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ScatterNet for projection-based 4D cone-beam computed tomography intensity correction of lung cancer patients

Background and purpose: In radiotherapy, dose calculations based on 4D cone beam CTs (4DCBCTs) require image intensity corrections. This retrospective study compared the dose calculation accuracy of a deep learning, projection-based scatter correction workflow (ScatterNet), to slower workflows: conv...

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Autores principales: Schmitz, Henning, Thummerer, Adrian, Kawula, Maria, Lombardo, Elia, Parodi, Katia, Belka, Claus, Kamp, Florian, Kurz, Christopher, Landry, Guillaume
Formato: Online Artículo Texto
Lenguaje:English
Publicado: Elsevier 2023
Materias:
Acceso en línea:https://www.ncbi.nlm.nih.gov/pmc/articles/PMC10480315/
https://www.ncbi.nlm.nih.gov/pubmed/37680905
http://dx.doi.org/10.1016/j.phro.2023.100482
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author Schmitz, Henning
Thummerer, Adrian
Kawula, Maria
Lombardo, Elia
Parodi, Katia
Belka, Claus
Kamp, Florian
Kurz, Christopher
Landry, Guillaume
author_facet Schmitz, Henning
Thummerer, Adrian
Kawula, Maria
Lombardo, Elia
Parodi, Katia
Belka, Claus
Kamp, Florian
Kurz, Christopher
Landry, Guillaume
author_sort Schmitz, Henning
collection PubMed
description Background and purpose: In radiotherapy, dose calculations based on 4D cone beam CTs (4DCBCTs) require image intensity corrections. This retrospective study compared the dose calculation accuracy of a deep learning, projection-based scatter correction workflow (ScatterNet), to slower workflows: conventional 4D projection-based scatter correction (CBCT(cor)) and a deformable image registration (DIR)-based method (4DvCT). Materials and methods: For 26 lung cancer patients, planning CTs (pCTs), 4DCTs and CBCT projections were available. ScatterNet was trained with pairs of raw and corrected CBCT projections. Corrected projections from ScatterNet and the conventional workflow were reconstructed using MA-ROOSTER, yielding 4DCBCT(SN) and 4DCBCT(cor). The 4DvCT was generated by 4DCT to 4DCBCT DIR, as part of the 4DCBCT(cor) workflow. Robust intensity modulated proton therapy treatment plans were created on free-breathing pCTs. 4DCBCT(SN) was compared to 4DCBCT(cor) and the 4DvCT in terms of image quality and dose calculation accuracy (dose-volume-histogram parameters and [Formula: see text] / [Formula: see text] gamma analysis). Results: 4DCBCT(SN) resulted in an average mean absolute error of [Formula: see text] and [Formula: see text] when compared to 4DCBCT(cor) and 4DvCT respectively. High agreement was observed in targets with median dose differences of [Formula: see text] (4DCBCT(SN)-4DCBCT(cor)) and [Formula: see text] (4DCBCT(SN)-4DvCT). The gamma analysis showed high average [Formula: see text] / [Formula: see text] pass rates of [Formula: see text] for both 4DCBCT(SN) vs. 4DCBCT(cor) and 4DCBCT(SN) vs. 4DvCT. Conclusions: Accurate 4D dose calculations are feasible for lung cancer patients using ScatterNet for 4DCBCT correction. Average scatter correction times could be reduced from [Formula: see text] (4DCBCT(cor)) to [Formula: see text] , showing the clinical suitability of the proposed deep learning-based method.
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spelling pubmed-104803152023-09-07 ScatterNet for projection-based 4D cone-beam computed tomography intensity correction of lung cancer patients Schmitz, Henning Thummerer, Adrian Kawula, Maria Lombardo, Elia Parodi, Katia Belka, Claus Kamp, Florian Kurz, Christopher Landry, Guillaume Phys Imaging Radiat Oncol Original Research Article Background and purpose: In radiotherapy, dose calculations based on 4D cone beam CTs (4DCBCTs) require image intensity corrections. This retrospective study compared the dose calculation accuracy of a deep learning, projection-based scatter correction workflow (ScatterNet), to slower workflows: conventional 4D projection-based scatter correction (CBCT(cor)) and a deformable image registration (DIR)-based method (4DvCT). Materials and methods: For 26 lung cancer patients, planning CTs (pCTs), 4DCTs and CBCT projections were available. ScatterNet was trained with pairs of raw and corrected CBCT projections. Corrected projections from ScatterNet and the conventional workflow were reconstructed using MA-ROOSTER, yielding 4DCBCT(SN) and 4DCBCT(cor). The 4DvCT was generated by 4DCT to 4DCBCT DIR, as part of the 4DCBCT(cor) workflow. Robust intensity modulated proton therapy treatment plans were created on free-breathing pCTs. 4DCBCT(SN) was compared to 4DCBCT(cor) and the 4DvCT in terms of image quality and dose calculation accuracy (dose-volume-histogram parameters and [Formula: see text] / [Formula: see text] gamma analysis). Results: 4DCBCT(SN) resulted in an average mean absolute error of [Formula: see text] and [Formula: see text] when compared to 4DCBCT(cor) and 4DvCT respectively. High agreement was observed in targets with median dose differences of [Formula: see text] (4DCBCT(SN)-4DCBCT(cor)) and [Formula: see text] (4DCBCT(SN)-4DvCT). The gamma analysis showed high average [Formula: see text] / [Formula: see text] pass rates of [Formula: see text] for both 4DCBCT(SN) vs. 4DCBCT(cor) and 4DCBCT(SN) vs. 4DvCT. Conclusions: Accurate 4D dose calculations are feasible for lung cancer patients using ScatterNet for 4DCBCT correction. Average scatter correction times could be reduced from [Formula: see text] (4DCBCT(cor)) to [Formula: see text] , showing the clinical suitability of the proposed deep learning-based method. Elsevier 2023-08-18 /pmc/articles/PMC10480315/ /pubmed/37680905 http://dx.doi.org/10.1016/j.phro.2023.100482 Text en © 2023 The Author(s) 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 Research Article
Schmitz, Henning
Thummerer, Adrian
Kawula, Maria
Lombardo, Elia
Parodi, Katia
Belka, Claus
Kamp, Florian
Kurz, Christopher
Landry, Guillaume
ScatterNet for projection-based 4D cone-beam computed tomography intensity correction of lung cancer patients
title ScatterNet for projection-based 4D cone-beam computed tomography intensity correction of lung cancer patients
title_full ScatterNet for projection-based 4D cone-beam computed tomography intensity correction of lung cancer patients
title_fullStr ScatterNet for projection-based 4D cone-beam computed tomography intensity correction of lung cancer patients
title_full_unstemmed ScatterNet for projection-based 4D cone-beam computed tomography intensity correction of lung cancer patients
title_short ScatterNet for projection-based 4D cone-beam computed tomography intensity correction of lung cancer patients
title_sort scatternet for projection-based 4d cone-beam computed tomography intensity correction of lung cancer patients
topic Original Research Article
url https://www.ncbi.nlm.nih.gov/pmc/articles/PMC10480315/
https://www.ncbi.nlm.nih.gov/pubmed/37680905
http://dx.doi.org/10.1016/j.phro.2023.100482
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