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Current source density estimates improve the discriminability of scalp-level brain connectivity features related to motor-imagery tasks

机译:当前的源密度估计值改善了与运动图像任务相关的头皮级大脑连接功能的可分辨性

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Recent progress in the number of studies involving brain connectivity analysis of motor imagery (MI) tasks for brain-computer interface (BCI) systems has warranted the need for pre-processing methods. The objective of this study is to evaluate the impact of current source density (CSD) estimation from raw electroencephalogram (EEG) signals on the classification performance of scalp level brain connectivity feature based MI-BCI. In particular, time-domain partial Granger causality (PGC) method was implemented on the raw EEG signals and CSD signals of a publicly available dataset for the estimation of brain connectivity features. Moreover, pairwise binary classifications of four different MI tasks were performed in inter-session and intra-session conditions using a support vector machine classifier. The results showed that CSD provided a statistically significant increase of the AUC: 20.28% in the inter-session condition; 12.54% and 13.92% with session 01 and session 02, respectively, in the intra-session condition. These results show that pre-processing of EEG signals is crucial for single-trial connectivity features based MI-BCI systems and CSD can enhance their overall performance.
机译:涉及脑机接口(BCI)系统的运动图像(MI)任务的大脑连通性分析的研究数量的最新进展,保证了需要预处理方法。这项研究的目的是评估从原始脑电图(EEG)信号得出的电流源密度(CSD)估计值对基于MI-BCI的头皮水平大脑连接功能分类性能的影响。尤其是,对公开可用数据集的原始EEG信号和CSD信号实施了时域部分Granger因果关系(PGC)方法,以评估大脑的连通性特征。此外,使用支持向量机分类器在会话间和会话内条件下执行了四个不同MI任务的成对二进制分类。结果表明,CSD提供了AUC的统计学显着增加:在会话间条件下,AUC增加了20.28%;在会话内条件下,会话01和会话02分别为12.54%和13.92%。这些结果表明,脑电信号的预处理对于基于MI-BCI系统的单次试验连接功能至关重要,而CSD可以增强其整体性能。

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