A model of functional brain connectivity and background noise as a biomarker for cognitive phenotypes: application to autism.

We present an efficient approach to discriminate between typical and atypical brains from macroscopic neural dynamics recorded as magnetoencephalograms (MEG). Our approach is based on the fact that spontaneous brain activity can be accurately described with stochastic dynamics, as a multivariate Orn...

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Main Authors: Luis García Domínguez, José Luis Pérez Velázquez, Roberto Fernández Galán
Format: Article
Language:English
Published: Public Library of Science (PLoS) 2013-01-01
Series:PLoS ONE
Online Access:http://europepmc.org/articles/PMC3629229?pdf=render
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spelling doaj-c2bc0684d689418da7a3c1cf0aecdcd22020-11-25T01:19:09ZengPublic Library of Science (PLoS)PLoS ONE1932-62032013-01-0184e6149310.1371/journal.pone.0061493A model of functional brain connectivity and background noise as a biomarker for cognitive phenotypes: application to autism.Luis García DomínguezJosé Luis Pérez VelázquezRoberto Fernández GalánWe present an efficient approach to discriminate between typical and atypical brains from macroscopic neural dynamics recorded as magnetoencephalograms (MEG). Our approach is based on the fact that spontaneous brain activity can be accurately described with stochastic dynamics, as a multivariate Ornstein-Uhlenbeck process (mOUP). By fitting the data to a mOUP we obtain: 1) the functional connectivity matrix, corresponding to the drift operator, and 2) the traces of background stochastic activity (noise) driving the brain. We applied this method to investigate functional connectivity and background noise in juvenile patients (n = 9) with Asperger's syndrome, a form of autism spectrum disorder (ASD), and compared them to age-matched juvenile control subjects (n = 10). Our analysis reveals significant alterations in both functional brain connectivity and background noise in ASD patients. The dominant connectivity change in ASD relative to control shows enhanced functional excitation from occipital to frontal areas along a parasagittal axis. Background noise in ASD patients is spatially correlated over wide areas, as opposed to control, where areas driven by correlated noise form smaller patches. An analysis of the spatial complexity reveals that it is significantly lower in ASD subjects. Although the detailed physiological mechanisms underlying these alterations cannot be determined from macroscopic brain recordings, we speculate that enhanced occipital-frontal excitation may result from changes in white matter density in ASD, as suggested in previous studies. We also venture that long-range spatial correlations in the background noise may result from less specificity (or more promiscuity) of thalamo-cortical projections. All the calculations involved in our analysis are highly efficient and outperform other algorithms to discriminate typical and atypical brains with a comparable level of accuracy. Altogether our results demonstrate a promising potential of our approach as an efficient biomarker for altered brain dynamics associated with a cognitive phenotype.http://europepmc.org/articles/PMC3629229?pdf=render
collection DOAJ
language English
format Article
sources DOAJ
author Luis García Domínguez
José Luis Pérez Velázquez
Roberto Fernández Galán
spellingShingle Luis García Domínguez
José Luis Pérez Velázquez
Roberto Fernández Galán
A model of functional brain connectivity and background noise as a biomarker for cognitive phenotypes: application to autism.
PLoS ONE
author_facet Luis García Domínguez
José Luis Pérez Velázquez
Roberto Fernández Galán
author_sort Luis García Domínguez
title A model of functional brain connectivity and background noise as a biomarker for cognitive phenotypes: application to autism.
title_short A model of functional brain connectivity and background noise as a biomarker for cognitive phenotypes: application to autism.
title_full A model of functional brain connectivity and background noise as a biomarker for cognitive phenotypes: application to autism.
title_fullStr A model of functional brain connectivity and background noise as a biomarker for cognitive phenotypes: application to autism.
title_full_unstemmed A model of functional brain connectivity and background noise as a biomarker for cognitive phenotypes: application to autism.
title_sort model of functional brain connectivity and background noise as a biomarker for cognitive phenotypes: application to autism.
publisher Public Library of Science (PLoS)
series PLoS ONE
issn 1932-6203
publishDate 2013-01-01
description We present an efficient approach to discriminate between typical and atypical brains from macroscopic neural dynamics recorded as magnetoencephalograms (MEG). Our approach is based on the fact that spontaneous brain activity can be accurately described with stochastic dynamics, as a multivariate Ornstein-Uhlenbeck process (mOUP). By fitting the data to a mOUP we obtain: 1) the functional connectivity matrix, corresponding to the drift operator, and 2) the traces of background stochastic activity (noise) driving the brain. We applied this method to investigate functional connectivity and background noise in juvenile patients (n = 9) with Asperger's syndrome, a form of autism spectrum disorder (ASD), and compared them to age-matched juvenile control subjects (n = 10). Our analysis reveals significant alterations in both functional brain connectivity and background noise in ASD patients. The dominant connectivity change in ASD relative to control shows enhanced functional excitation from occipital to frontal areas along a parasagittal axis. Background noise in ASD patients is spatially correlated over wide areas, as opposed to control, where areas driven by correlated noise form smaller patches. An analysis of the spatial complexity reveals that it is significantly lower in ASD subjects. Although the detailed physiological mechanisms underlying these alterations cannot be determined from macroscopic brain recordings, we speculate that enhanced occipital-frontal excitation may result from changes in white matter density in ASD, as suggested in previous studies. We also venture that long-range spatial correlations in the background noise may result from less specificity (or more promiscuity) of thalamo-cortical projections. All the calculations involved in our analysis are highly efficient and outperform other algorithms to discriminate typical and atypical brains with a comparable level of accuracy. Altogether our results demonstrate a promising potential of our approach as an efficient biomarker for altered brain dynamics associated with a cognitive phenotype.
url http://europepmc.org/articles/PMC3629229?pdf=render
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