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3D scattering transforms for disease classification in neuroimaging

Classifying neurodegenerative brain diseases in MRI aims at correctly assigning discrete labels to MRI scans. Such labels usually refer to a diagnostic decision a learner infers based on what it has learned from a training sample of MRI scans. Classification from MRI voxels separately typically does...

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Autores principales: Adel, Tameem, Cohen, Taco, Caan, Matthan, Welling, Max
Formato: Online Artículo Texto
Lenguaje:English
Publicado: Elsevier 2017
Materias:
Acceso en línea:https://www.ncbi.nlm.nih.gov/pmc/articles/PMC5338908/
https://www.ncbi.nlm.nih.gov/pubmed/28289601
http://dx.doi.org/10.1016/j.nicl.2017.02.004
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author Adel, Tameem
Cohen, Taco
Caan, Matthan
Welling, Max
author_facet Adel, Tameem
Cohen, Taco
Caan, Matthan
Welling, Max
author_sort Adel, Tameem
collection PubMed
description Classifying neurodegenerative brain diseases in MRI aims at correctly assigning discrete labels to MRI scans. Such labels usually refer to a diagnostic decision a learner infers based on what it has learned from a training sample of MRI scans. Classification from MRI voxels separately typically does not provide independent evidence towards or against a class; the information relevant for classification is only present in the form of complicated multivariate patterns (or “features”). Deep learning solves this problem by learning a sequence of non-linear transformations that result in feature representations that are better suited to classification. Such learned features have been shown to drastically outperform hand-engineered features in computer vision and audio analysis domains. However, applying the deep learning approach to the task of MRI classification is extremely challenging, because it requires a very large amount of data which is currently not available. We propose to instead use a three dimensional scattering transform, which resembles a deep convolutional neural network but has no learnable parameters. Furthermore, the scattering transform linearizes diffeomorphisms (due to e.g. residual anatomical variability in MRI scans), making the different disease states more easily separable using a linear classifier. In experiments on brain morphometry in Alzheimer's disease, and on white matter microstructural damage in HIV, scattering representations are shown to be highly effective for the task of disease classification. For instance, in semi-supervised learning of progressive versus stable MCI, we reach an accuracy of 82.7%. We also present a visualization method to highlight areas that provide evidence for or against a certain class, both on an individual and group level.
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spelling pubmed-53389082017-03-13 3D scattering transforms for disease classification in neuroimaging Adel, Tameem Cohen, Taco Caan, Matthan Welling, Max Neuroimage Clin Regular Article Classifying neurodegenerative brain diseases in MRI aims at correctly assigning discrete labels to MRI scans. Such labels usually refer to a diagnostic decision a learner infers based on what it has learned from a training sample of MRI scans. Classification from MRI voxels separately typically does not provide independent evidence towards or against a class; the information relevant for classification is only present in the form of complicated multivariate patterns (or “features”). Deep learning solves this problem by learning a sequence of non-linear transformations that result in feature representations that are better suited to classification. Such learned features have been shown to drastically outperform hand-engineered features in computer vision and audio analysis domains. However, applying the deep learning approach to the task of MRI classification is extremely challenging, because it requires a very large amount of data which is currently not available. We propose to instead use a three dimensional scattering transform, which resembles a deep convolutional neural network but has no learnable parameters. Furthermore, the scattering transform linearizes diffeomorphisms (due to e.g. residual anatomical variability in MRI scans), making the different disease states more easily separable using a linear classifier. In experiments on brain morphometry in Alzheimer's disease, and on white matter microstructural damage in HIV, scattering representations are shown to be highly effective for the task of disease classification. For instance, in semi-supervised learning of progressive versus stable MCI, we reach an accuracy of 82.7%. We also present a visualization method to highlight areas that provide evidence for or against a certain class, both on an individual and group level. Elsevier 2017-02-10 /pmc/articles/PMC5338908/ /pubmed/28289601 http://dx.doi.org/10.1016/j.nicl.2017.02.004 Text en © 2017 The Authors http://creativecommons.org/licenses/by-nc-nd/4.0/ This is an open access article under the CC BY-NC-ND license (http://creativecommons.org/licenses/by-nc-nd/4.0/).
spellingShingle Regular Article
Adel, Tameem
Cohen, Taco
Caan, Matthan
Welling, Max
3D scattering transforms for disease classification in neuroimaging
title 3D scattering transforms for disease classification in neuroimaging
title_full 3D scattering transforms for disease classification in neuroimaging
title_fullStr 3D scattering transforms for disease classification in neuroimaging
title_full_unstemmed 3D scattering transforms for disease classification in neuroimaging
title_short 3D scattering transforms for disease classification in neuroimaging
title_sort 3d scattering transforms for disease classification in neuroimaging
topic Regular Article
url https://www.ncbi.nlm.nih.gov/pmc/articles/PMC5338908/
https://www.ncbi.nlm.nih.gov/pubmed/28289601
http://dx.doi.org/10.1016/j.nicl.2017.02.004
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