Faghiri Ashkan, Iraji Armin, Damaraju Eswar, Turner Jessica, Calhoun Vince D
Center for Translational Research in Neuroimaging and Data Science, Georgia State University, Georgia Institute of Technology, Emory University, Atlanta, GA, USA.
Department of Psychology, Georgia State University, Atlanta, GA, USA.
Netw Neurosci. 2021 Feb 1;5(1):56-82. doi: 10.1162/netn_a_00155. eCollection 2021.
Static and dynamic functional network connectivity (FNC) are typically studied separately, which makes us unable to see the full spectrum of connectivity in each analysis. Here, we propose an approach called filter-banked connectivity (FBC) to estimate connectivity while preserving its full frequency range and subsequently examine both static and dynamic connectivity in one unified approach. First, we demonstrate that FBC can estimate connectivity across multiple frequencies missed by a sliding-window approach. Next, we use FBC to estimate FNC in a resting-state fMRI dataset including schizophrenia patients (SZ) and typical controls (TC). The FBC results are clustered into different network states. Some states showed weak low-frequency strength and as such were not captured in the window-based approach. Additionally, we found that SZs tend to spend more time in states exhibiting higher frequencies compared with TCs who spent more time in lower frequency states. Finally, we show that FBC enables us to analyze static and dynamic connectivity in a unified way. In summary, FBC offers a novel way to unify static and dynamic connectivity analyses and can provide additional information about the frequency profile of connectivity patterns.
静态和动态功能网络连接性(FNC)通常是分开研究的,这使得我们在每次分析中都无法看到连接性的全貌。在此,我们提出一种称为滤波器组连接性(FBC)的方法来估计连接性,同时保留其全频率范围,并随后以一种统一的方法检查静态和动态连接性。首先,我们证明FBC可以估计滑动窗口方法遗漏的多个频率的连接性。接下来,我们使用FBC在一个包含精神分裂症患者(SZ)和典型对照组(TC)的静息态功能磁共振成像数据集里估计FNC。FBC结果被聚类为不同的网络状态。一些状态显示低频强度较弱,因此在基于窗口的方法中未被捕捉到。此外,我们发现与更多时间处于低频状态的TC相比,SZ倾向于在表现出更高频率的状态中花费更多时间。最后,我们表明FBC使我们能够以统一的方式分析静态和动态连接性。总之,FBC提供了一种统一静态和动态连接性分析的新方法,并且可以提供有关连接模式频率分布的额外信息。