Article ID Journal Published Year Pages File Type
4321248 Neuron 2013 16 Pages PDF
Abstract

•Reveals confounds in degree-based hub detection techniques in correlation networks•Utilizes multiple methods to convergently identify hubs in correlation networks•Identifies regions and nodes that support and link different parts of brain networks•Generates differential, testable, and spatially constrained hypotheses regarding hubs

SummaryHubs integrate and distribute information in powerful ways due to the number and positioning of their contacts in a network. Several resting-state functional connectivity MRI reports have implicated regions of the default mode system as brain hubs; we demonstrate that previous degree-based approaches to hub identification may have identified portions of large brain systems rather than critical nodes of brain networks. We utilize two methods to identify hub-like brain regions: (1) finding network nodes that participate in multiple subnetworks of the brain, and (2) finding spatial locations in which several systems are represented within a small volume. These methods converge on a distributed set of regions that differ from previous reports on hubs. This work identifies regions that support multiple systems, leading to spatially constrained predictions about brain function that may be tested in terms of lesions, evoked responses, and dynamic patterns of activity.

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