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Leveraging deep learning-based segmentation and contours-driven deformable registration for dose accumulation in abdominal structures

PURPOSE: Discrepancies between planned and delivered dose to GI structures during radiation therapy (RT) of liver cancer may hamper the prediction of treatment outcomes. The purpose of this study is to develop a streamlined workflow for dose accumulation in a treatment planning system (TPS) during l...

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Autores principales: McCulloch, Molly M., Cazoulat, Guillaume, Svensson, Stina, Gryshkevych, Sergii, Rigaud, Bastien, Anderson, Brian M., Kirimli, Ezgi, De, Brian, Mathew, Ryan T., Zaid, Mohamed, Elganainy, Dalia, Peterson, Christine B., Balter, Peter, Koay, Eugene J., Brock, Kristy K.
Formato: Online Artículo Texto
Lenguaje:English
Publicado: Frontiers Media S.A. 2022
Materias:
Acceso en línea:https://www.ncbi.nlm.nih.gov/pmc/articles/PMC9666494/
https://www.ncbi.nlm.nih.gov/pubmed/36408172
http://dx.doi.org/10.3389/fonc.2022.1015608
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author McCulloch, Molly M.
Cazoulat, Guillaume
Svensson, Stina
Gryshkevych, Sergii
Rigaud, Bastien
Anderson, Brian M.
Kirimli, Ezgi
De, Brian
Mathew, Ryan T.
Zaid, Mohamed
Elganainy, Dalia
Peterson, Christine B.
Balter, Peter
Koay, Eugene J.
Brock, Kristy K.
author_facet McCulloch, Molly M.
Cazoulat, Guillaume
Svensson, Stina
Gryshkevych, Sergii
Rigaud, Bastien
Anderson, Brian M.
Kirimli, Ezgi
De, Brian
Mathew, Ryan T.
Zaid, Mohamed
Elganainy, Dalia
Peterson, Christine B.
Balter, Peter
Koay, Eugene J.
Brock, Kristy K.
author_sort McCulloch, Molly M.
collection PubMed
description PURPOSE: Discrepancies between planned and delivered dose to GI structures during radiation therapy (RT) of liver cancer may hamper the prediction of treatment outcomes. The purpose of this study is to develop a streamlined workflow for dose accumulation in a treatment planning system (TPS) during liver image-guided RT and to assess its accuracy when using different deformable image registration (DIR) algorithms. MATERIALS AND METHODS: Fifty-six patients with primary and metastatic liver cancer treated with external beam radiotherapy guided by daily CT-on-rails (CTOR) were retrospectively analyzed. The liver, stomach and duodenum contours were auto-segmented on all planning CTs and daily CTORs using deep-learning methods. Dose accumulation was performed for each patient using scripting functionalities of the TPS and considering three available DIR algorithms based on: (i) image intensities only; (ii) intensities + contours; (iii) a biomechanical model (contours only). Planned and accumulated doses were converted to equivalent dose in 2Gy (EQD2) and normal tissue complication probabilities (NTCP) were calculated for the stomach and duodenum. Dosimetric indexes for the normal liver, GTV, stomach and duodenum and the NTCP values were exported from the TPS for analysis of the discrepancies between planned and the different accumulated doses. RESULTS: Deep learning segmentation of the stomach and duodenum enabled considerable acceleration of the dose accumulation process for the 56 patients. Differences between accumulated and planned doses were analyzed considering the 3 DIR methods. For the normal liver, stomach and duodenum, the distribution of the 56 differences in maximum doses (D2%) presented a significantly higher variance when a contour-driven DIR method was used instead of the intensity only-based method. Comparing the two contour-driven DIR methods, differences in accumulated minimum doses (D98%) in the GTV were >2Gy for 15 (27%) of the patients. Considering accumulated dose instead of planned dose in standard NTCP models of the duodenum demonstrated a high sensitivity of the duodenum toxicity risk to these dose discrepancies, whereas smaller variations were observed for the stomach. CONCLUSION: This study demonstrated a successful implementation of an automatic workflow for dose accumulation during liver cancer RT in a commercial TPS. The use of contour-driven DIR methods led to larger discrepancies between planned and accumulated doses in comparison to using an intensity only based DIR method, suggesting a better capability of these approaches in estimating complex deformations of the GI organs.
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spelling pubmed-96664942022-11-17 Leveraging deep learning-based segmentation and contours-driven deformable registration for dose accumulation in abdominal structures McCulloch, Molly M. Cazoulat, Guillaume Svensson, Stina Gryshkevych, Sergii Rigaud, Bastien Anderson, Brian M. Kirimli, Ezgi De, Brian Mathew, Ryan T. Zaid, Mohamed Elganainy, Dalia Peterson, Christine B. Balter, Peter Koay, Eugene J. Brock, Kristy K. Front Oncol Oncology PURPOSE: Discrepancies between planned and delivered dose to GI structures during radiation therapy (RT) of liver cancer may hamper the prediction of treatment outcomes. The purpose of this study is to develop a streamlined workflow for dose accumulation in a treatment planning system (TPS) during liver image-guided RT and to assess its accuracy when using different deformable image registration (DIR) algorithms. MATERIALS AND METHODS: Fifty-six patients with primary and metastatic liver cancer treated with external beam radiotherapy guided by daily CT-on-rails (CTOR) were retrospectively analyzed. The liver, stomach and duodenum contours were auto-segmented on all planning CTs and daily CTORs using deep-learning methods. Dose accumulation was performed for each patient using scripting functionalities of the TPS and considering three available DIR algorithms based on: (i) image intensities only; (ii) intensities + contours; (iii) a biomechanical model (contours only). Planned and accumulated doses were converted to equivalent dose in 2Gy (EQD2) and normal tissue complication probabilities (NTCP) were calculated for the stomach and duodenum. Dosimetric indexes for the normal liver, GTV, stomach and duodenum and the NTCP values were exported from the TPS for analysis of the discrepancies between planned and the different accumulated doses. RESULTS: Deep learning segmentation of the stomach and duodenum enabled considerable acceleration of the dose accumulation process for the 56 patients. Differences between accumulated and planned doses were analyzed considering the 3 DIR methods. For the normal liver, stomach and duodenum, the distribution of the 56 differences in maximum doses (D2%) presented a significantly higher variance when a contour-driven DIR method was used instead of the intensity only-based method. Comparing the two contour-driven DIR methods, differences in accumulated minimum doses (D98%) in the GTV were >2Gy for 15 (27%) of the patients. Considering accumulated dose instead of planned dose in standard NTCP models of the duodenum demonstrated a high sensitivity of the duodenum toxicity risk to these dose discrepancies, whereas smaller variations were observed for the stomach. CONCLUSION: This study demonstrated a successful implementation of an automatic workflow for dose accumulation during liver cancer RT in a commercial TPS. The use of contour-driven DIR methods led to larger discrepancies between planned and accumulated doses in comparison to using an intensity only based DIR method, suggesting a better capability of these approaches in estimating complex deformations of the GI organs. Frontiers Media S.A. 2022-11-02 /pmc/articles/PMC9666494/ /pubmed/36408172 http://dx.doi.org/10.3389/fonc.2022.1015608 Text en Copyright © 2022 McCulloch, Cazoulat, Svensson, Gryshkevych, Rigaud, Anderson, Kirimli, De, Mathew, Zaid, Elganainy, Peterson, Balter, Koay and Brock 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 Oncology
McCulloch, Molly M.
Cazoulat, Guillaume
Svensson, Stina
Gryshkevych, Sergii
Rigaud, Bastien
Anderson, Brian M.
Kirimli, Ezgi
De, Brian
Mathew, Ryan T.
Zaid, Mohamed
Elganainy, Dalia
Peterson, Christine B.
Balter, Peter
Koay, Eugene J.
Brock, Kristy K.
Leveraging deep learning-based segmentation and contours-driven deformable registration for dose accumulation in abdominal structures
title Leveraging deep learning-based segmentation and contours-driven deformable registration for dose accumulation in abdominal structures
title_full Leveraging deep learning-based segmentation and contours-driven deformable registration for dose accumulation in abdominal structures
title_fullStr Leveraging deep learning-based segmentation and contours-driven deformable registration for dose accumulation in abdominal structures
title_full_unstemmed Leveraging deep learning-based segmentation and contours-driven deformable registration for dose accumulation in abdominal structures
title_short Leveraging deep learning-based segmentation and contours-driven deformable registration for dose accumulation in abdominal structures
title_sort leveraging deep learning-based segmentation and contours-driven deformable registration for dose accumulation in abdominal structures
topic Oncology
url https://www.ncbi.nlm.nih.gov/pmc/articles/PMC9666494/
https://www.ncbi.nlm.nih.gov/pubmed/36408172
http://dx.doi.org/10.3389/fonc.2022.1015608
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