Changes in community structure of resting state functional connectivity in unipolar depression.

Major depression is a prevalent disorder that imposes a significant burden on society, yet objective laboratory-style tests to assist in diagnosis are lacking. We employed network-based analyses of "resting state" functional neuroimaging data to ascertain group differences in the endogenou...

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Main Authors: Anton Lord, Dorothea Horn, Michael Breakspear, Martin Walter
Format: Article
Language:English
Published: Public Library of Science (PLoS) 2012-01-01
Series:PLoS ONE
Online Access:https://www.ncbi.nlm.nih.gov/pmc/articles/pmid/22916105/?tool=EBI
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spelling doaj-ca2f3e21e2404415ae426188ab7a12d52021-03-04T00:25:01ZengPublic Library of Science (PLoS)PLoS ONE1932-62032012-01-0178e4128210.1371/journal.pone.0041282Changes in community structure of resting state functional connectivity in unipolar depression.Anton LordDorothea HornMichael BreakspearMartin WalterMajor depression is a prevalent disorder that imposes a significant burden on society, yet objective laboratory-style tests to assist in diagnosis are lacking. We employed network-based analyses of "resting state" functional neuroimaging data to ascertain group differences in the endogenous cortical activity between healthy and depressed subjects.We additionally sought to use machine learning techniques to explore the ability of these network-based measures of resting state activity to provide diagnostic information for depression. Resting state fMRI data were acquired from twenty two depressed outpatients and twenty two healthy subjects matched for age and gender. These data were anatomically parcellated and functional connectivity matrices were then derived using the linear correlations between the BOLD signal fluctuations of all pairs of cortical and subcortical regions.We characterised the hierarchical organization of these matrices using network-based matrics, with an emphasis on their mid-scale "modularity" arrangement. Whilst whole brain measures of organization did not differ between groups, a significant rearrangement of their community structure was observed. Furthermore we were able to classify individuals with a high level of accuracy using a support vector machine, primarily through the use of a modularity-based metric known as the participation index.In conclusion, the application of machine learning techniques to features of resting state fMRI network activity shows promising potential to assist in the diagnosis of major depression, now suggesting the need for validation in independent data sets.https://www.ncbi.nlm.nih.gov/pmc/articles/pmid/22916105/?tool=EBI
collection DOAJ
language English
format Article
sources DOAJ
author Anton Lord
Dorothea Horn
Michael Breakspear
Martin Walter
spellingShingle Anton Lord
Dorothea Horn
Michael Breakspear
Martin Walter
Changes in community structure of resting state functional connectivity in unipolar depression.
PLoS ONE
author_facet Anton Lord
Dorothea Horn
Michael Breakspear
Martin Walter
author_sort Anton Lord
title Changes in community structure of resting state functional connectivity in unipolar depression.
title_short Changes in community structure of resting state functional connectivity in unipolar depression.
title_full Changes in community structure of resting state functional connectivity in unipolar depression.
title_fullStr Changes in community structure of resting state functional connectivity in unipolar depression.
title_full_unstemmed Changes in community structure of resting state functional connectivity in unipolar depression.
title_sort changes in community structure of resting state functional connectivity in unipolar depression.
publisher Public Library of Science (PLoS)
series PLoS ONE
issn 1932-6203
publishDate 2012-01-01
description Major depression is a prevalent disorder that imposes a significant burden on society, yet objective laboratory-style tests to assist in diagnosis are lacking. We employed network-based analyses of "resting state" functional neuroimaging data to ascertain group differences in the endogenous cortical activity between healthy and depressed subjects.We additionally sought to use machine learning techniques to explore the ability of these network-based measures of resting state activity to provide diagnostic information for depression. Resting state fMRI data were acquired from twenty two depressed outpatients and twenty two healthy subjects matched for age and gender. These data were anatomically parcellated and functional connectivity matrices were then derived using the linear correlations between the BOLD signal fluctuations of all pairs of cortical and subcortical regions.We characterised the hierarchical organization of these matrices using network-based matrics, with an emphasis on their mid-scale "modularity" arrangement. Whilst whole brain measures of organization did not differ between groups, a significant rearrangement of their community structure was observed. Furthermore we were able to classify individuals with a high level of accuracy using a support vector machine, primarily through the use of a modularity-based metric known as the participation index.In conclusion, the application of machine learning techniques to features of resting state fMRI network activity shows promising potential to assist in the diagnosis of major depression, now suggesting the need for validation in independent data sets.
url https://www.ncbi.nlm.nih.gov/pmc/articles/pmid/22916105/?tool=EBI
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