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The human connectome is modular with distinct brain regions clustering together to form large-scale communities, or networks. This concept has recently been leveraged in novel inferencing procedures by averaging the edge-level statistics within networks to induce more powerful inferencing at the network level. However, these networks are constructed based on the similarity between pairs of nodes. Emerging work has described novel edge-centric networks, which instead use the similarity between pairs of edges to construct networks. In this work, we use these edge-centric networks in a network-level inferencing procedure and compare this novel method to traditional inferential procedures and the network-level procedure using node-centric networks. We use data from the Human Connectome Project, the Healthy Brain Network, and the Philadelphia Neurodevelopmental Cohort and use a resampling technique with various sample sizes (n=40, 80, 120) to probe the power and specificity of each method. Across datasets and sample sizes, using the edge-centric networks outperforms using node-centric networks for inference as well as edge-level FDR correction and NBS. Additionally, the edge-centric networks were found to be more consistent in clustering effect sizes of similar values as compared to node-centric networks, although node-centric networks often had a lower average within-network effect size variability. Together, these findings suggest that using edge-centric networks for network-level inference can procure relatively powerful results while remaining similarly accurate to the underlying edge-level effects across networks, complementing previous inferential methods.
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http://dx.doi.org/10.1016/j.neuroimage.2022.119742 | DOI Listing |
Biol Psychiatry
September 2025
Department of Radiology, Taihe Hospital, Hubei University of Medicine, Shiyan, China. Electronic address:
Background: Major depressive disorder (MDD) has been increasingly understood as a disorder of network-level functional dysconnectivity. However, previous brain connectome studies have primarily relied on node-centric approaches, neglecting critical edge-edge interactions that may capture essential features of network dysfunction.
Methods: This study included resting-state functional MRI data from 838 MDD patients and 881 healthy controls (HC) across 23 sites.
Sci Rep
July 2025
Department of Radiology, The Affiliated Hospital of Qingdao University, Qingdao, 266590, Shandong, China.
To investigate dynamic cortical-thalamocortical-subcortical network dysregulation in chronic insomnia (CI) using dynamic edge functional connectivity (deFC) analysis, focusing on thalamus-mediated transient connectivity states and their clinical correlations. 30 CI patients and 32 matched healthy controls (HCs) underwent resting-state fMRI. We calculated deFC with the thalamus as a hub node, identified transient connectivity states via K-means clustering, and compared inter-group differences.
View Article and Find Full Text PDFIn this paper, we investigate the edge controllability properties of the macaque structural connectome, which is reconstructed using optimal tractography parameters. We derive the expression of edge modal controllability and edge average controllability, providing a mathematical framework to analyze their roles from a network systems perspective. Further, we establish the relationship between the two controllability measures, providing insights into their functional implications.
View Article and Find Full Text PDFJ Psychiatr Res
July 2025
Center for Cognition and Brain Disorders / Department of Neurology, The Affiliated Hospital of Hangzhou Normal University, Hangzhou 311121, China. Electronic address:
Brain networks are composed of nodes representing neural elements, such as brain regions, and edges indicating functional or anatomical connections between these nodes. By shifting our focus from traditional node-centric perspectives to examining second-order similarity patterns between pairs of network edges, we captured and illuminated the co-fluctuation profiles between brain regions, revealing overlapping communities and the intensity of interactions within brain networks. Specifically, we mapped edge-centric networks and then computed edge-community normalized entropy and edge functional connectivity (eFC) to assess perturbations in normal brain network organization associated with major depressive disorder (MDD).
View Article and Find Full Text PDF