4.6 Article

Resting-State Temporal Synchronization Networks Emerge from Connectivity Topology and Heterogeneity

期刊

PLOS COMPUTATIONAL BIOLOGY
卷 11, 期 2, 页码 -

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PUBLIC LIBRARY SCIENCE
DOI: 10.1371/journal.pcbi.1004100

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资金

  1. ERC DYSTRUCTURE [295129]
  2. Spanish Research Project [SAF2010-16085]
  3. FP7-ICT BrainScales
  4. Flagship Human Brain Project
  5. Leenaards Foundation
  6. Swiss National Science Foundation [320030_146531]
  7. European Commission [PCIG12-334039]
  8. Wellcome Trust
  9. Royal Society [101253/Z/13/Z]
  10. NIH [R01HD061117, R01MH096482]
  11. Brain Network Recovery Group through James S. McDonnell Foundation
  12. Swiss National Science Foundation (SNF) [320030_146531] Funding Source: Swiss National Science Foundation (SNF)
  13. ICREA Funding Source: Custom

向作者/读者索取更多资源

Spatial patterns of coherent activity across different brain areas have been identified during the resting-state fluctuations of the brain. However, recent studies indicate that resting-state activity is not stationary, but shows complex temporal dynamics. We were interested in the spatiotemporal dynamics of the phase interactions among resting-state fMRI BOLD signals from human subjects. We found that the global phase synchrony of the BOLD signals evolves on a characteristic ultra-slow (<0.01Hz) time scale, and that its temporal variations reflect the transient formation and dissolution of multiple communities of synchronized brain regions. Synchronized communities reoccurred intermittently in time and across scanning sessions. We found that the synchronization communities relate to previously defined functional networks known to be engaged in sensory-motor or cognitive function, called restingstate networks (RSNs), including the default mode network, the somato-motor network, the visual network, the auditory network, the cognitive control networks, the self-referential network, and combinations of these and other RSNs. We studied the mechanism originating the observed spatiotemporal synchronization dynamics by using a network model of phase oscillators connected through the brain's anatomical connectivity estimated using diffusion imaging human data. The model consistently approximates the temporal and spatial synchronization patterns of the empirical data, and reveals that multiple clusters that transiently synchronize and desynchronize emerge from the complex topology of anatomical connections, provided that oscillators are heterogeneous.

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