IEEE Trans Neural Syst Rehabil Eng. 2017 Nov;25(11):1940-1949. doi: 10.1109/TNSRE.2017.2701002. Epub 2017 May 4.
Efficient classification of mental workload, an important issue in neuroscience, is limited, so far to single task, while cross-task classification remains a challenge. Furthermore, network approaches have emerged as a promising direction for studying the complex organization of the brain, enabling easier interpretation of various mental states. In this paper, using two mental tasks (N-back and mental arithmetic), we present a framework for cross- as well as within-task workload discrimination by utilizing multiband electroencephalography (EEG) cortical brain connectivity. In detail, we constructed functional networks in EEG source space in different frequency bands and considering the individual functional connections as classification features, we identified salient feature subsets based on a sequential feature selection algorithm. These connectivity subsets were able to provide accuracy of 87% for cross-task, 88% for N-back task, and 86% for mental arithmetic task. In conclusion, our method achieved to detect a small number of discriminative interactions among brain areas, leading to high accuracy in both within-task and cross-task classifications. In addition, the identified functional connectivity features, the majority of which were detected in frontal areas in theta and beta frequency bands, helped delineate the shared as well as the distinct neural mechanisms of the two mental tasks.
目前,神经科学中对脑力负荷的有效分类仅限于单一任务,而跨任务分类仍然是一个挑战,因此,对多频段脑电图(EEG)皮质脑连接进行研究,以实现跨任务和任务内工作负荷的区分,这已成为一种很有前途的方法。在本文中,我们使用了两种心理任务(N-back 和心算),通过利用多频段脑电图(EEG)皮质脑连接,提出了一种用于跨任务和任务内工作负荷区分的框架。具体来说,我们在不同的频带中在 EEG 源空间构建了功能网络,并考虑个体功能连接作为分类特征,基于顺序特征选择算法识别出显著的特征子集。这些连接子集在跨任务、N-back 任务和心算任务中的分类准确率分别达到了 87%、88%和 86%。总之,我们的方法实现了检测大脑区域之间少量的判别性相互作用,从而在任务内和跨任务分类中都实现了高准确率。此外,所识别的功能连接特征,其中大部分在 theta 和 beta 频段的额叶区域被检测到,有助于描绘两个心理任务的共享和独特的神经机制。