Tri-institutional Center for Translational Research in Neuroimaging and Data Science (TReNDS), Georgia State, Georgia Tech, Emory, Atlanta, Georgia, USA.
Department of Psychiatry, University of North Carolina, Chapel Hill, North Carolina, USA.
Hum Brain Mapp. 2022 Oct 15;43(15):4556-4566. doi: 10.1002/hbm.25972. Epub 2022 Jun 28.
In this work, we focus on explicitly nonlinear relationships in functional networks. We introduce a technique using normalized mutual information (NMI) that calculates the nonlinear relationship between different brain regions. We demonstrate our proposed approach using simulated data and then apply it to a dataset previously studied by Damaraju et al. This resting-state fMRI data included 151 schizophrenia patients and 163 age- and gender-matched healthy controls. We first decomposed these data using group independent component analysis (ICA) and yielded 47 functionally relevant intrinsic connectivity networks. Our analysis showed a modularized nonlinear relationship among brain functional networks that was particularly noticeable in the sensory and visual cortex. Interestingly, the modularity appears both meaningful and distinct from that revealed by the linear approach. Group analysis identified significant differences in explicitly nonlinear functional network connectivity (FNC) between schizophrenia patients and healthy controls, particularly in the visual cortex, with controls showing more nonlinearity (i.e., higher normalized mutual information between time courses with linear relationships removed) in most cases. Certain domains, including subcortical and auditory, showed relatively less nonlinear FNC (i.e., lower normalized mutual information), whereas links between the visual and other domains showed evidence of substantial nonlinear and modular properties. Overall, these results suggest that quantifying nonlinear dependencies of functional connectivity may provide a complementary and potentially important tool for studying brain function by exposing relevant variation that is typically ignored. Beyond this, we propose a method that captures both linear and nonlinear effects in a "boosted" approach. This method increases the sensitivity to group differences compared to the standard linear approach, at the cost of being unable to separate linear and nonlinear effects.
在这项工作中,我们专注于功能网络中的显式非线性关系。我们引入了一种使用归一化互信息(NMI)的技术,该技术可计算不同大脑区域之间的非线性关系。我们使用模拟数据演示了我们提出的方法,然后将其应用于 Damaraju 等人先前研究过的数据集。该静息态 fMRI 数据包括 151 名精神分裂症患者和 163 名年龄和性别匹配的健康对照者。我们首先使用组独立成分分析(ICA)对这些数据进行分解,并产生了 47 个具有功能相关性的内在连通性网络。我们的分析表明,大脑功能网络之间存在模块化的非线性关系,在感觉和视觉皮层中尤为明显。有趣的是,这种模块化既具有意义,又与线性方法所揭示的模块化明显不同。组分析确定了精神分裂症患者和健康对照组之间显式非线性功能网络连接(FNC)的显著差异,特别是在视觉皮层中,在大多数情况下,对照组显示出更高的非线性(即,去除线性关系后的时间序列之间的归一化互信息更高)。某些域,包括皮质下和听觉,显示出相对较低的非线性 FNC(即,归一化互信息较低),而视觉和其他域之间的联系则显示出大量非线性和模块化特性的证据。总的来说,这些结果表明,量化功能连接的非线性依赖性可能提供了一种补充性的、潜在重要的工具,用于通过暴露通常被忽略的相关变化来研究大脑功能。除此之外,我们还提出了一种在“增强”方法中同时捕捉线性和非线性效应的方法。与标准线性方法相比,这种方法提高了对组间差异的敏感性,但代价是无法分离线性和非线性效应。