Kim Hyeonseok, Yoshimura Natsue, Koike Yasuharu
Department of Information and Communications Engineering, Tokyo Institute of Technology, Yokohama, Japan.
Institute of Innovative Research, Tokyo Institute of Technology, Yokohama, Japan.
Front Neurosci. 2019 Nov 1;13:1148. doi: 10.3389/fnins.2019.01148. eCollection 2019.
The utility of premovement electroencephalography (EEG) for decoding movement intention during a reaching task has been demonstrated. However, the kind of information the brain represents regarding the intended target during movement preparation remains unknown. In the present study, we investigated which movement parameters (i.e., direction, distance, and positions for reaching) can be decoded in premovement EEG decoding. Eight participants performed 30 types of reaching movements that consisted of 1 of 24 movement directions, 7 movement distances, 5 horizontal target positions, and 5 vertical target positions. Event-related spectral perturbations were extracted using independent components, some of which were selected via an analysis of variance for further binary classification analysis using a support vector machine. When each parameter was used for class labeling, all possible binary classifications were performed. Classification accuracies for direction and distance were significantly higher than chance level, although no significant differences were observed for position. For the classification in which each movement was considered as a different class, the parameters comprising two vectors representing each movement were analyzed. In this case, classification accuracies were high when differences in distance were high, the sum of distances was high, angular differences were large, and differences in the target positions were high. The findings further revealed that direction and distance may provide the largest contributions to movement. In addition, regardless of the parameter, useful features for classification are easily found over the parietal and occipital areas.
运动前脑电图(EEG)在解码伸手够物任务中的运动意图方面的效用已得到证实。然而,大脑在运动准备过程中关于预期目标所表征的信息种类仍然未知。在本研究中,我们调查了在运动前EEG解码中哪些运动参数(即伸手的方向、距离和位置)可以被解码。八名参与者进行了30种类型的伸手运动,这些运动由24个运动方向中的1个、7个运动距离、5个水平目标位置和5个垂直目标位置组成。使用独立成分提取事件相关频谱扰动,其中一些通过方差分析进行选择,以便使用支持向量机进行进一步的二元分类分析。当每个参数用于类别标记时,进行了所有可能的二元分类。方向和距离的分类准确率显著高于机遇水平,尽管位置方面未观察到显著差异。对于将每个运动视为不同类别的分类,分析了表示每个运动的两个向量组成的参数。在这种情况下,当距离差异大、距离总和高、角度差异大以及目标位置差异大时,分类准确率较高。研究结果进一步表明,方向和距离可能对运动贡献最大。此外,无论参数如何,在顶叶和枕叶区域很容易找到用于分类的有用特征。