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首页> 外文期刊>Biomedical Engineering, IEEE Transactions on >High-Density Myoelectric Pattern Recognition Toward Improved Stroke Rehabilitation
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High-Density Myoelectric Pattern Recognition Toward Improved Stroke Rehabilitation

机译:改善卒中康复的高密度肌电模式识别

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Myoelectric pattern-recognition techniques have been developed to infer user''s intention of performing different functional movements. Thus electromyogram (EMG) can be used as control signals of assisted devices for people with disabilities. Pattern-recognition-based myoelectric control systems have rarely been designed for stroke survivors. Aiming at developing such a system for improved stroke rehabilitation, this study assessed detection of the affected limb''s movement intention using high-density surface EMG recording and pattern-recognition techniques. Surface EMG signals comprised of 89 channels were recorded from 12 hemiparetic stroke subjects while they tried to perform 20 different arm, hand, and finger/thumb movements involving the affected limb. A series of pattern-recognition algorithms were implemented to identify the intended tasks of each stroke subject. High classification accuracies (96.1% ± 4.3%) were achieved, indicating that substantial motor control information can be extracted from paretic muscles of stroke survivors. Such information may potentially facilitate improved stroke rehabilitation.
机译:肌电模式识别技术已被开发出来,以推断用户执行不同功能运动的意图。因此,肌电图(EMG)可用作残疾人辅助设备的控制信号。基于模式识别的肌电控制系统很少为中风幸存者设计。为了开发一种改善卒中康复的系统,本研究使用高密度表面肌电图记录和模式识别技术评估了患肢运动意图的检测。 12名偏瘫中风受试者记录了由89个通道组成的表面EMG信号,而他们试图对受影响的肢体进行20种不同的手臂,手和手指/拇指运动。实施了一系列模式识别算法,以识别每个中风受试者的预期任务。达到了较高的分类精度(96.1%±4.3%),表明可以从卒中幸存者的腹壁肌肉中提取大量的运动控制信息。这样的信息可能潜在地促进中风康复。

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