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Advanced Myoelectric Control for Robotic Hand-Assisted Training: Outcome from a Stroke Patient

机译:用于机器人手辅助训练的高级肌电控制:中风患者的结果

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摘要

A hand exoskeleton driven by myoelectric pattern recognition was designed for stroke rehabilitation. It detects and recognizes the user’s motion intent based on electromyography (EMG) signals, and then helps the user to accomplish hand motions in real time. The hand exoskeleton can perform six kinds of motions, including the whole hand closing/opening, tripod pinch/opening, and the “gun” sign/opening. A 52-year-old woman, 8 months after stroke, made 20× 2-h visits over 10 weeks to participate in robot-assisted hand training. Though she was unable to move her fingers on her right hand before the training, EMG activities could be detected on her right forearm. In each visit, she took 4× 10-min robot-assisted training sessions, in which she repeated the aforementioned six motion patterns assisted by our intent-driven hand exoskeleton. After the training, her grip force increased from 1.5 to 2.7 kg, her pinch force increased from 1.5 to 2.5 kg, her score of Box and Block test increased from 3 to 7, her score of Fugl–Meyer (Part C) increased from 0 to 7, and her hand function increased from Stage 1 to Stage 2 in Chedoke–McMaster assessment. The results demonstrate the feasibility of robot-assisted training driven by myoelectric pattern recognition after stroke.
机译:由肌电模式识别驱动的手外骨骼设计用于中风康复。它根据肌电图(EMG)信号检测并识别用户的运动意图,然后帮助用户实时完成手部运动。手部外骨骼可以执行六种动作,包括整个手部的合拢/张开,三脚架捏合/张开以及“枪”号/张开。一名中风后8个月的52岁女性在10星期内进行了20次2小时访问,参加了机器人辅助的手部训练。尽管在训练之前她无法用右手移动手指,但可以在右前臂检测到EMG活动。在每次拜访中,她参加了4次10分钟的机器人辅助培训课程,在该培训课程中,她在意向驱动的手外骨骼的帮助下重复了上述六种运动模式。训练后,她的抓地力从1.5增加到2.7 kg,捏紧力从1.5增加到2.5 kg,Box和Block测试的分数从3增加到7,Fugl–Meyer(C部分)的分数从0增加到7,她的手功能在Chedoke–McMaster评估中从第一阶段增加到第二阶段。结果证明了卒中后肌电模式识别驱动的机器人辅助训练的可行性。

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