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A Bayesian spatial model for neuroimaging data based on biologically informed basis functions

The dominant approach to neuroimaging data analysis employs the voxel as the unit of computation. While convenient, voxels lack biological meaning and their size is arbitrarily determined by the resolution of the image. Here, we propose a multivariate spatial model in which neuroimaging data are cha...

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Autores principales: Huertas, Ismael, Oldehinkel, Marianne, van Oort, Erik S.B., Garcia-Solis, David, Mir, Pablo, Beckmann, Christian F., Marquand, Andre F.
Formato: Online Artículo Texto
Lenguaje:English
Publicado: Academic Press 2017
Materias:
Acceso en línea:https://www.ncbi.nlm.nih.gov/pmc/articles/PMC5692833/
https://www.ncbi.nlm.nih.gov/pubmed/28782681
http://dx.doi.org/10.1016/j.neuroimage.2017.08.009
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author Huertas, Ismael
Oldehinkel, Marianne
van Oort, Erik S.B.
Garcia-Solis, David
Mir, Pablo
Beckmann, Christian F.
Marquand, Andre F.
author_facet Huertas, Ismael
Oldehinkel, Marianne
van Oort, Erik S.B.
Garcia-Solis, David
Mir, Pablo
Beckmann, Christian F.
Marquand, Andre F.
author_sort Huertas, Ismael
collection PubMed
description The dominant approach to neuroimaging data analysis employs the voxel as the unit of computation. While convenient, voxels lack biological meaning and their size is arbitrarily determined by the resolution of the image. Here, we propose a multivariate spatial model in which neuroimaging data are characterised as a linearly weighted combination of multiscale basis functions which map onto underlying brain nuclei or networks or nuclei. In this model, the elementary building blocks are derived to reflect the functional anatomy of the brain during the resting state. This model is estimated using a Bayesian framework which accurately quantifies uncertainty and automatically finds the most accurate and parsimonious combination of basis functions describing the data. We demonstrate the utility of this framework by predicting quantitative SPECT images of striatal dopamine function and we compare a variety of basis sets including generic isotropic functions, anatomical representations of the striatum derived from structural MRI, and two different soft functional parcellations of the striatum derived from resting-state fMRI (rfMRI). We found that a combination of ∼50 multiscale functional basis functions accurately represented the striatal dopamine activity, and that functional basis functions derived from an advanced parcellation technique known as Instantaneous Connectivity Parcellation (ICP) provided the most parsimonious models of dopamine function. Importantly, functional basis functions derived from resting fMRI were more accurate than both structural and generic basis sets in representing dopamine function in the striatum for a fixed model order. We demonstrate the translational validity of our framework by constructing classification models for discriminating parkinsonian disorders and their subtypes. Here, we show that ICP approach is the only basis set that performs well across all comparisons and performs better overall than the classical voxel-based approach. This spatial model constitutes an elegant alternative to voxel-based approaches in neuroimaging studies; not only are their atoms biologically informed, they are also adaptive to high resolutions, represent high dimensions efficiently, and capture long-range spatial dependencies, which are important and challenging objectives for neuroimaging data.
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spelling pubmed-56928332017-11-28 A Bayesian spatial model for neuroimaging data based on biologically informed basis functions Huertas, Ismael Oldehinkel, Marianne van Oort, Erik S.B. Garcia-Solis, David Mir, Pablo Beckmann, Christian F. Marquand, Andre F. Neuroimage Article The dominant approach to neuroimaging data analysis employs the voxel as the unit of computation. While convenient, voxels lack biological meaning and their size is arbitrarily determined by the resolution of the image. Here, we propose a multivariate spatial model in which neuroimaging data are characterised as a linearly weighted combination of multiscale basis functions which map onto underlying brain nuclei or networks or nuclei. In this model, the elementary building blocks are derived to reflect the functional anatomy of the brain during the resting state. This model is estimated using a Bayesian framework which accurately quantifies uncertainty and automatically finds the most accurate and parsimonious combination of basis functions describing the data. We demonstrate the utility of this framework by predicting quantitative SPECT images of striatal dopamine function and we compare a variety of basis sets including generic isotropic functions, anatomical representations of the striatum derived from structural MRI, and two different soft functional parcellations of the striatum derived from resting-state fMRI (rfMRI). We found that a combination of ∼50 multiscale functional basis functions accurately represented the striatal dopamine activity, and that functional basis functions derived from an advanced parcellation technique known as Instantaneous Connectivity Parcellation (ICP) provided the most parsimonious models of dopamine function. Importantly, functional basis functions derived from resting fMRI were more accurate than both structural and generic basis sets in representing dopamine function in the striatum for a fixed model order. We demonstrate the translational validity of our framework by constructing classification models for discriminating parkinsonian disorders and their subtypes. Here, we show that ICP approach is the only basis set that performs well across all comparisons and performs better overall than the classical voxel-based approach. This spatial model constitutes an elegant alternative to voxel-based approaches in neuroimaging studies; not only are their atoms biologically informed, they are also adaptive to high resolutions, represent high dimensions efficiently, and capture long-range spatial dependencies, which are important and challenging objectives for neuroimaging data. Academic Press 2017-11-01 /pmc/articles/PMC5692833/ /pubmed/28782681 http://dx.doi.org/10.1016/j.neuroimage.2017.08.009 Text en © 2017 The Authors http://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
Huertas, Ismael
Oldehinkel, Marianne
van Oort, Erik S.B.
Garcia-Solis, David
Mir, Pablo
Beckmann, Christian F.
Marquand, Andre F.
A Bayesian spatial model for neuroimaging data based on biologically informed basis functions
title A Bayesian spatial model for neuroimaging data based on biologically informed basis functions
title_full A Bayesian spatial model for neuroimaging data based on biologically informed basis functions
title_fullStr A Bayesian spatial model for neuroimaging data based on biologically informed basis functions
title_full_unstemmed A Bayesian spatial model for neuroimaging data based on biologically informed basis functions
title_short A Bayesian spatial model for neuroimaging data based on biologically informed basis functions
title_sort bayesian spatial model for neuroimaging data based on biologically informed basis functions
topic Article
url https://www.ncbi.nlm.nih.gov/pmc/articles/PMC5692833/
https://www.ncbi.nlm.nih.gov/pubmed/28782681
http://dx.doi.org/10.1016/j.neuroimage.2017.08.009
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