面肌电学图像信号。开发了一组三个平行的线性 - 非线性级联解码器,以基于使用前三时三角形,后滴水,二头肌Brachii,长长的肱三头肌,屈肌Carpi Radialis,连续地估计所选择的肩部,肘部和手腕运动,基于通用的线性模型。伸肌Carpi Radialis肌肉电学信号作为模型输入。结果:解码器对健康和冲程群体进行了良好。随着移动平滑度降低,对笔划群体的解码性能降低。结论:该方法能够通过表征基于线性回归的肌肉活动和运动信号之间的非线性映射来同时和连续地估计人臂的多关节运动。意义:这可能证明在开发肌电控制外骨骼以进行神经疾病的电机康复。

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