Department of Bioengineering, University of Pennsylvania, Philadelphia, PA, 19104, USA.
Department of Psychology, Drexel University, Philadelphia, PA, 19104, USA.
Nat Commun. 2018 Jan 24;9(1):346. doi: 10.1038/s41467-017-02681-z.
Brain function is reflected in connectome community structure. The dominant view is that communities are assortative and segregated from one another, supporting specialized information processing. However, this view precludes the possibility of non-assortative communities whose complex inter-community interactions could engender a richer functional repertoire. We use weighted stochastic blockmodels to uncover the meso-scale architecture of Drosophila, mouse, rat, macaque, and human connectomes. We find that most communities are assortative, though others form core-periphery and disassortative structures, which better recapitulate observed patterns of functional connectivity and gene co-expression in human and mouse connectomes compared to standard community detection techniques. We define measures for quantifying the diversity of communities in which brain regions participate, showing that this measure is peaked in control and subcortical systems in humans, and that inter-individual differences are correlated with cognitive performance. Our report paints a more diverse portrait of connectome communities and demonstrates their cognitive relevance.
脑功能反映在连接组的社区结构中。主导观点认为,社区之间是聚类的,彼此隔离,支持专门的信息处理。然而,这种观点排除了非聚类社区的可能性,而这些社区之间复杂的相互作用可能会产生更丰富的功能组合。我们使用加权随机块模型来揭示果蝇、小鼠、大鼠、猕猴和人类连接组的中尺度结构。我们发现,大多数社区是聚类的,尽管还有一些社区形成了核心-边缘和去聚类结构,与标准社区检测技术相比,这些结构更好地再现了人类和小鼠连接组中观察到的功能连接和基因共表达模式。我们定义了用于量化脑区参与的社区多样性的度量,结果表明,该度量在人类的控制和皮质下系统中达到峰值,并且个体间差异与认知表现相关。我们的报告描绘了一个更具多样性的连接组社区图景,并展示了它们的认知相关性。