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Classifying ECoG signals prior to voluntary movement onset

机译:在自愿运动开始之前分类ECOG信号

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Recently, in brain-computer interface (BCI) researches, earlier neural signals have allowed researchers to reduce the time gap between a subject's real action and the BCI response. The aims of this study were to use pre-movement signals to predict motor tasks, and to decide whether the prefrontal area, which has been recognized as generating premovement signals that reflect motor intention or preparation, generates useful pre-movement signals. Six patients with intractable epilepsy participated in this study and performed self-paced hand grasping and elbow flexion while electrocortico-graphy (ECoG) was recorded. The electrodes that showed clear power differences in a specific frequency band between two different movements were chosen at a preparatory stage (−2.0 s to 0 s). The average value of the squared power of the signal sample was extracted for the feature. A support vector machine (SVM) was used as a classifier. A total of twelve electrodes differentiating hand grasping and elbow flexion were selected. Four electrodes were placed on the prefrontal area. The average prediction rate was 74% (range, 55.4 to 99.3%) across the six subjects. The successful prediction of movement intention indicates that the prefrontal area may generate useful premovement signals and implies that our approach could produce BCI response faster than a subject's real actions.
机译:最近,在脑电脑界面(BCI)研究中,早期的神经信号允许研究人员减少受试者的真实行动和BCI响应之间的时间差距。该研究的目的是使用预移动信号来预测电动机任务,并决定是否被识别为产生反映电机意图或准备的预先平移信号的前额区域产生有用的预移动信号。六名患有顽固性癫痫的患者参加了这项研究,并在录制了电焦 - 图(ECOG)时进行了自姿态手工抓握和肘部屈曲。在预备阶段(− 2.0 s至0 s),选择显示在两个不同运动之间的特定频带的透明功率差的电极。提取特征的信号样品的平方功率的平均值。支持向量机(SVM)用作分类器。选择了12个电极,分化了手动抓握和弯头屈曲。将四个电极放在前平面区域上。六个受试者的平均预测率为74%(范围,55.4至99.3%)。移动意图的成功预测表明,前额区域可能产生有用的预热信号,并意味着我们的方法可以比受试者的实际操作更快地产生BCI响应。

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