Zhao Yi, Nebel Mary Beth, Caffo Brian S, Mostofsky Stewart H, Rosch Keri S
Department of Biostatistics, Indiana University School of Medicine, Indianapolis, IN, USA.
Center for Neurodevelopmental and Imaging Research, Kennedy Krieger Institute, Baltimore, MD, USA.
Biol Psychiatry Glob Open Sci. 2022 Jan;2(1):8-16. doi: 10.1016/j.bpsgos.2021.06.003. Epub 2021 Jun 19.
Studies of brain functional connectivity (FC) typically involve massive univariate tests, performing statistical analysis on each individual connection. In this study we apply a novel whole-matrix regression approach referred to as Covariate Assisted Principal (CAP) regression to identify resting-state FC brain networks associated with attention-deficit/hyperactivity disorder (ADHD) and response control.
Participants included 8-12 year-old children with ADHD (n=115, 29 girls) and typically developing controls (n=102, 35 girls) who completed a resting-state fMRI scan and a go/no-go task (GNG). We modeled three sets of covariates to identify resting-state networks associated with an ADHD diagnosis, sex, and response inhibition (commission errors) and variability (ex-Gaussian parameter tau).
The first network includes FC between striatal-cognitive control (CC) network subregions and thalamic-default mode network (DMN) subregions and is positively related to age. The second consists of FC between CC-visual-somatomotor regions and between CC-DMN subregions and is positively associated with response variability in boys with ADHD. The third consists of FC within the DMN and between DMN-CC-visual regions and differs between boys with and without ADHD. The fourth consists of FC between visual-somatomotor regions and between visual-DMN regions and differs between girls and boys with ADHD and is associated with response inhibition and variability in boys with ADHD. Unique networks were also identified in each of the three models suggesting some specificity to the covariates of interest.
These findings demonstrate the utility of our novel covariance regression approach to studying functional brain networks relevant for development, behavior, and psychopathology.
脑功能连接(FC)的研究通常涉及大量单变量测试,即对每个单独的连接进行统计分析。在本研究中,我们应用一种新颖的全矩阵回归方法,称为协变量辅助主成分(CAP)回归,以识别与注意力缺陷多动障碍(ADHD)和反应控制相关的静息态FC脑网络。
参与者包括8至12岁的ADHD儿童(n = 115,29名女孩)和发育正常的对照组(n = 102,35名女孩),他们完成了静息态功能磁共振成像扫描和一项停止信号任务(GNG)。我们对三组协变量进行建模,以识别与ADHD诊断、性别、反应抑制(错误 commission)和变异性(前高斯参数tau)相关的静息态网络。
第一个网络包括纹状体-认知控制(CC)网络子区域与丘脑-默认模式网络(DMN)子区域之间的FC,且与年龄呈正相关。第二个网络由CC-视觉-躯体运动区域之间以及CC-DMN子区域之间的FC组成,并且与患有ADHD的男孩的反应变异性呈正相关。第三个网络由DMN内以及DMN-CC-视觉区域之间的FC组成,在患有和未患有ADHD的男孩之间存在差异。第四个网络由视觉-躯体运动区域之间以及视觉-DMN区域之间的FC组成,在患有ADHD的女孩和男孩之间存在差异,并且与患有ADHD的男孩的反应抑制和变异性相关。在三个模型中的每一个中还识别出了独特的网络,这表明对感兴趣的协变量具有一定的特异性。
这些发现证明了我们新颖的协方差回归方法在研究与发育、行为和精神病理学相关的功能性脑网络方面的实用性。