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Minimum spanning tree analysis of the human connectome

机译:人连接组的最小生成树分析

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摘要

One of the challenges of brain network analysis is to directly compare network organization between subjects, irrespective of the number or strength of connections. In this study, we used minimum spanning tree (MST; a unique, acyclic subnetwork with a fixed number of connections) analysis to characterize the human brain network to create an empirical reference network. Such a reference network could be used as a null model of connections that form the backbone structure of the human brain. We analyzed the MST in three diffusion‐weighted imaging datasets of healthy adults. The MST of the group mean connectivity matrix was used as the empirical null‐model. The MST of individual subjects matched this reference MST for a mean 58%–88% of connections, depending on the analysis pipeline. Hub nodes in the MST matched with previously reported locations of hub regions, including the so‐called rich club nodes (a subset of high‐degree, highly interconnected nodes). Although most brain network studies have focused primarily on cortical connections, cortical–subcortical connections were consistently present in the MST across subjects. Brain network efficiency was higher when these connections were included in the analysis, suggesting that these tracts may be utilized as the major neural communication routes. Finally, we confirmed that MST characteristics index the effects of brain aging. We conclude that the MST provides an elegant and straightforward approach to analyze structural brain networks, and to test network topological features of individual subjects in comparison to empirical null models.
机译:大脑网络分析的挑战之一是直接比较受试者之间的网络组织,而不论连接的数量或强度如何。在这项研究中,我们使用最小生成树(MST;具有固定连接数的唯一非循环子网络)分析来表征人脑网络,以创建经验参考网络。这样的参考网络可以用作形成人脑主干结构的连接的空模型。我们在健康成年人的三个扩散加权成像数据集中分析了MST。组均值连通性矩阵的MST用作经验空模型。各个受试者的MST与参考MST相匹配的平均比例为58%–88%,具体取决于分析流程。 MST中的集线器节点与以前报告的集线器区域位置匹配,包括所谓的“丰富俱乐部”节点(高度,高度互连的节点的子集)。尽管大多数大脑网络研究主要集中在皮质连接上,但跨受试者的MST始终存在皮质-皮质下连接。当这些连接包括在分析中时,脑网络效率更高,表明这些区域可能被用作主要的神经沟通途径。最后,我们证实了MST特征可指示脑衰老的影响。我们得出的结论是,MST提供了一种优雅而直接的方法来分析结构性大脑网络,并与经验空模型进行比较来测试单个受试者的网络拓扑特征。

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