Control signal for a mechatronic hand orthosis aimed for neurorehabilitation

J. Cantillo-Negrete, R. Carino-Escobar, D. Elías-Viñas, J. Gutiérrez-Martínez
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引用次数: 9

Abstract

Individuals with stroke and other central nervous damage, which may cause paresis, are unable to move their affected limb or the movements are inefficient and clumsy. Brain-computer interfaces coupled with robotic assistive technologies such as robotic hand orthosis have the potential to provide rehabilitation strategies that promote brain plasticity for these patients. This paper presents the design of a control signal based on EEG signal processed using common spatial patterns and linear discriminant analysis to identify hand motor imagery. The control signal is implemented on a robotic hand orthosis so that it activates when a healthy subject performs motor imagery of her/his right hand, simulating an online signal acquisition. The mechatronic orthosis performance was always as indicated by the control signal, and the systems online performance for detecting motor imagery was of nearly 80% of correct classification. The system may be improved by using other classification algorithms however results show that it is ready to be tested with motor impaired patients.
用于神经康复的机电手部矫形器的控制信号
患有中风和其他中枢神经损伤的人可能会导致麻痹,他们无法移动受影响的肢体,或者运动效率低下、笨拙。脑机接口与机器人辅助技术(如机械手矫形器)相结合,有可能为这些患者提供促进大脑可塑性的康复策略。提出了一种基于常用空间模式和线性判别分析的脑电信号控制信号的设计方法,用于手部运动图像的识别。控制信号在机械手矫形器上实现,因此当健康受试者执行她/他的右手运动图像时,它会激活,模拟在线信号采集。机电矫形器的性能始终与控制信号一致,系统对运动图像的在线检测性能接近正确率的80%。该系统可以通过使用其他分类算法来改进,但结果表明,它已经准备好用于运动障碍患者的测试。
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