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Validation of an established deep learning auto-segmentation tool for cardiac substructures in 4D radiotherapy planning scans

BACKGROUND: Emerging data suggest that dose-sparing several key cardiac regions is prognostically beneficial in lung cancer radiotherapy. The cardiac substructures are challenging to contour due to their complex geometry, poor soft tissue definition on computed tomography (CT) and cardiorespiratory...

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Autores principales: Walls, Gerard M., Giacometti, Valentina, Apte, Aditya, Thor, Maria, McCann, Conor, Hanna, Gerard G., O'Connor, John, Deasy, Joseph O., Hounsell, Alan R., Butterworth, Karl T., Cole, Aidan J., Jain, Suneil, McGarry, Conor K.
Formato: Online Artículo Texto
Lenguaje:English
Publicado: Elsevier 2022
Materias:
Acceso en línea:https://www.ncbi.nlm.nih.gov/pmc/articles/PMC9356270/
https://www.ncbi.nlm.nih.gov/pubmed/35941861
http://dx.doi.org/10.1016/j.phro.2022.07.003
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author Walls, Gerard M.
Giacometti, Valentina
Apte, Aditya
Thor, Maria
McCann, Conor
Hanna, Gerard G.
O'Connor, John
Deasy, Joseph O.
Hounsell, Alan R.
Butterworth, Karl T.
Cole, Aidan J.
Jain, Suneil
McGarry, Conor K.
author_facet Walls, Gerard M.
Giacometti, Valentina
Apte, Aditya
Thor, Maria
McCann, Conor
Hanna, Gerard G.
O'Connor, John
Deasy, Joseph O.
Hounsell, Alan R.
Butterworth, Karl T.
Cole, Aidan J.
Jain, Suneil
McGarry, Conor K.
author_sort Walls, Gerard M.
collection PubMed
description BACKGROUND: Emerging data suggest that dose-sparing several key cardiac regions is prognostically beneficial in lung cancer radiotherapy. The cardiac substructures are challenging to contour due to their complex geometry, poor soft tissue definition on computed tomography (CT) and cardiorespiratory motion artefact. A neural network was previously trained to generate the cardiac substructures using three-dimensional radiotherapy planning CT scans (3D-CT). In this study, the performance of that tool on the average intensity projection from four-dimensional (4D) CT scans (4D-AVE), now commonly used in lung radiotherapy, was evaluated. MATERIALS AND METHODS: The 4D-AVE of n=20 patients completing radiotherapy for lung cancer 2015–2020 underwent manual and automated cardiac substructure segmentation. Manual and automated substructures were compared geometrically and dosimetrically. Two senior clinicians also qualitatively assessed the auto-segmentation tool’s output. RESULTS: Geometric comparison of the automated and manual segmentations exhibited high levels of similarity across parameters, including volume difference (11.8% overall) and Dice similarity coefficient (0.85 overall), and were consistent with 3D-CT performance. Differences in mean (median 0.2 Gy, range −1.6–0.3 Gy) and maximum (median 0.4 Gy, range −2.2–0.9 Gy) doses to substructures were generally small. Nearly all structures (99.5 %) were deemed to be appropriate for clinical use without further editing. CONCLUSIONS: Cardiac substructure auto-segmentation using a deep learning-based tool trained on a 3D-CT dataset was feasible on the 4D-AVE scan, meaning this tool is suitable for use on 4D-CT radiotherapy planning scans. Application of this tool would increase the practicality of routine clinical cardiac substructure delineation, and enable further cardiac radiation effects research.
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spelling pubmed-93562702022-08-07 Validation of an established deep learning auto-segmentation tool for cardiac substructures in 4D radiotherapy planning scans Walls, Gerard M. Giacometti, Valentina Apte, Aditya Thor, Maria McCann, Conor Hanna, Gerard G. O'Connor, John Deasy, Joseph O. Hounsell, Alan R. Butterworth, Karl T. Cole, Aidan J. Jain, Suneil McGarry, Conor K. Phys Imaging Radiat Oncol Original Research Article BACKGROUND: Emerging data suggest that dose-sparing several key cardiac regions is prognostically beneficial in lung cancer radiotherapy. The cardiac substructures are challenging to contour due to their complex geometry, poor soft tissue definition on computed tomography (CT) and cardiorespiratory motion artefact. A neural network was previously trained to generate the cardiac substructures using three-dimensional radiotherapy planning CT scans (3D-CT). In this study, the performance of that tool on the average intensity projection from four-dimensional (4D) CT scans (4D-AVE), now commonly used in lung radiotherapy, was evaluated. MATERIALS AND METHODS: The 4D-AVE of n=20 patients completing radiotherapy for lung cancer 2015–2020 underwent manual and automated cardiac substructure segmentation. Manual and automated substructures were compared geometrically and dosimetrically. Two senior clinicians also qualitatively assessed the auto-segmentation tool’s output. RESULTS: Geometric comparison of the automated and manual segmentations exhibited high levels of similarity across parameters, including volume difference (11.8% overall) and Dice similarity coefficient (0.85 overall), and were consistent with 3D-CT performance. Differences in mean (median 0.2 Gy, range −1.6–0.3 Gy) and maximum (median 0.4 Gy, range −2.2–0.9 Gy) doses to substructures were generally small. Nearly all structures (99.5 %) were deemed to be appropriate for clinical use without further editing. CONCLUSIONS: Cardiac substructure auto-segmentation using a deep learning-based tool trained on a 3D-CT dataset was feasible on the 4D-AVE scan, meaning this tool is suitable for use on 4D-CT radiotherapy planning scans. Application of this tool would increase the practicality of routine clinical cardiac substructure delineation, and enable further cardiac radiation effects research. Elsevier 2022-07-26 /pmc/articles/PMC9356270/ /pubmed/35941861 http://dx.doi.org/10.1016/j.phro.2022.07.003 Text en © 2022 The Authors. Published by Elsevier B.V. on behalf of European Society of Radiotherapy & Oncology. https://creativecommons.org/licenses/by/4.0/This is an open access article under the CC BY license (http://creativecommons.org/licenses/by/4.0/).
spellingShingle Original Research Article
Walls, Gerard M.
Giacometti, Valentina
Apte, Aditya
Thor, Maria
McCann, Conor
Hanna, Gerard G.
O'Connor, John
Deasy, Joseph O.
Hounsell, Alan R.
Butterworth, Karl T.
Cole, Aidan J.
Jain, Suneil
McGarry, Conor K.
Validation of an established deep learning auto-segmentation tool for cardiac substructures in 4D radiotherapy planning scans
title Validation of an established deep learning auto-segmentation tool for cardiac substructures in 4D radiotherapy planning scans
title_full Validation of an established deep learning auto-segmentation tool for cardiac substructures in 4D radiotherapy planning scans
title_fullStr Validation of an established deep learning auto-segmentation tool for cardiac substructures in 4D radiotherapy planning scans
title_full_unstemmed Validation of an established deep learning auto-segmentation tool for cardiac substructures in 4D radiotherapy planning scans
title_short Validation of an established deep learning auto-segmentation tool for cardiac substructures in 4D radiotherapy planning scans
title_sort validation of an established deep learning auto-segmentation tool for cardiac substructures in 4d radiotherapy planning scans
topic Original Research Article
url https://www.ncbi.nlm.nih.gov/pmc/articles/PMC9356270/
https://www.ncbi.nlm.nih.gov/pubmed/35941861
http://dx.doi.org/10.1016/j.phro.2022.07.003
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