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Analysing linear multivariate pattern transformations in neuroimaging data

Most connectivity metrics in neuroimaging research reduce multivariate activity patterns in regions-of-interests (ROIs) to one dimension, which leads to a loss of information. Importantly, it prevents us from investigating the transformations between patterns in different ROIs. Here, we applied line...

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Autores principales: Basti, Alessio, Mur, Marieke, Kriegeskorte, Nikolaus, Pizzella, Vittorio, Marzetti, Laura, Hauk, Olaf
Formato: Online Artículo Texto
Lenguaje:English
Publicado: Public Library of Science 2019
Materias:
Acceso en línea:https://www.ncbi.nlm.nih.gov/pmc/articles/PMC6793861/
https://www.ncbi.nlm.nih.gov/pubmed/31613918
http://dx.doi.org/10.1371/journal.pone.0223660
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author Basti, Alessio
Mur, Marieke
Kriegeskorte, Nikolaus
Pizzella, Vittorio
Marzetti, Laura
Hauk, Olaf
author_facet Basti, Alessio
Mur, Marieke
Kriegeskorte, Nikolaus
Pizzella, Vittorio
Marzetti, Laura
Hauk, Olaf
author_sort Basti, Alessio
collection PubMed
description Most connectivity metrics in neuroimaging research reduce multivariate activity patterns in regions-of-interests (ROIs) to one dimension, which leads to a loss of information. Importantly, it prevents us from investigating the transformations between patterns in different ROIs. Here, we applied linear estimation theory in order to robustly estimate the linear transformations between multivariate fMRI patterns with a cross-validated ridge regression approach. We used three functional connectivity metrics that describe different features of these voxel-by-voxel mappings: goodness-of-fit, sparsity and pattern deformation. The goodness-of-fit describes the degree to which the patterns in an input region can be described as a linear transformation of patterns in an output region. The sparsity metric, which relies on a Monte Carlo procedure, was introduced in order to test whether the transformation mostly consists of one-to-one mappings between voxels in different regions. Furthermore, we defined a metric for pattern deformation, i.e. the degree to which the transformation rotates or rescales the input patterns. As a proof of concept, we applied these metrics to an event-related fMRI data set consisting of four subjects that has been used in previous studies. We focused on the transformations from early visual cortex (EVC) to inferior temporal cortex (ITC), fusiform face area (FFA) and parahippocampal place area (PPA). Our results suggest that the estimated linear mappings explain a significant amount of response variance in the three output ROIs. The transformation from EVC to ITC shows the highest goodness-of-fit, and those from EVC to FFA and PPA show the expected preference for faces and places as well as animate and inanimate objects, respectively. The pattern transformations are sparse, but sparsity is lower than would have been expected for one-to-one mappings, thus suggesting the presence of one-to-few voxel mappings. The mappings are also characterised by different levels of pattern deformations, thus indicating that the transformations differentially amplify or dampen certain dimensions of the input patterns. While our results are only based on a small number of subjects, they show that our pattern transformation metrics can describe novel aspects of multivariate functional connectivity in neuroimaging data.
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spelling pubmed-67938612019-10-25 Analysing linear multivariate pattern transformations in neuroimaging data Basti, Alessio Mur, Marieke Kriegeskorte, Nikolaus Pizzella, Vittorio Marzetti, Laura Hauk, Olaf PLoS One Research Article Most connectivity metrics in neuroimaging research reduce multivariate activity patterns in regions-of-interests (ROIs) to one dimension, which leads to a loss of information. Importantly, it prevents us from investigating the transformations between patterns in different ROIs. Here, we applied linear estimation theory in order to robustly estimate the linear transformations between multivariate fMRI patterns with a cross-validated ridge regression approach. We used three functional connectivity metrics that describe different features of these voxel-by-voxel mappings: goodness-of-fit, sparsity and pattern deformation. The goodness-of-fit describes the degree to which the patterns in an input region can be described as a linear transformation of patterns in an output region. The sparsity metric, which relies on a Monte Carlo procedure, was introduced in order to test whether the transformation mostly consists of one-to-one mappings between voxels in different regions. Furthermore, we defined a metric for pattern deformation, i.e. the degree to which the transformation rotates or rescales the input patterns. As a proof of concept, we applied these metrics to an event-related fMRI data set consisting of four subjects that has been used in previous studies. We focused on the transformations from early visual cortex (EVC) to inferior temporal cortex (ITC), fusiform face area (FFA) and parahippocampal place area (PPA). Our results suggest that the estimated linear mappings explain a significant amount of response variance in the three output ROIs. The transformation from EVC to ITC shows the highest goodness-of-fit, and those from EVC to FFA and PPA show the expected preference for faces and places as well as animate and inanimate objects, respectively. The pattern transformations are sparse, but sparsity is lower than would have been expected for one-to-one mappings, thus suggesting the presence of one-to-few voxel mappings. The mappings are also characterised by different levels of pattern deformations, thus indicating that the transformations differentially amplify or dampen certain dimensions of the input patterns. While our results are only based on a small number of subjects, they show that our pattern transformation metrics can describe novel aspects of multivariate functional connectivity in neuroimaging data. Public Library of Science 2019-10-15 /pmc/articles/PMC6793861/ /pubmed/31613918 http://dx.doi.org/10.1371/journal.pone.0223660 Text en © 2019 Basti 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 (http://creativecommons.org/licenses/by/4.0/) , which permits unrestricted use, distribution, and reproduction in any medium, provided the original author and source are credited.
spellingShingle Research Article
Basti, Alessio
Mur, Marieke
Kriegeskorte, Nikolaus
Pizzella, Vittorio
Marzetti, Laura
Hauk, Olaf
Analysing linear multivariate pattern transformations in neuroimaging data
title Analysing linear multivariate pattern transformations in neuroimaging data
title_full Analysing linear multivariate pattern transformations in neuroimaging data
title_fullStr Analysing linear multivariate pattern transformations in neuroimaging data
title_full_unstemmed Analysing linear multivariate pattern transformations in neuroimaging data
title_short Analysing linear multivariate pattern transformations in neuroimaging data
title_sort analysing linear multivariate pattern transformations in neuroimaging data
topic Research Article
url https://www.ncbi.nlm.nih.gov/pmc/articles/PMC6793861/
https://www.ncbi.nlm.nih.gov/pubmed/31613918
http://dx.doi.org/10.1371/journal.pone.0223660
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