Sporns Olaf, Honey Christopher J, Kötter Rolf
Department of Psychological and Brain Sciences and Program in Cognitive Science, Indiana University, Bloomington, Indiana, United States of America.
PLoS One. 2007 Oct 17;2(10):e1049. doi: 10.1371/journal.pone.0001049.
Brain regions in the mammalian cerebral cortex are linked by a complex network of fiber bundles. These inter-regional networks have previously been analyzed in terms of their node degree, structural motif, path length and clustering coefficient distributions. In this paper we focus on the identification and classification of hub regions, which are thought to play pivotal roles in the coordination of information flow. We identify hubs and characterize their network contributions by examining motif fingerprints and centrality indices for all regions within the cerebral cortices of both the cat and the macaque. Motif fingerprints capture the statistics of local connection patterns, while measures of centrality identify regions that lie on many of the shortest paths between parts of the network. Within both cat and macaque networks, we find that a combination of degree, motif participation, betweenness centrality and closeness centrality allows for reliable identification of hub regions, many of which have previously been functionally classified as polysensory or multimodal. We then classify hubs as either provincial (intra-cluster) hubs or connector (inter-cluster) hubs, and proceed to show that lesioning hubs of each type from the network produces opposite effects on the small-world index. Our study presents an approach to the identification and classification of putative hub regions in brain networks on the basis of multiple network attributes and charts potential links between the structural embedding of such regions and their functional roles.
哺乳动物大脑皮层中的脑区通过一个复杂的纤维束网络相互连接。这些区域间网络此前已根据其节点度、结构基序、路径长度和聚类系数分布进行了分析。在本文中,我们聚焦于枢纽区域的识别和分类,这些区域被认为在信息流协调中起着关键作用。我们通过检查猫和猕猴大脑皮层内所有区域的基序指纹和中心性指标来识别枢纽并表征它们对网络的贡献。基序指纹捕捉局部连接模式的统计信息,而中心性度量则识别位于网络各部分之间许多最短路径上的区域。在猫和猕猴的网络中,我们发现度、基序参与度、介数中心性和接近中心性的组合能够可靠地识别枢纽区域,其中许多区域先前在功能上被归类为多感觉或多模态区域。然后我们将枢纽分为省级(簇内)枢纽或连接(簇间)枢纽,并进而表明从网络中损伤每种类型的枢纽会对小世界指数产生相反的影响。我们的研究提出了一种基于多种网络属性来识别和分类脑网络中假定枢纽区域的方法,并描绘了这些区域的结构嵌入与其功能作用之间的潜在联系。