| Literature DB >> 34274691 |
Defu Yang1, Xiaofeng Zhu2, Chenggang Yan3, Ziwen Peng4, Maria Bagonis5, Paul J Laurienti6, Martin Styner7, Guorong Wu8.
Abstract
Recent developments in neuroimaging allow us to investigate the structural and functional connectivity between brain regions in vivo. Mounting evidence suggests that hub nodes play a central role in brain communication and neural integration. Such high centrality, however, makes hub nodes particularly susceptible to pathological network alterations and the identification of hub nodes from brain networks has attracted much attention in neuroimaging. Current popular hub identification methods often work in a univariate manner, i.e., selecting the hub nodes one after another based on either heuristic of the connectivity profile at each node or predefined settings of network modules. Since the topological information of the entire network (such as network modules) is not fully utilized, current methods have limited power to identify hubs that link multiple modules (connector hubs) and are biased toward identifying hubs having many connections within the same module (provincial hubs). To address this challenge, we propose a novel multivariate hub identification method. Our method identifies connector hubs as those that partition the network into disconnected components when they are removed from the network. Furthermore, we extend our hub identification method to find the population-based hub nodes from a group of network data. We have compared our hub identification method with existing methods on both simulated and human brain network data. Our proposed method achieves more accurate and replicable discovery of hub nodes and exhibits enhanced statistical power in identifying network alterations related to neurological disorders such as Alzheimer's disease and obsessive-compulsive disorder.Entities:
Keywords: Brain network; Connector hub; Graph spectrum; Hub identification
Mesh:
Year: 2021 PMID: 34274691 PMCID: PMC8453134 DOI: 10.1016/j.media.2021.102162
Source DB: PubMed Journal: Med Image Anal ISSN: 1361-8415 Impact factor: 13.828