학술논문

Path analysis: A method to estimate altered pathways in time-varying graphs of neuroimaging data
Document Type
article
Source
Network Neuroscience. 6(3)
Subject
Biological Psychology
Psychology
Neurosciences
Brain Disorders
Schizophrenia
Clinical Research
Mental Health
2.1 Biological and endogenous factors
Aetiology
Mental health
Brain graph
Functional connectivity
Gaussian graphical model
Joint estimation
Resting-state fMRI
Biological psychology
Language
Abstract
Graph-theoretical methods have been widely used to study human brain networks in psychiatric disorders. However, the focus has primarily been on global graphic metrics with little attention to the information contained in paths connecting brain regions. Details of disruption of these paths may be highly informative for understanding disease mechanisms. To detect the absence or addition of multistep paths in the patient group, we provide an algorithm estimating edges that contribute to these paths with reference to the control group. We next examine where pairs of nodes were connected through paths in both groups by using a covariance decomposition method. We apply our method to study resting-state fMRI data in schizophrenia versus controls. Results show several disconnectors in schizophrenia within and between functional domains, particularly within the default mode and cognitive control networks. Additionally, we identify new edges generating additional paths. Moreover, although paths exist in both groups, these paths take unique trajectories and have a significant contribution to the decomposition. The proposed path analysis provides a way to characterize individuals by evaluating changes in paths, rather than just focusing on the pairwise relationships. Our results show promise for identifying path-based metrics in neuroimaging data.