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Multicentre, deep learning, synthetic-CT generation for ano-rectal MR-only radiotherapy treatment planning

BACKGROUND AND PURPOSE: Comprehensive dosimetric analysis is required prior to the clinical implementation of pelvic MR-only sites, other than prostate, due to the limited number of site specific synthetic-CT (sCT) dosimetric assessments in the literature. This study aims to provide a comprehensive...

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Autores principales: Bird, David, Nix, Michael G., McCallum, Hazel, Teo, Mark, Gilbert, Alexandra, Casanova, Nathalie, Cooper, Rachel, Buckley, David L., Sebag-Montefiore, David, Speight, Richard, Al-Qaisieh, Bashar, Henry, Ann M.
Formato: Online Artículo Texto
Lenguaje:English
Publicado: Elsevier Scientific Publishers 2021
Materias:
Acceso en línea:https://www.ncbi.nlm.nih.gov/pmc/articles/PMC8050018/
https://www.ncbi.nlm.nih.gov/pubmed/33264638
http://dx.doi.org/10.1016/j.radonc.2020.11.027
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author Bird, David
Nix, Michael G.
McCallum, Hazel
Teo, Mark
Gilbert, Alexandra
Casanova, Nathalie
Cooper, Rachel
Buckley, David L.
Sebag-Montefiore, David
Speight, Richard
Al-Qaisieh, Bashar
Henry, Ann M.
author_facet Bird, David
Nix, Michael G.
McCallum, Hazel
Teo, Mark
Gilbert, Alexandra
Casanova, Nathalie
Cooper, Rachel
Buckley, David L.
Sebag-Montefiore, David
Speight, Richard
Al-Qaisieh, Bashar
Henry, Ann M.
author_sort Bird, David
collection PubMed
description BACKGROUND AND PURPOSE: Comprehensive dosimetric analysis is required prior to the clinical implementation of pelvic MR-only sites, other than prostate, due to the limited number of site specific synthetic-CT (sCT) dosimetric assessments in the literature. This study aims to provide a comprehensive assessment of a deep learning-based, conditional generative adversarial network (cGAN) model for a large ano-rectal cancer cohort. The following challenges were investigated; T2-SPACE MR sequences, patient data from multiple centres and the impact of sex and cancer site on sCT quality. METHOD: RT treatment position CT and T2-SPACE MR scans, from two centres, were collected for 90 ano-rectal patients. A cGAN model trained using a focal loss function, was trained and tested on 46 and 44 CT-MR ano-rectal datasets, paired using deformable registration, respectively. VMAT plans were created on CT and recalculated on sCT. Dose differences and gamma indices assessed sCT dosimetric accuracy. A linear mixed effect (LME) model assessed the impact of centre, sex and cancer site. RESULTS: A mean PTV D95% dose difference of 0.1% (range: −0.5% to 0.7%) was found between CT and sCT. All gamma index (1%/1 mm threshold) measurements were >99.0%. The LME model found the impact of modality, cancer site, sex and centre was clinically insignificant (effect ranges: −0.4% and 0.3%). The mean dose difference for all OAR constraints was 0.1%. CONCLUSION: Focal loss cGAN models using T2-SPACE MR sequences from multiple centres can produce generalisable, dosimetrically accurate sCTs for ano-rectal cancers.
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spelling pubmed-80500182021-04-21 Multicentre, deep learning, synthetic-CT generation for ano-rectal MR-only radiotherapy treatment planning Bird, David Nix, Michael G. McCallum, Hazel Teo, Mark Gilbert, Alexandra Casanova, Nathalie Cooper, Rachel Buckley, David L. Sebag-Montefiore, David Speight, Richard Al-Qaisieh, Bashar Henry, Ann M. Radiother Oncol Original Article BACKGROUND AND PURPOSE: Comprehensive dosimetric analysis is required prior to the clinical implementation of pelvic MR-only sites, other than prostate, due to the limited number of site specific synthetic-CT (sCT) dosimetric assessments in the literature. This study aims to provide a comprehensive assessment of a deep learning-based, conditional generative adversarial network (cGAN) model for a large ano-rectal cancer cohort. The following challenges were investigated; T2-SPACE MR sequences, patient data from multiple centres and the impact of sex and cancer site on sCT quality. METHOD: RT treatment position CT and T2-SPACE MR scans, from two centres, were collected for 90 ano-rectal patients. A cGAN model trained using a focal loss function, was trained and tested on 46 and 44 CT-MR ano-rectal datasets, paired using deformable registration, respectively. VMAT plans were created on CT and recalculated on sCT. Dose differences and gamma indices assessed sCT dosimetric accuracy. A linear mixed effect (LME) model assessed the impact of centre, sex and cancer site. RESULTS: A mean PTV D95% dose difference of 0.1% (range: −0.5% to 0.7%) was found between CT and sCT. All gamma index (1%/1 mm threshold) measurements were >99.0%. The LME model found the impact of modality, cancer site, sex and centre was clinically insignificant (effect ranges: −0.4% and 0.3%). The mean dose difference for all OAR constraints was 0.1%. CONCLUSION: Focal loss cGAN models using T2-SPACE MR sequences from multiple centres can produce generalisable, dosimetrically accurate sCTs for ano-rectal cancers. Elsevier Scientific Publishers 2021-03 /pmc/articles/PMC8050018/ /pubmed/33264638 http://dx.doi.org/10.1016/j.radonc.2020.11.027 Text en © 2020 The Authors https://creativecommons.org/licenses/by-nc-nd/4.0/This is an open access article under the CC BY-NC-ND license (http://creativecommons.org/licenses/by-nc-nd/4.0/).
spellingShingle Original Article
Bird, David
Nix, Michael G.
McCallum, Hazel
Teo, Mark
Gilbert, Alexandra
Casanova, Nathalie
Cooper, Rachel
Buckley, David L.
Sebag-Montefiore, David
Speight, Richard
Al-Qaisieh, Bashar
Henry, Ann M.
Multicentre, deep learning, synthetic-CT generation for ano-rectal MR-only radiotherapy treatment planning
title Multicentre, deep learning, synthetic-CT generation for ano-rectal MR-only radiotherapy treatment planning
title_full Multicentre, deep learning, synthetic-CT generation for ano-rectal MR-only radiotherapy treatment planning
title_fullStr Multicentre, deep learning, synthetic-CT generation for ano-rectal MR-only radiotherapy treatment planning
title_full_unstemmed Multicentre, deep learning, synthetic-CT generation for ano-rectal MR-only radiotherapy treatment planning
title_short Multicentre, deep learning, synthetic-CT generation for ano-rectal MR-only radiotherapy treatment planning
title_sort multicentre, deep learning, synthetic-ct generation for ano-rectal mr-only radiotherapy treatment planning
topic Original Article
url https://www.ncbi.nlm.nih.gov/pmc/articles/PMC8050018/
https://www.ncbi.nlm.nih.gov/pubmed/33264638
http://dx.doi.org/10.1016/j.radonc.2020.11.027
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