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Unifying the Notions of Modularity and Core-Periphery Structure in Functional Brain Networks during Youth

机译:在青春期间统一功能性大脑网络中模块化和核心周边结构的概念

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摘要

At rest, human brain functional networks display striking modular architecture in which coherent clusters of brain regions are activated. The modular account of brain function is pervasive, reliable, and reproducible. Yet, a complementary perspective posits a core-periphery or rich-club account of brain function, where hubs are densely interconnected with one another, allowing for integrative processing. Unifying these two perspectives has remained difficult due to the fact that the methodological tools to identify modules are entirely distinct from the methodological tools to identify core-periphery structure. Here, we leverage a recently-developed model-based approach-the weighted stochastic block model-that simultaneously uncovers modular and core-periphery structure, and we apply it to functional magnetic resonance imaging data acquired at rest in 872 youth of the Philadelphia Neurodevelopmental Cohort. We demonstrate that functional brain networks display rich mesoscale organization beyond that sought by modularity maximization techniques. Moreover, we show that this mesoscale organization changes appreciably over the course of neurodevelopment, and that individual differences in this organization predict individual differences in cognition more accurately than module organization alone. Broadly, our study provides a unified assessment of modular and core-periphery structure in functional brain networks, offering novel insights into their development and implications for behavior.
机译:在休息时,人脑功能网络显示出醒目的模块架构,其中激活了脑区域的相干簇。脑功能的模块化帐户是普遍存存,可靠和可重复的。然而,互补的透视图定位了脑功能的核心周边或富核俱乐部叙述,其中集线器彼此密集地相互连接,允许整合处理。统一这两个观点仍然困难,因为识别模块的方法工具完全不同于识别核心周边结构的方法工具。在这里,我们利用最近开发的基于模型的方法 - 加权随机块模型 - 同时揭示模块化和核心周边结构,我们将其应用于在费城神经发作队列的872年青少年休息时获取的功能磁共振成像数据。我们展示了功能性脑网络,以超越模块化最大化技术展示的丰富的Mesoscale组织。此外,我们表明,这种Mesoscale组织在神经发作过程中明显变化,并且该组织中的个体差异比单独的模块组织更准确地预测认知的个人差异。广泛地,我们的研究提供了对功能性大脑网络中模块化和核心外周结构的统一评估,提供了对其发展的新颖见解和对行为的影响。

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