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Analysis of brain subnetworks within the context of their whole‐brain networks

机译:在全脑网络范围内分析脑子网络

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摘要

Analyzing the structure and function of the brain from a network perspective has increased considerably over the past two decades, with regional subnetwork analyses becoming prominent in the recent literature. However, despite the fact that the brain, as a complex system of interacting subsystems (i.e., subnetworks), cannot be fully understood by analyzing its constituent parts as independent elements, most studies extract subnetworks from the whole and treat them as independent networks. This approach entails neglecting their interactions with other brain regions and precludes identifying potential compensatory mechanisms outside the analyzed subnetwork. In this study, using simulated and empirical data, we show that the analysis of brain subnetworks within the context of their whole‐brain networks, that is, including their interactions with other brain regions, can yield different outcomes when compared to analyzing them as independent networks. We also provide a multivariate mixed‐effects modeling framework that allows analyzing subnetworks within the context of their whole‐brain networks, and show that it can better disentangle global (whole‐brain) and local (subnetwork) differences when compared to standard ‐test analyses. T‐test analyses may produce misleading results in identifying complex global and local level differences. The provided multivariate model is an extension of a previously developed model for global, system‐level hypotheses about the brain. The modified version detailed here provides the same utilities as the original model—quantifying the relationship between phenotypes and brain connectivity, comparing brain networks among groups, predicting brain connectivity from phenotypes, and simulating brain networks—but for local, subnetwork‐level hypotheses.
机译:在过去的二十年中,从网络的角度分析大脑的结构和功能的工作已大大增加,而在最近的文献中,区域子网络的分析变得越来越重要。然而,尽管事实上,作为相互作用子系统(即子网络)的复杂系统,大脑无法通过将其组成部分分析为独立元素来完全理解,但大多数研究还是从整体上提取子网络并将其视为独立网络。这种方法需要忽略它们与其他大脑区域的相互作用,并排除在分析的子网外确定潜在的补偿机制的可能性。在这项研究中,我们使用模拟和经验数据表明,与将它们独立分析相比,在其全脑网络范围内对脑子网络进行分析(包括其与其他脑区域的相互作用)可以产生不同的结果。网络。我们还提供了一个多元混合效应建模框架,该框架允许在子网络的全脑网络范围内分析子网络,并证明与标准测试分析相比,它可以更好地区分全局(全脑)和局部(子网络)差异。 。在确定复杂的全球和本地水平差异时,T检验分析可能会产生误导性的结果。所提供的多元模型是先前开发的模型的扩展,该模型用于有关大脑的全局系统级假设。此处详细介绍的修改后的版本提供与原始模型相同的实用程序-量化表型与大脑连通性之间的关系,比较各组之间的大脑网络,根据表型预测大脑连通性,以及模拟大脑网络-但适用于局部,亚网络级假设。

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