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Eigenvector Centrality Mapping for Analyzing Connectivity Patterns in fMRI Data of the Human Brain

Functional magnetic resonance data acquired in a task-absent condition (“resting state”) require new data analysis techniques that do not depend on an activation model. In this work, we introduce an alternative assumption- and parameter-free method based on a particular form of node centrality calle...

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Autores principales: Lohmann, Gabriele, Margulies, Daniel S., Horstmann, Annette, Pleger, Burkhard, Lepsien, Joeran, Goldhahn, Dirk, Schloegl, Haiko, Stumvoll, Michael, Villringer, Arno, Turner, Robert
Formato: Texto
Lenguaje:English
Publicado: Public Library of Science 2010
Materias:
Acceso en línea:https://www.ncbi.nlm.nih.gov/pmc/articles/PMC2860504/
https://www.ncbi.nlm.nih.gov/pubmed/20436911
http://dx.doi.org/10.1371/journal.pone.0010232
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author Lohmann, Gabriele
Margulies, Daniel S.
Horstmann, Annette
Pleger, Burkhard
Lepsien, Joeran
Goldhahn, Dirk
Schloegl, Haiko
Stumvoll, Michael
Villringer, Arno
Turner, Robert
author_facet Lohmann, Gabriele
Margulies, Daniel S.
Horstmann, Annette
Pleger, Burkhard
Lepsien, Joeran
Goldhahn, Dirk
Schloegl, Haiko
Stumvoll, Michael
Villringer, Arno
Turner, Robert
author_sort Lohmann, Gabriele
collection PubMed
description Functional magnetic resonance data acquired in a task-absent condition (“resting state”) require new data analysis techniques that do not depend on an activation model. In this work, we introduce an alternative assumption- and parameter-free method based on a particular form of node centrality called eigenvector centrality. Eigenvector centrality attributes a value to each voxel in the brain such that a voxel receives a large value if it is strongly correlated with many other nodes that are themselves central within the network. Google's PageRank algorithm is a variant of eigenvector centrality. Thus far, other centrality measures - in particular “betweenness centrality” - have been applied to fMRI data using a pre-selected set of nodes consisting of several hundred elements. Eigenvector centrality is computationally much more efficient than betweenness centrality and does not require thresholding of similarity values so that it can be applied to thousands of voxels in a region of interest covering the entire cerebrum which would have been infeasible using betweenness centrality. Eigenvector centrality can be used on a variety of different similarity metrics. Here, we present applications based on linear correlations and on spectral coherences between fMRI times series. This latter approach allows us to draw conclusions of connectivity patterns in different spectral bands. We apply this method to fMRI data in task-absent conditions where subjects were in states of hunger or satiety. We show that eigenvector centrality is modulated by the state that the subjects were in. Our analyses demonstrate that eigenvector centrality is a computationally efficient tool for capturing intrinsic neural architecture on a voxel-wise level.
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spelling pubmed-28605042010-04-30 Eigenvector Centrality Mapping for Analyzing Connectivity Patterns in fMRI Data of the Human Brain Lohmann, Gabriele Margulies, Daniel S. Horstmann, Annette Pleger, Burkhard Lepsien, Joeran Goldhahn, Dirk Schloegl, Haiko Stumvoll, Michael Villringer, Arno Turner, Robert PLoS One Research Article Functional magnetic resonance data acquired in a task-absent condition (“resting state”) require new data analysis techniques that do not depend on an activation model. In this work, we introduce an alternative assumption- and parameter-free method based on a particular form of node centrality called eigenvector centrality. Eigenvector centrality attributes a value to each voxel in the brain such that a voxel receives a large value if it is strongly correlated with many other nodes that are themselves central within the network. Google's PageRank algorithm is a variant of eigenvector centrality. Thus far, other centrality measures - in particular “betweenness centrality” - have been applied to fMRI data using a pre-selected set of nodes consisting of several hundred elements. Eigenvector centrality is computationally much more efficient than betweenness centrality and does not require thresholding of similarity values so that it can be applied to thousands of voxels in a region of interest covering the entire cerebrum which would have been infeasible using betweenness centrality. Eigenvector centrality can be used on a variety of different similarity metrics. Here, we present applications based on linear correlations and on spectral coherences between fMRI times series. This latter approach allows us to draw conclusions of connectivity patterns in different spectral bands. We apply this method to fMRI data in task-absent conditions where subjects were in states of hunger or satiety. We show that eigenvector centrality is modulated by the state that the subjects were in. Our analyses demonstrate that eigenvector centrality is a computationally efficient tool for capturing intrinsic neural architecture on a voxel-wise level. Public Library of Science 2010-04-27 /pmc/articles/PMC2860504/ /pubmed/20436911 http://dx.doi.org/10.1371/journal.pone.0010232 Text en Lohmann et al. http://creativecommons.org/licenses/by/4.0/ This is an open-access article distributed under the terms of the Creative Commons Attribution License, which permits unrestricted use, distribution, and reproduction in any medium, provided the original author and source are properly credited.
spellingShingle Research Article
Lohmann, Gabriele
Margulies, Daniel S.
Horstmann, Annette
Pleger, Burkhard
Lepsien, Joeran
Goldhahn, Dirk
Schloegl, Haiko
Stumvoll, Michael
Villringer, Arno
Turner, Robert
Eigenvector Centrality Mapping for Analyzing Connectivity Patterns in fMRI Data of the Human Brain
title Eigenvector Centrality Mapping for Analyzing Connectivity Patterns in fMRI Data of the Human Brain
title_full Eigenvector Centrality Mapping for Analyzing Connectivity Patterns in fMRI Data of the Human Brain
title_fullStr Eigenvector Centrality Mapping for Analyzing Connectivity Patterns in fMRI Data of the Human Brain
title_full_unstemmed Eigenvector Centrality Mapping for Analyzing Connectivity Patterns in fMRI Data of the Human Brain
title_short Eigenvector Centrality Mapping for Analyzing Connectivity Patterns in fMRI Data of the Human Brain
title_sort eigenvector centrality mapping for analyzing connectivity patterns in fmri data of the human brain
topic Research Article
url https://www.ncbi.nlm.nih.gov/pmc/articles/PMC2860504/
https://www.ncbi.nlm.nih.gov/pubmed/20436911
http://dx.doi.org/10.1371/journal.pone.0010232
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