Liu Jie, Li Xiaoyan, Marciniak Christina, Rymer William Zev, Zhou Ping
Sensory Motor Performance Program, Rehabilitation Institute of Chicago, Chicago, IL, US.
Int J Neural Syst. 2014 Nov;24(7):1450022. doi: 10.1142/S0129065714500221. Epub 2014 Sep 22.
This study investigates an electromyogram (EMG)-based neural interface toward hand rehabilitation for patients with cerebral palsy (CP). Forty-eight channels of surface EMG signals were recorded from the forearm of eight adult subjects with CP, while they tried to perform six different hand grasp patterns. A series of myoelectric pattern recognition analyses were performed to identify the movement intention of each subject with different EMG feature sets and classifiers. Our results indicate that across all subjects high accuracies (average overall classification accuracy > 98%) can be achieved in classification of six different hand movements, suggesting that there is substantial motor control information contained in paretic muscles of the CP subjects. Furthermore, with a feature selection analysis, it was found that a small number of ranked EMG features can maintain high classification accuracies comparable to those obtained using all the EMG features (average overall classification accuracy > 96% with 16 selected EMG features). The findings of the study suggest that myoelectric pattern recognition may be a useful control strategy for promoting hand rehabilitation in CP patients.
本研究针对脑瘫(CP)患者的手部康复,探究了一种基于肌电图(EMG)的神经接口。从八名成年CP患者的前臂记录了48通道的表面肌电信号,同时他们尝试执行六种不同的手部抓握模式。进行了一系列肌电模式识别分析,以使用不同的肌电特征集和分类器来识别每个受试者的运动意图。我们的结果表明,在所有受试者中,六种不同手部运动的分类均可实现高精度(平均总体分类准确率> 98%),这表明CP受试者的患侧肌肉中包含大量运动控制信息。此外,通过特征选择分析发现,少数排名靠前的肌电特征可以保持与使用所有肌电特征时相当的高分类准确率(16个选定肌电特征时平均总体分类准确率> 96%)。该研究结果表明,肌电模式识别可能是促进CP患者手部康复的一种有用控制策略。