人脑结构网络的边缘中心网络控制

Huili Sun, M. Rosenblatt, J. Dadashkarimi, Raimundo Rodriguez, Link Tejavibulya, Dustin Scheinost
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摘要

摘要 网络控制理论模拟了灰质区域如何通过相关的白质连接在认知状态之间转换,其中可控性量化了每个区域对驱动这些状态转换的贡献。目前的应用主要采用以节点为中心的观点,忽略了大脑网络连接的潜在贡献。为了弥补这一缺陷,我们使用以边缘为中心的网络控制理论(E-NCT)来评估大脑连接(即边缘)在控制大脑动态过程中的作用。我们将这一框架应用于人类连接组计划中的个体扩散核磁共振成像数据。我们首先通过与空模型、节点可控性以及结构和功能连接组的比较来验证边缘可控性。值得注意的是,边缘可控性预测了表型信息的个体差异。我们利用 E-NCT 估算了大脑激活特定网络的能量消耗。我们的结果显示,激活预测执行功能(EF)的复杂全脑网络比激活相应的典型网络对更节能。总之,E-NCT 为大脑的网络控制机制提供了一个以边缘为中心的视角。它能捕捉控制能量模式和大脑行为表型,更全面地了解大脑动态。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Edge-centric network control on the human brain structural network
Abstract Network control theory models how gray matter regions transition between cognitive states through associated white matter connections, where controllability quantifies the contribution of each region to driving these state transitions. Current applications predominantly adopt node-centric views and overlook the potential contribution of brain network connections. To bridge this gap, we use edge-centric network control theory (E-NCT) to assess the role of brain connectivity (i.e., edges) in governing brain dynamic processes. We applied this framework to diffusion MRI data from individuals in the Human Connectome Project. We first validate edge controllability through comparisons against null models, node controllability, and structural and functional connectomes. Notably, edge controllability predicted individual differences in phenotypic information. Using E-NCT, we estimate the brain’s energy consumption for activating specific networks. Our results reveal that the activation of a complex, whole-brain network predicting executive function (EF) is more energy efficient than the corresponding canonical network pairs. Overall, E-NCT provides an edge-centric perspective on the brain’s network control mechanism. It captures control energy patterns and brain-behavior phenotypes with a more comprehensive understanding of brain dynamics.
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