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

机译:在全脑网络背景下的脑子网分析

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摘要

Abstract 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 t ‐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:摘要在过去的二十年中,分析了网络视角的结构和功能,在过去的二十年中有很大增加,区域子网在最近的文献中变得突出。然而,尽管大脑作为一个复杂的相互作用子系统(即子网)的复杂系统,但通过分析其组成部分作为独立的元素,大多数研究将从整体提取子网并将其视为独立网络。这种方法需要忽视与其他大脑区域的相互作用,并排除识别分析的子网外的潜在补偿机制。在本研究中,使用模拟和经验数据,我们表明,与其他大脑区域的相互作用的情况下,在其全脑网络的背景下对脑子网的分析可以产生与分析为独立的情况时产生不同的结果网络。我们还提供了一种多变频效果建模框架,允许在整个大脑网络的上下文中分析子网,并显示与标准T -Test相比,它可以更好地解散全球(全大脑)和本地(子网)差异分析。 T-Test分析可能产生误导性导致识别复杂的全局和局部差异。提供的多变量模型是关于大脑的全球系统级假设的先前开发模型的扩展。详细的修改版本提供了与原始模型定量表型和脑连接之间的关系的改进版本,比较脑网络之间的脑网络,预测表型的大脑连接,以及模拟脑网络 - 但是对于本地,子网级假设。

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