Exploring the network dynamics underlying brain activity during rest
Since the mid 1990s, the intriguing dynamics of the brain at rest has been attracting a growing body of research in neuroscience. Neuroimaging studies have revealed distinct functional networks that slowly activate and deactivate, pointing to the existence of an underlying network dynamics emerging...
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Format: | Journal article |
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2014
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author | Cabral, J Kringelbach, M Deco, G |
author_facet | Cabral, J Kringelbach, M Deco, G |
author_sort | Cabral, J |
collection | OXFORD |
description | Since the mid 1990s, the intriguing dynamics of the brain at rest has been attracting a growing body of research in neuroscience. Neuroimaging studies have revealed distinct functional networks that slowly activate and deactivate, pointing to the existence of an underlying network dynamics emerging spontaneously during rest, with specific spatial, temporal and spectral characteristics. Several theoretical scenarios have been proposed and tested with the use of large-scale computational models of coupled brain areas. However, a mechanistic explanation that encompasses all the phenomena observed in the brain during rest is still to come. In this review, we provide an overview of the key findings of resting-state activity covering a range of neuroimaging modalities including fMRI, EEG and MEG. We describe how to best define and analyze anatomical and functional brain networks and how unbalancing these networks may lead to problems with mental health. Finally, we review existing large-scale models of resting-state dynamics in health and disease.An important common feature of resting-state models is that the emergence of resting-state functional networks is obtained when the model parameters are such that the system operates at the edge of a bifurcation. At this critical working point, the global network dynamics reveals correlation patterns that are spatially shaped by the underlying anatomical structure, leading to an optimal fit with the empirical BOLD functional connectivity. However, new insights coming from recent studies, including faster oscillatory dynamics and non-stationary functional connectivity, must be taken into account in future models to fully understand the network mechanisms leading to the resting-state activity. © 2013. |
first_indexed | 2024-03-06T23:44:14Z |
format | Journal article |
id | oxford-uuid:705ae109-9ed0-4821-a260-2461efef1392 |
institution | University of Oxford |
last_indexed | 2024-03-06T23:44:14Z |
publishDate | 2014 |
record_format | dspace |
spelling | oxford-uuid:705ae109-9ed0-4821-a260-2461efef13922022-03-26T19:36:37ZExploring the network dynamics underlying brain activity during restJournal articlehttp://purl.org/coar/resource_type/c_dcae04bcuuid:705ae109-9ed0-4821-a260-2461efef1392Symplectic Elements at Oxford2014Cabral, JKringelbach, MDeco, GSince the mid 1990s, the intriguing dynamics of the brain at rest has been attracting a growing body of research in neuroscience. Neuroimaging studies have revealed distinct functional networks that slowly activate and deactivate, pointing to the existence of an underlying network dynamics emerging spontaneously during rest, with specific spatial, temporal and spectral characteristics. Several theoretical scenarios have been proposed and tested with the use of large-scale computational models of coupled brain areas. However, a mechanistic explanation that encompasses all the phenomena observed in the brain during rest is still to come. In this review, we provide an overview of the key findings of resting-state activity covering a range of neuroimaging modalities including fMRI, EEG and MEG. We describe how to best define and analyze anatomical and functional brain networks and how unbalancing these networks may lead to problems with mental health. Finally, we review existing large-scale models of resting-state dynamics in health and disease.An important common feature of resting-state models is that the emergence of resting-state functional networks is obtained when the model parameters are such that the system operates at the edge of a bifurcation. At this critical working point, the global network dynamics reveals correlation patterns that are spatially shaped by the underlying anatomical structure, leading to an optimal fit with the empirical BOLD functional connectivity. However, new insights coming from recent studies, including faster oscillatory dynamics and non-stationary functional connectivity, must be taken into account in future models to fully understand the network mechanisms leading to the resting-state activity. © 2013. |
spellingShingle | Cabral, J Kringelbach, M Deco, G Exploring the network dynamics underlying brain activity during rest |
title | Exploring the network dynamics underlying brain activity during rest |
title_full | Exploring the network dynamics underlying brain activity during rest |
title_fullStr | Exploring the network dynamics underlying brain activity during rest |
title_full_unstemmed | Exploring the network dynamics underlying brain activity during rest |
title_short | Exploring the network dynamics underlying brain activity during rest |
title_sort | exploring the network dynamics underlying brain activity during rest |
work_keys_str_mv | AT cabralj exploringthenetworkdynamicsunderlyingbrainactivityduringrest AT kringelbachm exploringthenetworkdynamicsunderlyingbrainactivityduringrest AT decog exploringthenetworkdynamicsunderlyingbrainactivityduringrest |