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Deep Bayesian networks for uncertainty estimation and adversarial resistance of white matter hyperintensity segmentation

White matter hyperintensities (WMHs) are frequently observed on structural neuroimaging of elderly populations and are associated with cognitive decline and increased risk of dementia. Many existing WMH segmentation algorithms produce suboptimal results in populations with vascular lesions or brain...

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Autores principales: Mojiri Forooshani, Parisa, Biparva, Mahdi, Ntiri, Emmanuel E., Ramirez, Joel, Boone, Lyndon, Holmes, Melissa F., Adamo, Sabrina, Gao, Fuqiang, Ozzoude, Miracle, Scott, Christopher J. M., Dowlatshahi, Dar, Lawrence‐Dewar, Jane M., Kwan, Donna, Lang, Anthony E., Marcotte, Karine, Leonard, Carol, Rochon, Elizabeth, Heyn, Chris, Bartha, Robert, Strother, Stephen, Tardif, Jean‐Claude, Symons, Sean, Masellis, Mario, Swartz, Richard H., Moody, Alan, Black, Sandra E., Goubran, Maged
Formato: Online Artículo Texto
Lenguaje:English
Publicado: John Wiley & Sons, Inc. 2022
Materias:
Acceso en línea:https://www.ncbi.nlm.nih.gov/pmc/articles/PMC8996363/
https://www.ncbi.nlm.nih.gov/pubmed/35088930
http://dx.doi.org/10.1002/hbm.25784
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author Mojiri Forooshani, Parisa
Biparva, Mahdi
Ntiri, Emmanuel E.
Ramirez, Joel
Boone, Lyndon
Holmes, Melissa F.
Adamo, Sabrina
Gao, Fuqiang
Ozzoude, Miracle
Scott, Christopher J. M.
Dowlatshahi, Dar
Lawrence‐Dewar, Jane M.
Kwan, Donna
Lang, Anthony E.
Marcotte, Karine
Leonard, Carol
Rochon, Elizabeth
Heyn, Chris
Bartha, Robert
Strother, Stephen
Tardif, Jean‐Claude
Symons, Sean
Masellis, Mario
Swartz, Richard H.
Moody, Alan
Black, Sandra E.
Goubran, Maged
author_facet Mojiri Forooshani, Parisa
Biparva, Mahdi
Ntiri, Emmanuel E.
Ramirez, Joel
Boone, Lyndon
Holmes, Melissa F.
Adamo, Sabrina
Gao, Fuqiang
Ozzoude, Miracle
Scott, Christopher J. M.
Dowlatshahi, Dar
Lawrence‐Dewar, Jane M.
Kwan, Donna
Lang, Anthony E.
Marcotte, Karine
Leonard, Carol
Rochon, Elizabeth
Heyn, Chris
Bartha, Robert
Strother, Stephen
Tardif, Jean‐Claude
Symons, Sean
Masellis, Mario
Swartz, Richard H.
Moody, Alan
Black, Sandra E.
Goubran, Maged
author_sort Mojiri Forooshani, Parisa
collection PubMed
description White matter hyperintensities (WMHs) are frequently observed on structural neuroimaging of elderly populations and are associated with cognitive decline and increased risk of dementia. Many existing WMH segmentation algorithms produce suboptimal results in populations with vascular lesions or brain atrophy, or require parameter tuning and are computationally expensive. Additionally, most algorithms do not generate a confidence estimate of segmentation quality, limiting their interpretation. MRI‐based segmentation methods are often sensitive to acquisition protocols, scanners, noise‐level, and image contrast, failing to generalize to other populations and out‐of‐distribution datasets. Given these concerns, we propose a novel Bayesian 3D convolutional neural network with a U‐Net architecture that automatically segments WMH, provides uncertainty estimates of the segmentation output for quality control, and is robust to changes in acquisition protocols. We also provide a second model to differentiate deep and periventricular WMH. Four hundred thirty‐two subjects were recruited to train the CNNs from four multisite imaging studies. A separate test set of 158 subjects was used for evaluation, including an unseen multisite study. We compared our model to two established state‐of‐the‐art techniques (BIANCA and DeepMedic), highlighting its accuracy and efficiency. Our Bayesian 3D U‐Net achieved the highest Dice similarity coefficient of 0.89 ± 0.08 and the lowest modified Hausdorff distance of 2.98 ± 4.40 mm. We further validated our models highlighting their robustness on “clinical adversarial cases” simulating data with low signal‐to‐noise ratio, low resolution, and different contrast (stemming from MRI sequences with different parameters). Our pipeline and models are available at: https://hypermapp3r.readthedocs.io.
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spelling pubmed-89963632022-04-15 Deep Bayesian networks for uncertainty estimation and adversarial resistance of white matter hyperintensity segmentation Mojiri Forooshani, Parisa Biparva, Mahdi Ntiri, Emmanuel E. Ramirez, Joel Boone, Lyndon Holmes, Melissa F. Adamo, Sabrina Gao, Fuqiang Ozzoude, Miracle Scott, Christopher J. M. Dowlatshahi, Dar Lawrence‐Dewar, Jane M. Kwan, Donna Lang, Anthony E. Marcotte, Karine Leonard, Carol Rochon, Elizabeth Heyn, Chris Bartha, Robert Strother, Stephen Tardif, Jean‐Claude Symons, Sean Masellis, Mario Swartz, Richard H. Moody, Alan Black, Sandra E. Goubran, Maged Hum Brain Mapp Technical Report White matter hyperintensities (WMHs) are frequently observed on structural neuroimaging of elderly populations and are associated with cognitive decline and increased risk of dementia. Many existing WMH segmentation algorithms produce suboptimal results in populations with vascular lesions or brain atrophy, or require parameter tuning and are computationally expensive. Additionally, most algorithms do not generate a confidence estimate of segmentation quality, limiting their interpretation. MRI‐based segmentation methods are often sensitive to acquisition protocols, scanners, noise‐level, and image contrast, failing to generalize to other populations and out‐of‐distribution datasets. Given these concerns, we propose a novel Bayesian 3D convolutional neural network with a U‐Net architecture that automatically segments WMH, provides uncertainty estimates of the segmentation output for quality control, and is robust to changes in acquisition protocols. We also provide a second model to differentiate deep and periventricular WMH. Four hundred thirty‐two subjects were recruited to train the CNNs from four multisite imaging studies. A separate test set of 158 subjects was used for evaluation, including an unseen multisite study. We compared our model to two established state‐of‐the‐art techniques (BIANCA and DeepMedic), highlighting its accuracy and efficiency. Our Bayesian 3D U‐Net achieved the highest Dice similarity coefficient of 0.89 ± 0.08 and the lowest modified Hausdorff distance of 2.98 ± 4.40 mm. We further validated our models highlighting their robustness on “clinical adversarial cases” simulating data with low signal‐to‐noise ratio, low resolution, and different contrast (stemming from MRI sequences with different parameters). Our pipeline and models are available at: https://hypermapp3r.readthedocs.io. John Wiley & Sons, Inc. 2022-01-28 /pmc/articles/PMC8996363/ /pubmed/35088930 http://dx.doi.org/10.1002/hbm.25784 Text en © 2022 The Authors. Human Brain Mapping published by Wiley Periodicals LLC. https://creativecommons.org/licenses/by-nc-nd/4.0/This is an open access article under the terms of the http://creativecommons.org/licenses/by-nc-nd/4.0/ (https://creativecommons.org/licenses/by-nc-nd/4.0/) License, which permits use and distribution in any medium, provided the original work is properly cited, the use is non‐commercial and no modifications or adaptations are made.
spellingShingle Technical Report
Mojiri Forooshani, Parisa
Biparva, Mahdi
Ntiri, Emmanuel E.
Ramirez, Joel
Boone, Lyndon
Holmes, Melissa F.
Adamo, Sabrina
Gao, Fuqiang
Ozzoude, Miracle
Scott, Christopher J. M.
Dowlatshahi, Dar
Lawrence‐Dewar, Jane M.
Kwan, Donna
Lang, Anthony E.
Marcotte, Karine
Leonard, Carol
Rochon, Elizabeth
Heyn, Chris
Bartha, Robert
Strother, Stephen
Tardif, Jean‐Claude
Symons, Sean
Masellis, Mario
Swartz, Richard H.
Moody, Alan
Black, Sandra E.
Goubran, Maged
Deep Bayesian networks for uncertainty estimation and adversarial resistance of white matter hyperintensity segmentation
title Deep Bayesian networks for uncertainty estimation and adversarial resistance of white matter hyperintensity segmentation
title_full Deep Bayesian networks for uncertainty estimation and adversarial resistance of white matter hyperintensity segmentation
title_fullStr Deep Bayesian networks for uncertainty estimation and adversarial resistance of white matter hyperintensity segmentation
title_full_unstemmed Deep Bayesian networks for uncertainty estimation and adversarial resistance of white matter hyperintensity segmentation
title_short Deep Bayesian networks for uncertainty estimation and adversarial resistance of white matter hyperintensity segmentation
title_sort deep bayesian networks for uncertainty estimation and adversarial resistance of white matter hyperintensity segmentation
topic Technical Report
url https://www.ncbi.nlm.nih.gov/pmc/articles/PMC8996363/
https://www.ncbi.nlm.nih.gov/pubmed/35088930
http://dx.doi.org/10.1002/hbm.25784
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