The Clinical Hospital of Chengdu Brain Science Institute, School of Life Science and Technology, University of Electronic Science and Technology of China, Chengdu 611731, China; High-Field Magnetic Resonance Brain Imaging Key Laboratory of Sichuan Province, MOE Key Lab for Neuro Information, University of Electronic Science and Technology of China, Chengdu 611731, China.
Department of Psychiatry and Biobehavioral Sciences, University of California Los Angeles, Los Angeles, CA, United States.
Neuroimage. 2022 Nov;263:119618. doi: 10.1016/j.neuroimage.2022.119618. Epub 2022 Sep 7.
Much recent attention has been directed toward investigating the spatial and temporal organization of brain dynamics, but the rules which constrain the variation of spatio-temporal organization in functional connectivity under different brain states remain unclear. Here, we developed a novel computational approach based on tensor decomposition and regularization to represent dynamic functional connectivity as a linear combination of dynamic modules and time-varying weights. In this approach, dynamic modules represent co-activating functional connectivity patterns, and time-varying weights represent the temporal expression of dynamic modules. We applied this dynamic decomposition model (DDM) on a resting-state fMRI dataset and found that whole-brain dynamic functional connectivity can be decomposed as a linear combination of eight dynamic modules which we summarize as 'high order modules' and 'primary-high order modules', according to their spatial attributes and correspondence with existing intrinsic functional brain networks. By clustering the time-varying weights, we identified five brain states including three major states and two minor states. We found that state transitions mainly occurred between the three major states, and that temporal variation of dynamic modules may contribute to brain state transitions. We then conceptualized the variability of weights as the flexibility of the corresponding dynamic modules and found that different dynamic modules exhibit different amounts of flexibility and contribute to different cognitive measures. Finally, we applied DDM to a schizophrenia resting-state fMRI dataset and found that atypical flexibility of dynamic modules correlates with impaired cognitive flexibility in schizophrenia. Overall, this work provides a quantitative framework that characterizes temporal variation in the topology of dynamic functional connectivity.
最近人们对大脑动力学的时空组织进行了大量研究,但在不同脑状态下,约束功能连接的时空组织变化的规则仍不清楚。在这里,我们开发了一种基于张量分解和正则化的新的计算方法,将动态功能连接表示为动态模块和时变权重的线性组合。在这种方法中,动态模块表示共同激活的功能连接模式,时变权重表示动态模块的时间表达。我们将这种动态分解模型(DDM)应用于静息态 fMRI 数据集,发现整个大脑的动态功能连接可以分解为八个动态模块的线性组合,我们根据它们的空间属性和与现有内在功能脑网络的对应关系,将其总结为“高阶模块”和“主要-高阶模块”。通过对时变权重进行聚类,我们确定了五个脑状态,包括三个主要状态和两个次要状态。我们发现状态转换主要发生在三个主要状态之间,并且动态模块的时间变化可能有助于脑状态转换。然后,我们将权重的可变性概念化为对应动态模块的灵活性,并发现不同的动态模块表现出不同程度的灵活性,并对不同的认知测量有贡献。最后,我们将 DDM 应用于精神分裂症静息态 fMRI 数据集,发现动态模块的异常灵活性与精神分裂症认知灵活性受损有关。总的来说,这项工作提供了一个定量框架,用于描述动态功能连接拓扑结构的时间变化。