Feklicheva Inna, Zakharov Ilya, Chipeeva Nadezda, Maslennikova Ekaterina, Korobova Svetlana, Adamovich Timofey, Ismatullina Victoria, Malykh Sergey
Laboratory of Molecular Genetic Research of Human Health and Development, Scientific and Educational Center "Biomedical Technologies", Higher Medical and Biological School, South Ural State University, 454080 Chelyabinsk, Russia.
Developmental Behavioral Genetics Lab, Psychological Institute of Russian Academy of Education, 125009 Moscow, Russia.
Brain Sci. 2021 Jan 13;11(1):94. doi: 10.3390/brainsci11010094.
The present study investigates the relationship between individual differences in verbal and non-verbal cognitive abilities and resting-state EEG network characteristics. We used a network neuroscience approach to analyze both large-scale topological characteristics of the whole brain as well as local brain network characteristics. The characteristic path length, modularity, and cluster coefficient for different EEG frequency bands (alpha, high and low; beta1 and beta2, and theta) were calculated to estimate large-scale topological integration and segregation properties of the brain networks. Betweenness centrality, nodal clustering coefficient, and local connectivity strength were calculated as local network characteristics. We showed that global network integration measures in the alpha band were positively correlated with non-verbal intelligence, especially with the more difficult part of the test (Raven's total scores and E series), and the ability to operate with verbal information (the "Conclusions" verbal subtest). At the same time, individual differences in non-verbal intelligence (Raven's total score and C series), and vocabulary subtest of the verbal intelligence tests, were negatively correlated with the network segregation measures. Our results show that resting-state EEG functional connectivity can reveal the functional architecture associated with an individual difference in cognitive performance.
本研究调查了言语和非言语认知能力的个体差异与静息态脑电图网络特征之间的关系。我们采用网络神经科学方法来分析全脑的大规模拓扑特征以及局部脑网络特征。计算不同脑电图频段(α波,高、低频;β1和β2波,以及θ波)的特征路径长度、模块化程度和聚类系数,以估计脑网络的大规模拓扑整合和分离特性。计算中介中心性、节点聚类系数和局部连接强度作为局部网络特征。我们发现,α频段的全局网络整合指标与非言语智力呈正相关,特别是与测试中较难的部分(瑞文测验总分和E系列)以及处理言语信息的能力(“结论”言语子测验)呈正相关。同时,非言语智力(瑞文测验总分和C系列)的个体差异以及言语智力测验的词汇子测验与网络分离指标呈负相关。我们的结果表明,静息态脑电图功能连接可以揭示与认知表现个体差异相关的功能结构。