Brain network dynamics are hierarchically organized in time

The brain recruits neuronal populations in a temporally coordinated manner in task and at rest. However, the extent to which large-scale networks exhibit their own organized temporal dynamics is unclear. We use an approach designed to find repeating network patterns in whole-brain resting fMRI data,...

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Published inProceedings of the National Academy of Sciences - PNAS Vol. 114; no. 48; pp. 12827 - 12832
Main Authors Vidaurre, Diego, Smith, Stephen M., Woolrich, Mark W.
Format Journal Article
LanguageEnglish
Published United States National Academy of Sciences 28.11.2017
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Summary:The brain recruits neuronal populations in a temporally coordinated manner in task and at rest. However, the extent to which large-scale networks exhibit their own organized temporal dynamics is unclear. We use an approach designed to find repeating network patterns in whole-brain resting fMRI data, where networks are defined as graphs of interacting brain areas. We find that the transitions between networks are nonrandom, with certain networks more likely to occur after others. Further, this nonrandom sequencing is itself hierarchically organized, revealing two distinct sets of networks, or metastates, that the brain has a tendency to cycle within. One metastate is associated with sensory and motor regions, and the other involves areas related to higher order cognition. Moreover, we find that the proportion of time that a subject spends in each brain network and metastate is a consistent subject-specific measure, is heritable, and shows a significant relationship with cognitive traits.
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Author contributions: D.V. and M.W.W. designed research; D.V., S.M.S., and M.W.W. performed research; D.V. and S.M.S. contributed new reagents/analytic tools; D.V. analyzed data; and D.V. and M.W.W. wrote the paper.
Edited by Marcus E. Raichle, Washington University in St. Louis, St. Louis, MO, and approved September 28, 2017 (received for review April 3, 2017)
ISSN:0027-8424
1091-6490
1091-6490
DOI:10.1073/pnas.1705120114