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An Adaptive Complex Network Model for Brain Functional Networks

机译:大脑功能网络的自适应复杂网络模型

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摘要

Brain functional networks are graph representations of activity in the brain, where the vertices represent anatomical regions and the edges their functional connectivity. These networks present a robust small world topological structure, characterized by highly integrated modules connected sparsely by long range links. Recent studies showed that other topological properties such as the degree distribution and the presence (or absence) of a hierarchical structure are not robust, and show different intriguing behaviors. In order to understand the basic ingredients necessary for the emergence of these complex network structures we present an adaptive complex network model for human brain functional networks. The microscopic units of the model are dynamical nodes that represent active regions of the brain, whose interaction gives rise to complex network structures. The links between the nodes are chosen following an adaptive algorithm that establishes connections between dynamical elements with similar internal states. We show that the model is able to describe topological characteristics of human brain networks obtained from functional magnetic resonance imaging studies. In particular, when the dynamical rules of the model allow for integrated processing over the entire network scale-free non-hierarchical networks with well defined communities emerge. On the other hand, when the dynamical rules restrict the information to a local neighborhood, communities cluster together into larger ones, giving rise to a hierarchical structure, with a truncated power law degree distribution.
机译:脑功能网络是大脑活动的图形表示,其中顶点表示解剖区域,其边缘表示其功能连通性。这些网络呈现出健壮的小世界拓扑结构,其特征是高度集成的模块通过远程链接稀疏连接。最近的研究表明,其他拓扑属性(例如,度分布和层次结构的存在(或不存在))不是很可靠,并且表现出不同的有趣行为。为了理解这些复杂网络结构的出现所必需的基本要素,我们提出了一种适用于人脑功能网络的自适应复杂网络模型。模型的微观单位是代表大脑活动区域的动态节点,它们的相互作用会导致复杂的网络结构。节点之间的链接是根据自适应算法选择的,该算法在具有相似内部状态的动态元素之间建立连接。我们表明该模型能够描述从功能磁共振成像研究获得的人脑网络的拓扑特征。尤其是,当模型的动态规则允许在整个网络上进行集成处理时,就会出现具有定义明确的社区的无标度非分层网络。另一方面,当动态规则将信息限制在本地社区时,社区会聚集成更大的社区,从而形成层次结构,幂律度分布被截断。

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