The envirome and the connectome: exploring the structural noise in the human brain associated with socioeconomic deprivation

Complex cognitive functions are widely recognized to be the result of a number of brain regions working together as large-scale networks. Recently, complex network analysis has been used to characterize various structural properties of the large scale network organization of the brain. For example,...

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Main Authors: Rajeev eKrishnadas, Jongrae eKim, John eMcLean, David G Batty, Jennifer eMcLean, Keith eMillar, Chris ePackard, Jonathan eCavanagh
Format: Article
Language:English
Published: Frontiers Media S.A. 2013-11-01
Series:Frontiers in Human Neuroscience
Subjects:
Online Access:http://journal.frontiersin.org/Journal/10.3389/fnhum.2013.00722/full
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spelling doaj-de10cd447ac34bc297800ebca05707e92020-11-25T03:13:18ZengFrontiers Media S.A.Frontiers in Human Neuroscience1662-51612013-11-01710.3389/fnhum.2013.0072257837The envirome and the connectome: exploring the structural noise in the human brain associated with socioeconomic deprivationRajeev eKrishnadas0Jongrae eKim1John eMcLean2David G Batty3Jennifer eMcLean4Keith eMillar5Chris ePackard6Jonathan eCavanagh7University of GlasgowUniversity of GlasgowUniversity of GlasgowUniversity College LondonGlasgow Centre for Population HealthUniversity of GlasgowGlasgow Clinical Research FacilityUniversity of GlasgowComplex cognitive functions are widely recognized to be the result of a number of brain regions working together as large-scale networks. Recently, complex network analysis has been used to characterize various structural properties of the large scale network organization of the brain. For example, the human brain has been found to have a modular architecture i.e. regions within the network form communities (modules) with more connections between regions within the community compared to regions outside it. The aim of this study was to examine the modular and overlapping modular architecture of the brain networks using complex network analysis. We also examined the association between neighborhood level deprivation and brain network structure – modularity and grey nodes. We compared network structure derived from anatomical MRI scans of 42 middle-aged neurologically healthy men from the least (LD) and the most deprived (MD) neighborhoods of Glasgow with their corresponding random networks. Cortical morphological covariance networks were constructed from the cortical thickness derived from the MRI scans of the brain. For a given modularity threshold, networks derived from the MD group showed similar number of modules compared to their corresponding random networks, while networks derived from the LD group had more modules compared to their corresponding random networks. The MD group also had fewer grey nodes – a measure of overlapping modular structure. These results suggest that apparent structural difference in brain networks groups may be driven by differences in cortical thicknesses between groups. This demonstrates a structural organization that is consistent with a system that is less robust and less efficient in information processing. These findings provide some of evidence of the relationship between socioeconomic deprivation and brain network topology.http://journal.frontiersin.org/Journal/10.3389/fnhum.2013.00722/fullcortical thicknessmodularitygraph theorydeprivationSocioeconomic statusgraph theoretical analysis
collection DOAJ
language English
format Article
sources DOAJ
author Rajeev eKrishnadas
Jongrae eKim
John eMcLean
David G Batty
Jennifer eMcLean
Keith eMillar
Chris ePackard
Jonathan eCavanagh
spellingShingle Rajeev eKrishnadas
Jongrae eKim
John eMcLean
David G Batty
Jennifer eMcLean
Keith eMillar
Chris ePackard
Jonathan eCavanagh
The envirome and the connectome: exploring the structural noise in the human brain associated with socioeconomic deprivation
Frontiers in Human Neuroscience
cortical thickness
modularity
graph theory
deprivation
Socioeconomic status
graph theoretical analysis
author_facet Rajeev eKrishnadas
Jongrae eKim
John eMcLean
David G Batty
Jennifer eMcLean
Keith eMillar
Chris ePackard
Jonathan eCavanagh
author_sort Rajeev eKrishnadas
title The envirome and the connectome: exploring the structural noise in the human brain associated with socioeconomic deprivation
title_short The envirome and the connectome: exploring the structural noise in the human brain associated with socioeconomic deprivation
title_full The envirome and the connectome: exploring the structural noise in the human brain associated with socioeconomic deprivation
title_fullStr The envirome and the connectome: exploring the structural noise in the human brain associated with socioeconomic deprivation
title_full_unstemmed The envirome and the connectome: exploring the structural noise in the human brain associated with socioeconomic deprivation
title_sort envirome and the connectome: exploring the structural noise in the human brain associated with socioeconomic deprivation
publisher Frontiers Media S.A.
series Frontiers in Human Neuroscience
issn 1662-5161
publishDate 2013-11-01
description Complex cognitive functions are widely recognized to be the result of a number of brain regions working together as large-scale networks. Recently, complex network analysis has been used to characterize various structural properties of the large scale network organization of the brain. For example, the human brain has been found to have a modular architecture i.e. regions within the network form communities (modules) with more connections between regions within the community compared to regions outside it. The aim of this study was to examine the modular and overlapping modular architecture of the brain networks using complex network analysis. We also examined the association between neighborhood level deprivation and brain network structure – modularity and grey nodes. We compared network structure derived from anatomical MRI scans of 42 middle-aged neurologically healthy men from the least (LD) and the most deprived (MD) neighborhoods of Glasgow with their corresponding random networks. Cortical morphological covariance networks were constructed from the cortical thickness derived from the MRI scans of the brain. For a given modularity threshold, networks derived from the MD group showed similar number of modules compared to their corresponding random networks, while networks derived from the LD group had more modules compared to their corresponding random networks. The MD group also had fewer grey nodes – a measure of overlapping modular structure. These results suggest that apparent structural difference in brain networks groups may be driven by differences in cortical thicknesses between groups. This demonstrates a structural organization that is consistent with a system that is less robust and less efficient in information processing. These findings provide some of evidence of the relationship between socioeconomic deprivation and brain network topology.
topic cortical thickness
modularity
graph theory
deprivation
Socioeconomic status
graph theoretical analysis
url http://journal.frontiersin.org/Journal/10.3389/fnhum.2013.00722/full
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