Molloy M Fiona, Taxali Aman, Angstadt Mike, Greathouse Tristan, Toda-Thorne Katherine, McCurry Katherine L, Weigard Alexander, Kardan Omid, Burchell Lily, Dziubinski Maria, Choi Jason, Vandersluis Melanie, Michael Cleanthis, Heitzeg Mary M, Sripada Chandra
Department of Psychiatry, University of Michigan, 4250 Plymouth Road, Ann Arbor, MI 48109, United States.
Department of Psychology, University of Michigan, 530 Church St, Ann Arbor, MI 48109, United States.
Cereb Cortex. 2025 Apr 1;35(4). doi: 10.1093/cercor/bhaf074.
General cognitive ability (GCA), also called "general intelligence," is thought to depend on network properties of the brain, which can be quantified through graph theoretic measures such as small worldness and module degree. An extensive set of studies examined links between GCA and graphical properties of resting state connectomes. However, these studies often involved small samples, applied just a few graph theory measures in each study, and yielded inconsistent results, making it challenging to identify the architectural underpinnings of GCA. Here, we address these limitations by systematically investigating univariate and multivariate relationships between GCA and 17 whole-brain and node-level graph theory measures in individuals from the Adolescent Brain Cognitive Development Study (n = 5937). We demonstrate that whole-brain graph theory measures, including small worldness and global efficiency, fail to exhibit meaningful relationships with GCA. In contrast, multiple node-level graphical measures, especially module degree (within-network connectivity), exhibit strong associations with GCA. We establish the robustness of these results by replicating them in a second large sample, the Human Connectome Project (n = 847), and across a variety of modeling choices. This study provides the most comprehensive and definitive account to date of complex interrelationships between GCA and graphical properties of the brain's intrinsic functional architecture.
一般认知能力(GCA),也被称为“一般智力”,被认为取决于大脑的网络特性,而大脑的网络特性可以通过小世界特性和模块度等图论指标进行量化。一系列广泛的研究考察了GCA与静息态脑连接组图形属性之间的联系。然而,这些研究往往样本量较小,每项研究仅应用了少数图论指标,且结果不一致,这使得确定GCA的结构基础具有挑战性。在此,我们通过系统研究青少年大脑认知发展研究(n = 5937)中个体的GCA与17种全脑和节点水平图论指标之间的单变量和多变量关系来解决这些局限性。我们证明,包括小世界特性和全局效率在内的全脑图论指标与GCA没有显著关系。相比之下,多个节点水平的图形指标,尤其是模块度(网络内连接性),与GCA表现出强烈的关联。我们通过在第二个大样本——人类连接组计划(n = 847)中重复这些结果,并在各种建模选择中进行验证,从而确定了这些结果的稳健性。这项研究提供了迄今为止关于GCA与大脑内在功能结构图形属性之间复杂相互关系的最全面、最确切的描述。