基于极限学习机的下肢康复脑机接口脑电检测踏车任务

Cristian Felipe Blanco-Díaz, C. D. Guerrero-Méndez, T. Bastos-Filho, A. F. Ruiz-Olaya, S. Jaramillo-Isaza
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引用次数: 0

摘要

脑机接口(BCI)是一种通过大脑信息作为人与外部设备之间通信通道的系统。脑机接口使用脑电图(EEG)与机器人系统(如小型自行车)相结合,通过解码中风患者的动作并执行运动任务,使中风患者得以康复。然而,脑电信号的信噪比较低,且脑信息检测踏板存在主体间变异性,降低了康复装置的准确性。此外,在实时bci中,有必要保持良好的检测和执行时间比例。在这项工作中,提出了一种基于极限学习机(ELM)的方法,通过脑电图识别受试者何时执行踏板任务,该方法允许有效检测,最高准确率为0.85,假阳性率为0.07。此外,对滤波阶段的四个不同频段进行了评估,结果表明,3-7 Hz和7-13 Hz两个频段之间的判别信息最多,ROC曲线下面积平均值为0.71。结果表明,该方法适用于脑电蹬车任务的检测,可用于实时脑机接口的下肢康复控制。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Detection of Pedaling Tasks through EEG Using Extreme Learning Machine for Lower-Limb Rehabilitation Brain-Computer Interfaces
Brain-Computer Interfaces (BCI) are systems that may function as communication channels between people and external devices through brain information. BCIs using Electroencephalography (EEG) combined with robotic systems, such as minibikes, have enabled the rehabilitation of stroke patients by decoding their actions and executing a motor task. However, the Signal-to-Noise Ratio (SNR) of EEG is low, and there is intersubject variability for pedaling detection through brain information, which reduces the Accuracy of the rehabilitation devices. Additionally, in real-time BCIs, it is necessary to maintain a good ratio of detection and execution times. In this work, it is proposed a methodology based on an Extreme Learning Machine (ELM) to identify when the subject is executing pedaling tasks through EEG, which allows efficient detection with a maximum Accuracy of 0.85 and a False Positive Rate of 0.07. Additionally, four different frequency bands in the filtering stage were evaluated, and the results allowed concluding that the most discriminant information was available between two frequency bands: 3–7 Hz and 7–13 Hz, with an area under the ROC curve average of 0.71. The results indicate that the proposed method is suitable for the detection of pedaling tasks using EEG, which could be used for the control of a real-time BCI for lower-limb rehabilitation.
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