Feasibility of Two Different EMG-Based Pattern Recognition Control Paradigms to Control a Robot After Stroke - Case Study.

Joseph V Kopke, Michael D Ellis, Levi J Hargrove
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Abstract

Stroke often results in chronic motor impairment of the upper-extremity yet neither traditional- nor robotics-based therapy has been able to affect this in a profound way. Supporting the weak affected shoulder against gravity improves reaching distance and minimizes abnormal co-contraction of the elbow, wrist, and fingers after stroke. However, it is necessary to assess the feasibility and efficacy of real-time controllers for this population as technology advances and a wearable shoulder device comes closer to reality. The aim of this study is to test two EMG-based controllers in this regard. A linear discriminant analysis based classifier was trained using extracted time domain and auto-regressive features from electromyographic data acquired during muscle effort required to move a load equivalent to 50 and 100% limb weight (abduction) and 150 and 200% limb weight (adduction). While rigidly connected to a custom lab-based robot, the participant was required to complete a series of lift and reach tasks under two different control paradigms: position-based control and force-based control. The participant successfully controlled the robot under both paradigms as indicated by first moving the robot arm into the proper vertical window and then reaching out as far as possible while remaining within the vertical window. This case study begins to assess the feasibility of using electromyographic data to classify the intended shoulder movement of a participant with stroke during a functional lift and reach type task. Next steps will assess how this type of support affects reaching function.

两种不同的基于肌电图的模式识别控制模式在机器人中风后控制中的可行性-案例研究。
中风通常会导致上肢的慢性运动损伤,但无论是传统的还是基于机器人的治疗都不能深刻地影响这一点。在重力作用下支撑虚弱的受影响的肩膀可以提高到达距离,并减少中风后肘部、手腕和手指的异常共同收缩。然而,随着技术的进步和可穿戴肩扛设备越来越接近现实,有必要评估实时控制器对这一人群的可行性和有效性。本研究的目的是在这方面测试两种基于肌电图的控制器。在移动相当于50%和100%肢体重量(外展)和150和200%肢体重量(内收)的负荷所需的肌肉努力期间,使用从肌电图数据中提取的时域和自回归特征来训练基于线性判别分析的分类器。参与者被要求在两种不同的控制模式下完成一系列的升降和伸展任务:基于位置的控制和基于力的控制。参与者在两种范式下都成功地控制了机器人,首先将机器人手臂移动到适当的垂直窗口,然后在保持在垂直窗口内的情况下尽可能地伸出。本案例研究开始评估使用肌电图数据对卒中参与者在功能提升和伸展任务中预期的肩部运动进行分类的可行性。接下来的步骤将评估这种类型的支持如何影响到达功能。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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