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Learning Cortical Parcellations Using Graph Neural Networks
Deep learning has been applied to magnetic resonance imaging (MRI) for a variety of purposes, ranging from the acceleration of image acquisition and image denoising to tissue segmentation and disease diagnosis. Convolutional neural networks have been particularly useful for analyzing MRI data due to...
Autores principales: | , , |
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Formato: | Online Artículo Texto |
Lenguaje: | English |
Publicado: |
Frontiers Media S.A.
2021
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Materias: | |
Acceso en línea: | https://www.ncbi.nlm.nih.gov/pmc/articles/PMC8739886/ https://www.ncbi.nlm.nih.gov/pubmed/35002611 http://dx.doi.org/10.3389/fnins.2021.797500 |
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author | Eschenburg, Kristian M. Grabowski, Thomas J. Haynor, David R. |
author_facet | Eschenburg, Kristian M. Grabowski, Thomas J. Haynor, David R. |
author_sort | Eschenburg, Kristian M. |
collection | PubMed |
description | Deep learning has been applied to magnetic resonance imaging (MRI) for a variety of purposes, ranging from the acceleration of image acquisition and image denoising to tissue segmentation and disease diagnosis. Convolutional neural networks have been particularly useful for analyzing MRI data due to the regularly sampled spatial and temporal nature of the data. However, advances in the field of brain imaging have led to network- and surface-based analyses that are often better represented in the graph domain. In this analysis, we propose a general purpose cortical segmentation method that, given resting-state connectivity features readily computed during conventional MRI pre-processing and a set of corresponding training labels, can generate cortical parcellations for new MRI data. We applied recent advances in the field of graph neural networks to the problem of cortical surface segmentation, using resting-state connectivity to learn discrete maps of the human neocortex. We found that graph neural networks accurately learn low-dimensional representations of functional brain connectivity that can be naturally extended to map the cortices of new datasets. After optimizing over algorithm type, network architecture, and training features, our approach yielded mean classification accuracies of 79.91% relative to a previously published parcellation. We describe how some hyperparameter choices including training and testing data duration, network architecture, and algorithm choice affect model performance. |
format | Online Article Text |
id | pubmed-8739886 |
institution | National Center for Biotechnology Information |
language | English |
publishDate | 2021 |
publisher | Frontiers Media S.A. |
record_format | MEDLINE/PubMed |
spelling | pubmed-87398862022-01-08 Learning Cortical Parcellations Using Graph Neural Networks Eschenburg, Kristian M. Grabowski, Thomas J. Haynor, David R. Front Neurosci Neuroscience Deep learning has been applied to magnetic resonance imaging (MRI) for a variety of purposes, ranging from the acceleration of image acquisition and image denoising to tissue segmentation and disease diagnosis. Convolutional neural networks have been particularly useful for analyzing MRI data due to the regularly sampled spatial and temporal nature of the data. However, advances in the field of brain imaging have led to network- and surface-based analyses that are often better represented in the graph domain. In this analysis, we propose a general purpose cortical segmentation method that, given resting-state connectivity features readily computed during conventional MRI pre-processing and a set of corresponding training labels, can generate cortical parcellations for new MRI data. We applied recent advances in the field of graph neural networks to the problem of cortical surface segmentation, using resting-state connectivity to learn discrete maps of the human neocortex. We found that graph neural networks accurately learn low-dimensional representations of functional brain connectivity that can be naturally extended to map the cortices of new datasets. After optimizing over algorithm type, network architecture, and training features, our approach yielded mean classification accuracies of 79.91% relative to a previously published parcellation. We describe how some hyperparameter choices including training and testing data duration, network architecture, and algorithm choice affect model performance. Frontiers Media S.A. 2021-12-24 /pmc/articles/PMC8739886/ /pubmed/35002611 http://dx.doi.org/10.3389/fnins.2021.797500 Text en Copyright © 2021 Eschenburg, Grabowski and Haynor. https://creativecommons.org/licenses/by/4.0/This is an open-access article distributed under the terms of the Creative Commons Attribution License (CC BY). The use, distribution or reproduction in other forums is permitted, provided the original author(s) and the copyright owner(s) are credited and that the original publication in this journal is cited, in accordance with accepted academic practice. No use, distribution or reproduction is permitted which does not comply with these terms. |
spellingShingle | Neuroscience Eschenburg, Kristian M. Grabowski, Thomas J. Haynor, David R. Learning Cortical Parcellations Using Graph Neural Networks |
title | Learning Cortical Parcellations Using Graph Neural Networks |
title_full | Learning Cortical Parcellations Using Graph Neural Networks |
title_fullStr | Learning Cortical Parcellations Using Graph Neural Networks |
title_full_unstemmed | Learning Cortical Parcellations Using Graph Neural Networks |
title_short | Learning Cortical Parcellations Using Graph Neural Networks |
title_sort | learning cortical parcellations using graph neural networks |
topic | Neuroscience |
url | https://www.ncbi.nlm.nih.gov/pmc/articles/PMC8739886/ https://www.ncbi.nlm.nih.gov/pubmed/35002611 http://dx.doi.org/10.3389/fnins.2021.797500 |
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