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Modular structure of brain functional networks: breaking the resolution limit by Surprise

机译:大脑功能网络的模块化结构:通过惊喜突破分辨率极限

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摘要

The modular organization of brain networks has been widely investigated using graph theoretical approaches. Recently, it has been demonstrated that graph partitioning methods based on the maximization of global fitness functions, like Newman’s Modularity, suffer from a resolution limit, as they fail to detect modules that are smaller than a scale determined by the size of the entire network. Here we explore the effects of this limitation on the study of brain connectivity networks. We demonstrate that the resolution limit prevents detection of important details of the brain modular structure, thus hampering the ability to appreciate differences between networks and to assess the topological roles of nodes. We show that Surprise, a recently proposed fitness function based on probability theory, does not suffer from these limitations. Surprise maximization in brain co-activation and functional connectivity resting state networks reveals the presence of a rich structure of heterogeneously distributed modules, and differences in networks’ partitions that are undetectable by resolution-limited methods. Moreover, Surprise leads to a more accurate identification of the network’s connector hubs, the elements that integrate the brain modules into a cohesive structure.
机译:大脑网络的模块化组织已使用图论方法进行了广泛研究。最近,已经证明,基于全局适应度函数最大化(例如纽曼的模块化)的图分区方法由于无法检测到小于由整个网络大小确定的比例的模块而受到分辨率的限制。在这里,我们探索这种限制对大脑连接网络的研究的影响。我们证明了分辨率限制阻止了大脑模块化结构重要细节的检测,从而妨碍了欣赏网络之间差异以及评估节点拓扑角色的能力。我们显示,Supra,这是最近基于概率论提出的适应度函数,不受这些限制的影响。大脑共激活和功能连接静止状态网络中的惊喜最大化揭示了异构分布模块的丰富结构的存在,以及分辨率限制方法无法检测到的网络分区差异。此外,Surprise可以更准确地识别网络的连接器集线器,这些连接器集线器将大脑模块集成到一个紧密的结构中。

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