Motlaghian S M, Vahidi V, Belger A, Bustillo J R, Faghiri A, Ford J M, Iraji A, Lim K, Mathalon D H, Miller R, Mueller B A, O'Leary D, Potkin S G, Preda A, van Erp T G, Calhoun V D
Tri-institutional Center for Translational Research in Neuroimaging and Data Science (Trends), Georgia State, Georgia Tech, and Emory, Atlanta, GA, USA.
Department of Computer and Information Science, Spelman College, GA, USA.
J Neurosci Methods. 2023 Apr 1;389:109794. doi: 10.1016/j.jneumeth.2023.109794. Epub 2023 Jan 15.
The past 10 years have seen an explosion of approaches that focus on the study of time-resolved change in functional connectivity (FC). FC characterization among networks at a whole-brain level is frequently termed functional network connectivity (FNC). Time-resolved or dynamic functional network connectivity (dFNC) focuses on the estimation of transient, recurring, whole-brain patterns of FNC. While most approaches in this area have attempted to capture dynamic linear correlation, we are particularly interested in whether explicitly nonlinear relationships, above and beyond linear, are present and contain unique information. This study thus proposes an approach to assess explicitly nonlinear dynamic functional network connectivity (EN dFNC) derived from the relationship among independent component analysis time courses. Linear relationships were removed at each time point to evaluate, typically ignored, explicitly nonlinear dFNC using normalized mutual information (NMI). Simulations showed the proposed method estimated explicitly nonlinearity over time, even within relatively short windows of data. We then, applied our approach on 151 schizophrenia patients, and 163 healthy controls fMRI data and found three unique, highly structured, mostly long-range, functional states that also showed significant group differences. In particular, explicitly nonlinear relationships tend to be more widespread than linear ones. Results also highlighted a state with long range connections to the visual domain, which were significantly reduced in schizophrenia. Overall, this work suggests that quantifying EN dFNC may provide a complementary and potentially valuable tool for studying brain function by exposing relevant variation that is typically ignored.
在过去十年中,专注于研究功能连接(FC)随时间变化的方法激增。在全脑水平上对网络之间的FC进行特征描述通常被称为功能网络连接(FNC)。时间分辨或动态功能网络连接(dFNC)则专注于估计FNC的瞬态、反复出现的全脑模式。虽然该领域的大多数方法都试图捕捉动态线性相关性,但我们特别感兴趣的是,除了线性关系之外,明确的非线性关系是否存在并包含独特信息。因此,本研究提出了一种方法来评估从独立成分分析时间序列之间的关系中导出的明确非线性动态功能网络连接(EN dFNC)。在每个时间点去除线性关系,以使用归一化互信息(NMI)评估通常被忽略的明确非线性dFNC。模拟表明,即使在相对较短的数据窗口内,所提出的方法也能随时间估计明确的非线性。然后,我们将我们的方法应用于151名精神分裂症患者和163名健康对照的功能磁共振成像(fMRI)数据,发现了三种独特的、高度结构化的、大多为远距离的功能状态,这些状态也显示出显著的组间差异。特别是,明确的非线性关系往往比线性关系更广泛。结果还突出了一种与视觉领域有远距离连接的状态,在精神分裂症中这种连接显著减少。总体而言,这项工作表明,量化EN dFNC可能为研究脑功能提供一种补充性且潜在有价值的工具,通过揭示通常被忽略的相关变化。