Cargando…

Higher‐resolution quantification of white matter hypointensities by large‐scale transfer learning from 2D images on the JPSC‐AD cohort

White matter lesions (WML) commonly occur in older brains and are quantifiable on MRI, often used as a biomarker in Aging research. Although algorithms are regularly proposed that identify these lesions from T2‐fluid‐attenuated inversion recovery (FLAIR) sequences, none so far can estimate lesions d...

Descripción completa

Detalles Bibliográficos
Autores principales: Thyreau, Benjamin, Tatewaki, Yasuko, Chen, Liying, Takano, Yuji, Hirabayashi, Naoki, Furuta, Yoshihiko, Hata, Jun, Nakaji, Shigeyuki, Maeda, Tetsuya, Noguchi‐Shinohara, Moeko, Mimura, Masaru, Nakashima, Kenji, Mori, Takaaki, Takebayashi, Minoru, Ninomiya, Toshiharu, Taki, Yasuyuki
Formato: Online Artículo Texto
Lenguaje:English
Publicado: John Wiley & Sons, Inc. 2022
Materias:
Acceso en línea:https://www.ncbi.nlm.nih.gov/pmc/articles/PMC9374893/
https://www.ncbi.nlm.nih.gov/pubmed/35524684
http://dx.doi.org/10.1002/hbm.25899
_version_ 1784767874677604352
author Thyreau, Benjamin
Tatewaki, Yasuko
Chen, Liying
Takano, Yuji
Hirabayashi, Naoki
Furuta, Yoshihiko
Hata, Jun
Nakaji, Shigeyuki
Maeda, Tetsuya
Noguchi‐Shinohara, Moeko
Mimura, Masaru
Nakashima, Kenji
Mori, Takaaki
Takebayashi, Minoru
Ninomiya, Toshiharu
Taki, Yasuyuki
author_facet Thyreau, Benjamin
Tatewaki, Yasuko
Chen, Liying
Takano, Yuji
Hirabayashi, Naoki
Furuta, Yoshihiko
Hata, Jun
Nakaji, Shigeyuki
Maeda, Tetsuya
Noguchi‐Shinohara, Moeko
Mimura, Masaru
Nakashima, Kenji
Mori, Takaaki
Takebayashi, Minoru
Ninomiya, Toshiharu
Taki, Yasuyuki
author_sort Thyreau, Benjamin
collection PubMed
description White matter lesions (WML) commonly occur in older brains and are quantifiable on MRI, often used as a biomarker in Aging research. Although algorithms are regularly proposed that identify these lesions from T2‐fluid‐attenuated inversion recovery (FLAIR) sequences, none so far can estimate lesions directly from T1‐weighted images with acceptable accuracy. Since 3D T1 is a polyvalent and higher‐resolution sequence, it could be beneficial to obtain the distribution of WML directly from it. However a serious difficulty, both for algorithms and human, can be found in the ambiguities of brain signal intensity in T1 images. This manuscript shows that a cross‐domain ConvNet (Convolutional Neural Network) approach can help solve this problem. Still, this is non‐trivial, as it would appear to require a large and varied dataset (for robustness) labelled at the same high resolution (for spatial accuracy). Instead, our model was taught from two‐dimensional FLAIR images with a loss function designed to handle the super‐resolution need. And crucially, we leveraged a very large training set for this task, the recently assembled, multi‐sites Japan Prospective Studies Collaboration for Aging and Dementia (JPSC‐AD) cohort. We describe the two‐step procedure that we followed to handle such a large number of imperfectly labeled samples. A large‐scale accuracy evaluation conducted against FreeSurfer 7, and a further visual expert rating revealed that WML segmentation from our ConvNet was consistently better. Finally, we made a directly usable software program based on that trained ConvNet model, available at https://github.com/bthyreau/deep-T1-WMH.
format Online
Article
Text
id pubmed-9374893
institution National Center for Biotechnology Information
language English
publishDate 2022
publisher John Wiley & Sons, Inc.
record_format MEDLINE/PubMed
spelling pubmed-93748932022-08-17 Higher‐resolution quantification of white matter hypointensities by large‐scale transfer learning from 2D images on the JPSC‐AD cohort Thyreau, Benjamin Tatewaki, Yasuko Chen, Liying Takano, Yuji Hirabayashi, Naoki Furuta, Yoshihiko Hata, Jun Nakaji, Shigeyuki Maeda, Tetsuya Noguchi‐Shinohara, Moeko Mimura, Masaru Nakashima, Kenji Mori, Takaaki Takebayashi, Minoru Ninomiya, Toshiharu Taki, Yasuyuki Hum Brain Mapp Research Articles White matter lesions (WML) commonly occur in older brains and are quantifiable on MRI, often used as a biomarker in Aging research. Although algorithms are regularly proposed that identify these lesions from T2‐fluid‐attenuated inversion recovery (FLAIR) sequences, none so far can estimate lesions directly from T1‐weighted images with acceptable accuracy. Since 3D T1 is a polyvalent and higher‐resolution sequence, it could be beneficial to obtain the distribution of WML directly from it. However a serious difficulty, both for algorithms and human, can be found in the ambiguities of brain signal intensity in T1 images. This manuscript shows that a cross‐domain ConvNet (Convolutional Neural Network) approach can help solve this problem. Still, this is non‐trivial, as it would appear to require a large and varied dataset (for robustness) labelled at the same high resolution (for spatial accuracy). Instead, our model was taught from two‐dimensional FLAIR images with a loss function designed to handle the super‐resolution need. And crucially, we leveraged a very large training set for this task, the recently assembled, multi‐sites Japan Prospective Studies Collaboration for Aging and Dementia (JPSC‐AD) cohort. We describe the two‐step procedure that we followed to handle such a large number of imperfectly labeled samples. A large‐scale accuracy evaluation conducted against FreeSurfer 7, and a further visual expert rating revealed that WML segmentation from our ConvNet was consistently better. Finally, we made a directly usable software program based on that trained ConvNet model, available at https://github.com/bthyreau/deep-T1-WMH. John Wiley & Sons, Inc. 2022-05-07 /pmc/articles/PMC9374893/ /pubmed/35524684 http://dx.doi.org/10.1002/hbm.25899 Text en © 2022 The Authors. Human Brain Mapping published by Wiley Periodicals LLC. https://creativecommons.org/licenses/by/4.0/This is an open access article under the terms of the http://creativecommons.org/licenses/by/4.0/ (https://creativecommons.org/licenses/by/4.0/) License, which permits use, distribution and reproduction in any medium, provided the original work is properly cited.
spellingShingle Research Articles
Thyreau, Benjamin
Tatewaki, Yasuko
Chen, Liying
Takano, Yuji
Hirabayashi, Naoki
Furuta, Yoshihiko
Hata, Jun
Nakaji, Shigeyuki
Maeda, Tetsuya
Noguchi‐Shinohara, Moeko
Mimura, Masaru
Nakashima, Kenji
Mori, Takaaki
Takebayashi, Minoru
Ninomiya, Toshiharu
Taki, Yasuyuki
Higher‐resolution quantification of white matter hypointensities by large‐scale transfer learning from 2D images on the JPSC‐AD cohort
title Higher‐resolution quantification of white matter hypointensities by large‐scale transfer learning from 2D images on the JPSC‐AD cohort
title_full Higher‐resolution quantification of white matter hypointensities by large‐scale transfer learning from 2D images on the JPSC‐AD cohort
title_fullStr Higher‐resolution quantification of white matter hypointensities by large‐scale transfer learning from 2D images on the JPSC‐AD cohort
title_full_unstemmed Higher‐resolution quantification of white matter hypointensities by large‐scale transfer learning from 2D images on the JPSC‐AD cohort
title_short Higher‐resolution quantification of white matter hypointensities by large‐scale transfer learning from 2D images on the JPSC‐AD cohort
title_sort higher‐resolution quantification of white matter hypointensities by large‐scale transfer learning from 2d images on the jpsc‐ad cohort
topic Research Articles
url https://www.ncbi.nlm.nih.gov/pmc/articles/PMC9374893/
https://www.ncbi.nlm.nih.gov/pubmed/35524684
http://dx.doi.org/10.1002/hbm.25899
work_keys_str_mv AT thyreaubenjamin higherresolutionquantificationofwhitematterhypointensitiesbylargescaletransferlearningfrom2dimagesonthejpscadcohort
AT tatewakiyasuko higherresolutionquantificationofwhitematterhypointensitiesbylargescaletransferlearningfrom2dimagesonthejpscadcohort
AT chenliying higherresolutionquantificationofwhitematterhypointensitiesbylargescaletransferlearningfrom2dimagesonthejpscadcohort
AT takanoyuji higherresolutionquantificationofwhitematterhypointensitiesbylargescaletransferlearningfrom2dimagesonthejpscadcohort
AT hirabayashinaoki higherresolutionquantificationofwhitematterhypointensitiesbylargescaletransferlearningfrom2dimagesonthejpscadcohort
AT furutayoshihiko higherresolutionquantificationofwhitematterhypointensitiesbylargescaletransferlearningfrom2dimagesonthejpscadcohort
AT hatajun higherresolutionquantificationofwhitematterhypointensitiesbylargescaletransferlearningfrom2dimagesonthejpscadcohort
AT nakajishigeyuki higherresolutionquantificationofwhitematterhypointensitiesbylargescaletransferlearningfrom2dimagesonthejpscadcohort
AT maedatetsuya higherresolutionquantificationofwhitematterhypointensitiesbylargescaletransferlearningfrom2dimagesonthejpscadcohort
AT noguchishinoharamoeko higherresolutionquantificationofwhitematterhypointensitiesbylargescaletransferlearningfrom2dimagesonthejpscadcohort
AT mimuramasaru higherresolutionquantificationofwhitematterhypointensitiesbylargescaletransferlearningfrom2dimagesonthejpscadcohort
AT nakashimakenji higherresolutionquantificationofwhitematterhypointensitiesbylargescaletransferlearningfrom2dimagesonthejpscadcohort
AT moritakaaki higherresolutionquantificationofwhitematterhypointensitiesbylargescaletransferlearningfrom2dimagesonthejpscadcohort
AT takebayashiminoru higherresolutionquantificationofwhitematterhypointensitiesbylargescaletransferlearningfrom2dimagesonthejpscadcohort
AT ninomiyatoshiharu higherresolutionquantificationofwhitematterhypointensitiesbylargescaletransferlearningfrom2dimagesonthejpscadcohort
AT takiyasuyuki higherresolutionquantificationofwhitematterhypointensitiesbylargescaletransferlearningfrom2dimagesonthejpscadcohort
AT higherresolutionquantificationofwhitematterhypointensitiesbylargescaletransferlearningfrom2dimagesonthejpscadcohort