Engineering, Modeling and Applied Social Sciences Center (CECS), Federal University of ABC (UFABC), São Bernardo do Campo, SP, Brazil.
Brazilian Institute of Neuroscience and Neurotechnology (BRAINN), Campinas, SP, Brazil.
Med Biol Eng Comput. 2019 Aug;57(8):1709-1725. doi: 10.1007/s11517-019-01989-w. Epub 2019 May 25.
This work presents a classification performance comparison between different frameworks for functional connectivity evaluation and complex network feature extraction aiming to distinguish motor imagery classes in electroencephalography (EEG)-based brain-computer interfaces (BCIs). The analysis was performed in two online datasets: (1) a classical benchmark-the BCI competition IV dataset 2a-allowing a comparison with a representative set of strategies previously employed in this BCI paradigm and (2) a statistically representative dataset for signal processing technique comparisons over 52 subjects. Besides exploring three classical similarity measures-Pearson correlation, Spearman correlation, and mean phase coherence-this work also proposes a recurrence-based alternative for estimating EEG brain functional connectivity, which takes into account the recurrence density between pairwise electrodes over a time window. These strategies were followed by graph feature evaluation considering clustering coefficient, degree, betweenness centrality, and eigenvector centrality. The features were selected by Fisher's discriminating ratio and classification was performed by a least squares classifier in agreement with classical and online BCI processing strategies. The results revealed that the recurrence-based approach for functional connectivity evaluation was significantly better than the other frameworks, which is probably associated with the use of higher order statistics underlying the electrode joint probability estimation and a higher capability of capturing nonlinear inter-relations. There were no significant differences in performance among the evaluated graph features, but the eigenvector centrality was the best feature regarding processing time. Finally, the best ranked graph-based attributes were found in classical EEG motor cortex positions for the subjects with best performances, relating functional organization and motor activity. Graphical Abstract Evaluating functional connectivity based on Space-Time Recurrence Counting for motor imagery classification in brain-computer interfaces. Recurrences are evaluated between electrodes over a time window, and, after a density threshold, the electrodes adjacency matrix is stablish, leading to a graph. Graph-based topological measures are used for motor imagery classification.
这项工作比较了不同框架在功能连接评估和复杂网络特征提取方面的分类性能,旨在区分基于脑电图(EEG)的脑机接口(BCI)中的运动想象类别。分析在两个在线数据集上进行:(1)经典基准——BCI 竞赛 IV 数据集 2a-允许与之前在该 BCI 范例中使用的代表性策略集进行比较,以及(2)用于在 52 个受试者上进行信号处理技术比较的具有统计学代表性的数据集。除了探索三种经典相似性度量——皮尔逊相关系数、斯皮尔曼相关系数和平均相位相干性之外,本工作还提出了一种基于递归的替代方法来估计 EEG 脑功能连接性,该方法考虑了在时间窗口内电极之间的递归密度。这些策略之后是考虑聚类系数、度、介数中心度和特征向量中心度的图特征评估。特征由 Fisher 判别比选择,分类由最小二乘分类器执行,符合经典和在线 BCI 处理策略。结果表明,用于功能连接评估的递归方法明显优于其他框架,这可能与电极联合概率估计的高阶统计量的使用以及捕获非线性相互关系的更高能力有关。在评估的图特征中,性能没有显著差异,但特征向量中心度在处理时间方面是最佳特征。最后,在具有最佳性能的受试者的经典 EEG 运动皮层位置发现了最佳排名的基于图的属性,这些属性与功能组织和运动活动有关。