Whole brain functional connectivity predicted by indirect structural connections

R. Roge, Karen Sandø Ambrosen, K. J. Albers, Casper T. Eriksen, M. Liptrot, Mikkel N. Schmidt, Kristoffer Hougaard Madsen, Morten Mørup
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引用次数: 9

Abstract

Modern functional and diffusion magnetic resonance imaging (fMRI and dMRI) provide data from which macro-scale networks of functional and structural whole brain connectivity can be estimated. Although networks derived from these two modalities describe different properties of the human brain, they emerge from the same underlying brain organization, and functional communication is presumably mediated by structural connections. In this paper, we assess the structure-function relationship by evaluating how well functional connectivity can be predicted from structural graphs. Using high-resolution whole brain networks generated with varying density, we contrast the performance of several non-parametric link predictors that measure structural communication flow. While functional connectivity is not well predicted directly by structural connections, we show that superior predictions can be achieved by taking indirect structural pathways into account. In particular, we find that the length of the shortest structural path between brain regions is a good predictor of functional connectivity in sparse networks (density less than one percent), and that this improvement comes from integrating indirect pathways comprising up to three steps. Our results support the existence of important indirect relationships between structure and function, extending beyond the immediate direct structural connections that are typically investigated.
间接结构连接预测全脑功能连接
现代功能和扩散磁共振成像(fMRI和dMRI)提供了可以估计全脑功能和结构连接的宏观网络的数据。尽管源自这两种模式的网络描述了人类大脑的不同特性,但它们都来自相同的潜在大脑组织,功能交流可能是由结构连接介导的。在本文中,我们通过评估如何很好地从结构图中预测功能连接来评估结构-函数关系。使用不同密度生成的高分辨率全脑网络,我们对比了几种测量结构通信流的非参数链接预测器的性能。虽然结构连接不能很好地直接预测功能连接,但我们表明,通过考虑间接结构途径可以实现更好的预测。特别是,我们发现大脑区域之间最短结构路径的长度是稀疏网络(密度小于1%)中功能连接的一个很好的预测器,并且这种改进来自于集成多达三个步骤的间接路径。我们的研究结果支持结构和功能之间存在重要的间接关系,超出了通常研究的直接结构联系。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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