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Deep Learning for Per-Fraction Automatic Segmentation of Gross Tumor Volume (GTV) and Organs at Risk (OARs) in Adaptive Radiotherapy of Cervical Cancer

BACKGROUND/HYPOTHESIS: MRI-guided online adaptive radiotherapy (MRI-g-OART) improves target coverage and organs-at-risk (OARs) sparing in radiation therapy (RT). For patients with locally advanced cervical cancer (LACC) undergoing RT, changes in bladder and rectal filling contribute to large inter-f...

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Autores principales: Breto, Adrian L., Spieler, Benjamin, Zavala-Romero, Olmo, Alhusseini, Mohammad, Patel, Nirav V., Asher, David A., Xu, Isaac R., Baikovitz, Jacqueline B., Mellon, Eric A., Ford, John C., Stoyanova, Radka, Portelance, Lorraine
Formato: Online Artículo Texto
Lenguaje:English
Publicado: Frontiers Media S.A. 2022
Materias:
Acceso en línea:https://www.ncbi.nlm.nih.gov/pmc/articles/PMC9159296/
https://www.ncbi.nlm.nih.gov/pubmed/35664789
http://dx.doi.org/10.3389/fonc.2022.854349
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author Breto, Adrian L.
Spieler, Benjamin
Zavala-Romero, Olmo
Alhusseini, Mohammad
Patel, Nirav V.
Asher, David A.
Xu, Isaac R.
Baikovitz, Jacqueline B.
Mellon, Eric A.
Ford, John C.
Stoyanova, Radka
Portelance, Lorraine
author_facet Breto, Adrian L.
Spieler, Benjamin
Zavala-Romero, Olmo
Alhusseini, Mohammad
Patel, Nirav V.
Asher, David A.
Xu, Isaac R.
Baikovitz, Jacqueline B.
Mellon, Eric A.
Ford, John C.
Stoyanova, Radka
Portelance, Lorraine
author_sort Breto, Adrian L.
collection PubMed
description BACKGROUND/HYPOTHESIS: MRI-guided online adaptive radiotherapy (MRI-g-OART) improves target coverage and organs-at-risk (OARs) sparing in radiation therapy (RT). For patients with locally advanced cervical cancer (LACC) undergoing RT, changes in bladder and rectal filling contribute to large inter-fraction target volume motion. We hypothesized that deep learning (DL) convolutional neural networks (CNN) can be trained to accurately segment gross tumor volume (GTV) and OARs both in planning and daily fractions’ MRI scans. MATERIALS/METHODS: We utilized planning and daily treatment fraction setup (RT-Fr) MRIs from LACC patients, treated with stereotactic body RT to a dose of 45-54 Gy in 25 fractions. Nine structures were manually contoured. MASK R-CNN network was trained and tested under three scenarios: (i) Leave-one-out (LOO), using the planning images of N- 1 patients for training; (ii) the same network, tested on the RT-Fr MRIs of the “left-out” patient, (iii) including the planning MRI of the “left-out” patient as an additional training sample, and tested on RT-Fr MRIs. The network performance was evaluated using the Dice Similarity Coefficient (DSC) and Hausdorff distances. The association between the structures’ volume and corresponding DSCs was investigated using Pearson’s Correlation Coefficient, r. RESULTS: MRIs from fifteen LACC patients were analyzed. In the LOO scenario the DSC for Rectum, Femur, and Bladder was >0.8, followed by the GTV, Uterus, Mesorectum and Parametrium (0.6-0.7). The results for Vagina and Sigmoid were suboptimal. The performance of the network was similar for most organs when tested on RT-Fr MRI. Including the planning MRI in the training did not improve the segmentation of the RT-Fr MRI. There was a significant correlation between the average organ volume and the corresponding DSC (r = 0.759, p = 0.018). CONCLUSION: We have established a robust workflow for training MASK R-CNN to automatically segment GTV and OARs in MRI-g-OART of LACC. Albeit the small number of patients in this pilot project, the network was trained to successfully identify several structures while challenges remain, especially in relatively small organs. With the increase of the LACC cases, the performance of the network will improve. A robust auto-contouring tool would improve workflow efficiency and patient tolerance of the OART process.
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spelling pubmed-91592962022-06-02 Deep Learning for Per-Fraction Automatic Segmentation of Gross Tumor Volume (GTV) and Organs at Risk (OARs) in Adaptive Radiotherapy of Cervical Cancer Breto, Adrian L. Spieler, Benjamin Zavala-Romero, Olmo Alhusseini, Mohammad Patel, Nirav V. Asher, David A. Xu, Isaac R. Baikovitz, Jacqueline B. Mellon, Eric A. Ford, John C. Stoyanova, Radka Portelance, Lorraine Front Oncol Oncology BACKGROUND/HYPOTHESIS: MRI-guided online adaptive radiotherapy (MRI-g-OART) improves target coverage and organs-at-risk (OARs) sparing in radiation therapy (RT). For patients with locally advanced cervical cancer (LACC) undergoing RT, changes in bladder and rectal filling contribute to large inter-fraction target volume motion. We hypothesized that deep learning (DL) convolutional neural networks (CNN) can be trained to accurately segment gross tumor volume (GTV) and OARs both in planning and daily fractions’ MRI scans. MATERIALS/METHODS: We utilized planning and daily treatment fraction setup (RT-Fr) MRIs from LACC patients, treated with stereotactic body RT to a dose of 45-54 Gy in 25 fractions. Nine structures were manually contoured. MASK R-CNN network was trained and tested under three scenarios: (i) Leave-one-out (LOO), using the planning images of N- 1 patients for training; (ii) the same network, tested on the RT-Fr MRIs of the “left-out” patient, (iii) including the planning MRI of the “left-out” patient as an additional training sample, and tested on RT-Fr MRIs. The network performance was evaluated using the Dice Similarity Coefficient (DSC) and Hausdorff distances. The association between the structures’ volume and corresponding DSCs was investigated using Pearson’s Correlation Coefficient, r. RESULTS: MRIs from fifteen LACC patients were analyzed. In the LOO scenario the DSC for Rectum, Femur, and Bladder was >0.8, followed by the GTV, Uterus, Mesorectum and Parametrium (0.6-0.7). The results for Vagina and Sigmoid were suboptimal. The performance of the network was similar for most organs when tested on RT-Fr MRI. Including the planning MRI in the training did not improve the segmentation of the RT-Fr MRI. There was a significant correlation between the average organ volume and the corresponding DSC (r = 0.759, p = 0.018). CONCLUSION: We have established a robust workflow for training MASK R-CNN to automatically segment GTV and OARs in MRI-g-OART of LACC. Albeit the small number of patients in this pilot project, the network was trained to successfully identify several structures while challenges remain, especially in relatively small organs. With the increase of the LACC cases, the performance of the network will improve. A robust auto-contouring tool would improve workflow efficiency and patient tolerance of the OART process. Frontiers Media S.A. 2022-05-18 /pmc/articles/PMC9159296/ /pubmed/35664789 http://dx.doi.org/10.3389/fonc.2022.854349 Text en Copyright © 2022 Breto, Spieler, Zavala-Romero, Alhusseini, Patel, Asher, Xu, Baikovitz, Mellon, Ford, Stoyanova and Portelance 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
Breto, Adrian L.
Spieler, Benjamin
Zavala-Romero, Olmo
Alhusseini, Mohammad
Patel, Nirav V.
Asher, David A.
Xu, Isaac R.
Baikovitz, Jacqueline B.
Mellon, Eric A.
Ford, John C.
Stoyanova, Radka
Portelance, Lorraine
Deep Learning for Per-Fraction Automatic Segmentation of Gross Tumor Volume (GTV) and Organs at Risk (OARs) in Adaptive Radiotherapy of Cervical Cancer
title Deep Learning for Per-Fraction Automatic Segmentation of Gross Tumor Volume (GTV) and Organs at Risk (OARs) in Adaptive Radiotherapy of Cervical Cancer
title_full Deep Learning for Per-Fraction Automatic Segmentation of Gross Tumor Volume (GTV) and Organs at Risk (OARs) in Adaptive Radiotherapy of Cervical Cancer
title_fullStr Deep Learning for Per-Fraction Automatic Segmentation of Gross Tumor Volume (GTV) and Organs at Risk (OARs) in Adaptive Radiotherapy of Cervical Cancer
title_full_unstemmed Deep Learning for Per-Fraction Automatic Segmentation of Gross Tumor Volume (GTV) and Organs at Risk (OARs) in Adaptive Radiotherapy of Cervical Cancer
title_short Deep Learning for Per-Fraction Automatic Segmentation of Gross Tumor Volume (GTV) and Organs at Risk (OARs) in Adaptive Radiotherapy of Cervical Cancer
title_sort deep learning for per-fraction automatic segmentation of gross tumor volume (gtv) and organs at risk (oars) in adaptive radiotherapy of cervical cancer
topic Oncology
url https://www.ncbi.nlm.nih.gov/pmc/articles/PMC9159296/
https://www.ncbi.nlm.nih.gov/pubmed/35664789
http://dx.doi.org/10.3389/fonc.2022.854349
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