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From a deep learning model back to the brain—Identifying regional predictors and their relation to aging

We present a Deep Learning framework for the prediction of chronological age from structural magnetic resonance imaging scans. Previous findings associate increased brain age with neurodegenerative diseases and higher mortality rates. However, the importance of brain age prediction goes beyond servi...

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Autores principales: Levakov, Gidon, Rosenthal, Gideon, Shelef, Ilan, Raviv, Tammy Riklin, Avidan, Galia
Formato: Online Artículo Texto
Lenguaje:English
Publicado: John Wiley & Sons, Inc. 2020
Materias:
Acceso en línea:https://www.ncbi.nlm.nih.gov/pmc/articles/PMC7426775/
https://www.ncbi.nlm.nih.gov/pubmed/32320123
http://dx.doi.org/10.1002/hbm.25011
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author Levakov, Gidon
Rosenthal, Gideon
Shelef, Ilan
Raviv, Tammy Riklin
Avidan, Galia
author_facet Levakov, Gidon
Rosenthal, Gideon
Shelef, Ilan
Raviv, Tammy Riklin
Avidan, Galia
author_sort Levakov, Gidon
collection PubMed
description We present a Deep Learning framework for the prediction of chronological age from structural magnetic resonance imaging scans. Previous findings associate increased brain age with neurodegenerative diseases and higher mortality rates. However, the importance of brain age prediction goes beyond serving as biomarkers for neurological disorders. Specifically, utilizing convolutional neural network (CNN) analysis to identify brain regions contributing to the prediction can shed light on the complex multivariate process of brain aging. Previous work examined methods to attribute pixel/voxel‐wise contributions to the prediction in a single image, resulting in “explanation maps” that were found noisy and unreliable. To address this problem, we developed an inference scheme for combining these maps across subjects, thus creating a population‐based, rather than a subject‐specific map. We applied this method to a CNN ensemble trained on predicting subjects' age from raw T1 brain images in a lifespan sample of 10,176 subjects. Evaluating the model on an untouched test set resulted in mean absolute error of 3.07 years and a correlation between chronological and predicted age of r = 0.98. Using the inference method, we revealed that cavities containing cerebrospinal fluid, previously found as general atrophy markers, had the highest contribution for age prediction. Comparing maps derived from different models within the ensemble allowed to assess differences and similarities in brain regions utilized by the model. We showed that this method substantially increased the replicability of explanation maps, converged with results from voxel‐based morphometry age studies and highlighted brain regions whose volumetric variability correlated the most with the prediction error.
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spelling pubmed-74267752020-08-16 From a deep learning model back to the brain—Identifying regional predictors and their relation to aging Levakov, Gidon Rosenthal, Gideon Shelef, Ilan Raviv, Tammy Riklin Avidan, Galia Hum Brain Mapp Research Articles We present a Deep Learning framework for the prediction of chronological age from structural magnetic resonance imaging scans. Previous findings associate increased brain age with neurodegenerative diseases and higher mortality rates. However, the importance of brain age prediction goes beyond serving as biomarkers for neurological disorders. Specifically, utilizing convolutional neural network (CNN) analysis to identify brain regions contributing to the prediction can shed light on the complex multivariate process of brain aging. Previous work examined methods to attribute pixel/voxel‐wise contributions to the prediction in a single image, resulting in “explanation maps” that were found noisy and unreliable. To address this problem, we developed an inference scheme for combining these maps across subjects, thus creating a population‐based, rather than a subject‐specific map. We applied this method to a CNN ensemble trained on predicting subjects' age from raw T1 brain images in a lifespan sample of 10,176 subjects. Evaluating the model on an untouched test set resulted in mean absolute error of 3.07 years and a correlation between chronological and predicted age of r = 0.98. Using the inference method, we revealed that cavities containing cerebrospinal fluid, previously found as general atrophy markers, had the highest contribution for age prediction. Comparing maps derived from different models within the ensemble allowed to assess differences and similarities in brain regions utilized by the model. We showed that this method substantially increased the replicability of explanation maps, converged with results from voxel‐based morphometry age studies and highlighted brain regions whose volumetric variability correlated the most with the prediction error. John Wiley & Sons, Inc. 2020-04-22 /pmc/articles/PMC7426775/ /pubmed/32320123 http://dx.doi.org/10.1002/hbm.25011 Text en © 2020 The Authors. Human Brain Mapping published by Wiley Periodicals, Inc. This is an open access article under the terms of the http://creativecommons.org/licenses/by-nc/4.0/ License, which permits use, distribution and reproduction in any medium, provided the original work is properly cited and is not used for commercial purposes.
spellingShingle Research Articles
Levakov, Gidon
Rosenthal, Gideon
Shelef, Ilan
Raviv, Tammy Riklin
Avidan, Galia
From a deep learning model back to the brain—Identifying regional predictors and their relation to aging
title From a deep learning model back to the brain—Identifying regional predictors and their relation to aging
title_full From a deep learning model back to the brain—Identifying regional predictors and their relation to aging
title_fullStr From a deep learning model back to the brain—Identifying regional predictors and their relation to aging
title_full_unstemmed From a deep learning model back to the brain—Identifying regional predictors and their relation to aging
title_short From a deep learning model back to the brain—Identifying regional predictors and their relation to aging
title_sort from a deep learning model back to the brain—identifying regional predictors and their relation to aging
topic Research Articles
url https://www.ncbi.nlm.nih.gov/pmc/articles/PMC7426775/
https://www.ncbi.nlm.nih.gov/pubmed/32320123
http://dx.doi.org/10.1002/hbm.25011
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