2014
DOI: 10.1523/jneurosci.5068-13.2014
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How Local Excitation-Inhibition Ratio Impacts the Whole Brain Dynamics

Abstract: The spontaneous activity of the brain shows different features at different scales. On one hand, neuroimaging studies show that longrange correlations are highly structured in spatiotemporal patterns, known as resting-state networks, on the other hand, neurophysiological reports show that short-range correlations between neighboring neurons are low, despite a large amount of shared presynaptic inputs. Different dynamical mechanisms of local decorrelation have been proposed, among which is feedback inhibition. … Show more

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Cited by 331 publications
(705 citation statements)
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References 64 publications
(10 reference statements)
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“…obtained from rs-MRI) (Figure 2A). In other words, the dynamical entrainment and correlations between different local brain region dynamics are essentially shaped by the underlying structural connectivity [54][55][56][57][58][59] . As such, whole-brain computational models can provide a mechanistic explanation of the origin of resting-state networks, as has been shown for resting-state networks derived from rs-MRI data 60,61 and for resting-state networks derived from MEG data 62 .…”
Section: Whole-brain Computational Modelsmentioning
confidence: 99%
“…obtained from rs-MRI) (Figure 2A). In other words, the dynamical entrainment and correlations between different local brain region dynamics are essentially shaped by the underlying structural connectivity [54][55][56][57][58][59] . As such, whole-brain computational models can provide a mechanistic explanation of the origin of resting-state networks, as has been shown for resting-state networks derived from rs-MRI data 60,61 and for resting-state networks derived from MEG data 62 .…”
Section: Whole-brain Computational Modelsmentioning
confidence: 99%
“…Presently, resting-state MRI (rsfMRI) mainly focuses on functional connectivity examining the inter-regional temporal correlation between distant brain regions (e.g., between the amygdala and the prefrontal cortex) that may be involved in a specific cognitive function (Biswal et al, 2010;Fox et al, 2005;Greicius et al, 2007). However, resting-state activity may also characterize the intensity or synchronization of baseline neural signals within a localized brain region, i.e., local functional connectivity, which has been shown to influence whole brain dynamics (Deco et al, 2014). Recent technical advances in the analysis of rsfMRI data have begun to map such local functional connectivity providing !…”
Section: Introductionmentioning
confidence: 99%
“…Together, the homeostatic processes serve to maintain the overall excitatory and inhibitory balance within local neuronal ensembles that constitute the global brain connectome 159 .…”
Section: Psychosis As a Disorder Of Connectivitymentioning
confidence: 99%