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Hierarchical modelling of functional brain networks in population and individuals from big fMRI data

A major goal of large-scale brain imaging datasets is to provide resources for investigating heterogeneous populations. Characterisation of functional brain networks for individual subjects from these datasets will have an enormous potential for prediction of cognitive or clinical traits. We propose...

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Autores principales: Farahibozorg, Seyedeh-Rezvan, Bijsterbosch, Janine D., Gong, Weikang, Jbabdi, Saad, Smith, Stephen M., Harrison, Samuel J., Woolrich, Mark W.
Formato: Online Artículo Texto
Lenguaje:English
Publicado: Academic Press 2021
Materias:
Acceso en línea:https://www.ncbi.nlm.nih.gov/pmc/articles/PMC8526871/
https://www.ncbi.nlm.nih.gov/pubmed/34450262
http://dx.doi.org/10.1016/j.neuroimage.2021.118513
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author Farahibozorg, Seyedeh-Rezvan
Bijsterbosch, Janine D.
Gong, Weikang
Jbabdi, Saad
Smith, Stephen M.
Harrison, Samuel J.
Woolrich, Mark W.
author_facet Farahibozorg, Seyedeh-Rezvan
Bijsterbosch, Janine D.
Gong, Weikang
Jbabdi, Saad
Smith, Stephen M.
Harrison, Samuel J.
Woolrich, Mark W.
author_sort Farahibozorg, Seyedeh-Rezvan
collection PubMed
description A major goal of large-scale brain imaging datasets is to provide resources for investigating heterogeneous populations. Characterisation of functional brain networks for individual subjects from these datasets will have an enormous potential for prediction of cognitive or clinical traits. We propose for the first time a technique, Stochastic Probabilistic Functional Modes (sPROFUMO), that is scalable to UK Biobank (UKB) with expected 100,000 participants, and hierarchically estimates functional brain networks in individuals and the population, while allowing for bidirectional flow of information between the two. Using simulations, we show the model's utility, especially in scenarios that involve significant cross-subject variability, or require delineation of fine-grained differences between the networks. Subsequently, by applying the model to resting-state fMRI from 4999 UKB subjects, we mapped resting state networks (RSNs) in single subjects with greater detail than has been possible previously in UKB (>100 RSNs), and demonstrate that these RSNs can predict a range of sensorimotor and higher-level cognitive functions. Furthermore, we demonstrate several advantages of the model over independent component analysis combined with dual-regression (ICA-DR), particularly with respect to the estimation of the spatial configuration of the RSNs and the predictive power for cognitive traits. The proposed model and results can open a new door for future investigations into individualised profiles of brain function from big data.
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spelling pubmed-85268712021-11-01 Hierarchical modelling of functional brain networks in population and individuals from big fMRI data Farahibozorg, Seyedeh-Rezvan Bijsterbosch, Janine D. Gong, Weikang Jbabdi, Saad Smith, Stephen M. Harrison, Samuel J. Woolrich, Mark W. Neuroimage Article A major goal of large-scale brain imaging datasets is to provide resources for investigating heterogeneous populations. Characterisation of functional brain networks for individual subjects from these datasets will have an enormous potential for prediction of cognitive or clinical traits. We propose for the first time a technique, Stochastic Probabilistic Functional Modes (sPROFUMO), that is scalable to UK Biobank (UKB) with expected 100,000 participants, and hierarchically estimates functional brain networks in individuals and the population, while allowing for bidirectional flow of information between the two. Using simulations, we show the model's utility, especially in scenarios that involve significant cross-subject variability, or require delineation of fine-grained differences between the networks. Subsequently, by applying the model to resting-state fMRI from 4999 UKB subjects, we mapped resting state networks (RSNs) in single subjects with greater detail than has been possible previously in UKB (>100 RSNs), and demonstrate that these RSNs can predict a range of sensorimotor and higher-level cognitive functions. Furthermore, we demonstrate several advantages of the model over independent component analysis combined with dual-regression (ICA-DR), particularly with respect to the estimation of the spatial configuration of the RSNs and the predictive power for cognitive traits. The proposed model and results can open a new door for future investigations into individualised profiles of brain function from big data. Academic Press 2021-11 /pmc/articles/PMC8526871/ /pubmed/34450262 http://dx.doi.org/10.1016/j.neuroimage.2021.118513 Text en © 2021 The Authors. Published by Elsevier Inc. https://creativecommons.org/licenses/by/4.0/This is an open access article under the CC BY license (http://creativecommons.org/licenses/by/4.0/).
spellingShingle Article
Farahibozorg, Seyedeh-Rezvan
Bijsterbosch, Janine D.
Gong, Weikang
Jbabdi, Saad
Smith, Stephen M.
Harrison, Samuel J.
Woolrich, Mark W.
Hierarchical modelling of functional brain networks in population and individuals from big fMRI data
title Hierarchical modelling of functional brain networks in population and individuals from big fMRI data
title_full Hierarchical modelling of functional brain networks in population and individuals from big fMRI data
title_fullStr Hierarchical modelling of functional brain networks in population and individuals from big fMRI data
title_full_unstemmed Hierarchical modelling of functional brain networks in population and individuals from big fMRI data
title_short Hierarchical modelling of functional brain networks in population and individuals from big fMRI data
title_sort hierarchical modelling of functional brain networks in population and individuals from big fmri data
topic Article
url https://www.ncbi.nlm.nih.gov/pmc/articles/PMC8526871/
https://www.ncbi.nlm.nih.gov/pubmed/34450262
http://dx.doi.org/10.1016/j.neuroimage.2021.118513
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