Cargando…
Region-specific deep learning models for accurate segmentation of rectal structures on post-chemoradiation T2w MRI: a multi-institutional, multi-reader study
INTRODUCTION: For locally advanced rectal cancers, in vivo radiological evaluation of tumor extent and regression after neoadjuvant therapy involves implicit visual identification of rectal structures on magnetic resonance imaging (MRI). Additionally, newer image-based, computational approaches (e.g...
Autores principales: | , , , , , , , , , , , , |
---|---|
Formato: | Online Artículo Texto |
Lenguaje: | English |
Publicado: |
Frontiers Media S.A.
2023
|
Materias: | |
Acceso en línea: | https://www.ncbi.nlm.nih.gov/pmc/articles/PMC10213753/ https://www.ncbi.nlm.nih.gov/pubmed/37250635 http://dx.doi.org/10.3389/fmed.2023.1149056 |
_version_ | 1785047695077933056 |
---|---|
author | DeSilvio, Thomas Antunes, Jacob T. Bera, Kaustav Chirra, Prathyush Le, Hoa Liska, David Stein, Sharon L. Marderstein, Eric Hall, William Paspulati, Rajmohan Gollamudi, Jayakrishna Purysko, Andrei S. Viswanath, Satish E. |
author_facet | DeSilvio, Thomas Antunes, Jacob T. Bera, Kaustav Chirra, Prathyush Le, Hoa Liska, David Stein, Sharon L. Marderstein, Eric Hall, William Paspulati, Rajmohan Gollamudi, Jayakrishna Purysko, Andrei S. Viswanath, Satish E. |
author_sort | DeSilvio, Thomas |
collection | PubMed |
description | INTRODUCTION: For locally advanced rectal cancers, in vivo radiological evaluation of tumor extent and regression after neoadjuvant therapy involves implicit visual identification of rectal structures on magnetic resonance imaging (MRI). Additionally, newer image-based, computational approaches (e.g., radiomics) require more detailed and precise annotations of regions such as the outer rectal wall, lumen, and perirectal fat. Manual annotations of these regions, however, are highly laborious and time-consuming as well as subject to inter-reader variability due to tissue boundaries being obscured by treatment-related changes (e.g., fibrosis, edema). METHODS: This study presents the application of U-Net deep learning models that have been uniquely developed with region-specific context to automatically segment each of the outer rectal wall, lumen, and perirectal fat regions on post-treatment, T(2)-weighted MRI scans. RESULTS: In multi-institutional evaluation, region-specific U-Nets (wall Dice = 0.920, lumen Dice = 0.895) were found to perform comparably to multiple readers (wall inter-reader Dice = 0.946, lumen inter-reader Dice = 0.873). Additionally, when compared to a multi-class U-Net, region-specific U-Nets yielded an average 20% improvement in Dice scores for segmenting each of the wall, lumen, and fat; even when tested on T(2)-weighted MRI scans that exhibited poorer image quality, or from a different plane, or were accrued from an external institution. DISCUSSION: Developing deep learning segmentation models with region-specific context may thus enable highly accurate, detailed annotations for multiple rectal structures on post-chemoradiation T(2)-weighted MRI scans, which is critical for improving evaluation of tumor extent in vivo and building accurate image-based analytic tools for rectal cancers. |
format | Online Article Text |
id | pubmed-10213753 |
institution | National Center for Biotechnology Information |
language | English |
publishDate | 2023 |
publisher | Frontiers Media S.A. |
record_format | MEDLINE/PubMed |
spelling | pubmed-102137532023-05-27 Region-specific deep learning models for accurate segmentation of rectal structures on post-chemoradiation T2w MRI: a multi-institutional, multi-reader study DeSilvio, Thomas Antunes, Jacob T. Bera, Kaustav Chirra, Prathyush Le, Hoa Liska, David Stein, Sharon L. Marderstein, Eric Hall, William Paspulati, Rajmohan Gollamudi, Jayakrishna Purysko, Andrei S. Viswanath, Satish E. Front Med (Lausanne) Medicine INTRODUCTION: For locally advanced rectal cancers, in vivo radiological evaluation of tumor extent and regression after neoadjuvant therapy involves implicit visual identification of rectal structures on magnetic resonance imaging (MRI). Additionally, newer image-based, computational approaches (e.g., radiomics) require more detailed and precise annotations of regions such as the outer rectal wall, lumen, and perirectal fat. Manual annotations of these regions, however, are highly laborious and time-consuming as well as subject to inter-reader variability due to tissue boundaries being obscured by treatment-related changes (e.g., fibrosis, edema). METHODS: This study presents the application of U-Net deep learning models that have been uniquely developed with region-specific context to automatically segment each of the outer rectal wall, lumen, and perirectal fat regions on post-treatment, T(2)-weighted MRI scans. RESULTS: In multi-institutional evaluation, region-specific U-Nets (wall Dice = 0.920, lumen Dice = 0.895) were found to perform comparably to multiple readers (wall inter-reader Dice = 0.946, lumen inter-reader Dice = 0.873). Additionally, when compared to a multi-class U-Net, region-specific U-Nets yielded an average 20% improvement in Dice scores for segmenting each of the wall, lumen, and fat; even when tested on T(2)-weighted MRI scans that exhibited poorer image quality, or from a different plane, or were accrued from an external institution. DISCUSSION: Developing deep learning segmentation models with region-specific context may thus enable highly accurate, detailed annotations for multiple rectal structures on post-chemoradiation T(2)-weighted MRI scans, which is critical for improving evaluation of tumor extent in vivo and building accurate image-based analytic tools for rectal cancers. Frontiers Media S.A. 2023-05-11 /pmc/articles/PMC10213753/ /pubmed/37250635 http://dx.doi.org/10.3389/fmed.2023.1149056 Text en Copyright © 2023 DeSilvio, Antunes, Bera, Chirra, Le, Liska, Stein, Marderstein, Hall, Paspulati, Gollamudi, Purysko and Viswanath. 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 | Medicine DeSilvio, Thomas Antunes, Jacob T. Bera, Kaustav Chirra, Prathyush Le, Hoa Liska, David Stein, Sharon L. Marderstein, Eric Hall, William Paspulati, Rajmohan Gollamudi, Jayakrishna Purysko, Andrei S. Viswanath, Satish E. Region-specific deep learning models for accurate segmentation of rectal structures on post-chemoradiation T2w MRI: a multi-institutional, multi-reader study |
title | Region-specific deep learning models for accurate segmentation of rectal structures on post-chemoradiation T2w MRI: a multi-institutional, multi-reader study |
title_full | Region-specific deep learning models for accurate segmentation of rectal structures on post-chemoradiation T2w MRI: a multi-institutional, multi-reader study |
title_fullStr | Region-specific deep learning models for accurate segmentation of rectal structures on post-chemoradiation T2w MRI: a multi-institutional, multi-reader study |
title_full_unstemmed | Region-specific deep learning models for accurate segmentation of rectal structures on post-chemoradiation T2w MRI: a multi-institutional, multi-reader study |
title_short | Region-specific deep learning models for accurate segmentation of rectal structures on post-chemoradiation T2w MRI: a multi-institutional, multi-reader study |
title_sort | region-specific deep learning models for accurate segmentation of rectal structures on post-chemoradiation t2w mri: a multi-institutional, multi-reader study |
topic | Medicine |
url | https://www.ncbi.nlm.nih.gov/pmc/articles/PMC10213753/ https://www.ncbi.nlm.nih.gov/pubmed/37250635 http://dx.doi.org/10.3389/fmed.2023.1149056 |
work_keys_str_mv | AT desilviothomas regionspecificdeeplearningmodelsforaccuratesegmentationofrectalstructuresonpostchemoradiationt2wmriamultiinstitutionalmultireaderstudy AT antunesjacobt regionspecificdeeplearningmodelsforaccuratesegmentationofrectalstructuresonpostchemoradiationt2wmriamultiinstitutionalmultireaderstudy AT berakaustav regionspecificdeeplearningmodelsforaccuratesegmentationofrectalstructuresonpostchemoradiationt2wmriamultiinstitutionalmultireaderstudy AT chirraprathyush regionspecificdeeplearningmodelsforaccuratesegmentationofrectalstructuresonpostchemoradiationt2wmriamultiinstitutionalmultireaderstudy AT lehoa regionspecificdeeplearningmodelsforaccuratesegmentationofrectalstructuresonpostchemoradiationt2wmriamultiinstitutionalmultireaderstudy AT liskadavid regionspecificdeeplearningmodelsforaccuratesegmentationofrectalstructuresonpostchemoradiationt2wmriamultiinstitutionalmultireaderstudy AT steinsharonl regionspecificdeeplearningmodelsforaccuratesegmentationofrectalstructuresonpostchemoradiationt2wmriamultiinstitutionalmultireaderstudy AT mardersteineric regionspecificdeeplearningmodelsforaccuratesegmentationofrectalstructuresonpostchemoradiationt2wmriamultiinstitutionalmultireaderstudy AT hallwilliam regionspecificdeeplearningmodelsforaccuratesegmentationofrectalstructuresonpostchemoradiationt2wmriamultiinstitutionalmultireaderstudy AT paspulatirajmohan regionspecificdeeplearningmodelsforaccuratesegmentationofrectalstructuresonpostchemoradiationt2wmriamultiinstitutionalmultireaderstudy AT gollamudijayakrishna regionspecificdeeplearningmodelsforaccuratesegmentationofrectalstructuresonpostchemoradiationt2wmriamultiinstitutionalmultireaderstudy AT puryskoandreis regionspecificdeeplearningmodelsforaccuratesegmentationofrectalstructuresonpostchemoradiationt2wmriamultiinstitutionalmultireaderstudy AT viswanathsatishe regionspecificdeeplearningmodelsforaccuratesegmentationofrectalstructuresonpostchemoradiationt2wmriamultiinstitutionalmultireaderstudy |