TY - JOUR
T1 - A single neural network for cone-beam computed tomography-based radiotherapy of head-and-neck, lung and breast cancer
AU - Maspero, Matteo
AU - Houweling, Antonetta C.
AU - Savenije, Mark H.F.
AU - van Heijst, Tristan C.F.
AU - Verhoeff, Joost J.C.
AU - Kotte, Alexis N.T.J.
AU - van den Berg, Cornelis A.T.
N1 - © 2020 The Author(s).
PY - 2020/4
Y1 - 2020/4
N2 -
Background and purpose Adaptive radiotherapy based on cone-beam computed tomography (CBCT) requires high CT number accuracy to ensure accurate dose calculations. Recently, deep learning has been proposed for fast CBCT artefact corrections on single anatomical sites. This study investigated the feasibility of applying a single convolutional network to facilitate dose calculation based on CBCT for head-and-neck, lung and breast cancer patients.
Materials and Methods Ninety-nine patients diagnosed with head-and-neck, lung or breast cancer undergoing radiotherapy with CBCT-based position verification were included in this study. The CBCTs were registered to planning CT according to clinical procedures. Three cycle-consistent generative adversarial networks (cycle-GANs) were trained in an unpaired manner on 15 patients per anatomical site generating synthetic-CTs (sCTs). Another network was trained with all the anatomical sites together. Performances of all four networks were compared and evaluated for image similarity against rescan CT (rCT). Clinical plans were recalculated on rCT and sCT and analysed through voxel-based dose differences and
γ
-analysis.
Results A sCT was generated in 10 s. Image similarity was comparable between models trained on different anatomical sites and a single model for all sites. Mean dose differences
<
0.5
%
were obtained in high-dose regions. Mean gamma (3%, 3 mm) pass-rates
>
95
%
were achieved for all sites.
Conclusion Cycle-GAN reduced CBCT artefacts and increased similarity to CT, enabling sCT-based dose calculations. A single network achieved CBCT-based dose calculation generating synthetic CT for head-and-neck, lung, and breast cancer patients with similar performance to a network specifically trained for each anatomical site.
AB -
Background and purpose Adaptive radiotherapy based on cone-beam computed tomography (CBCT) requires high CT number accuracy to ensure accurate dose calculations. Recently, deep learning has been proposed for fast CBCT artefact corrections on single anatomical sites. This study investigated the feasibility of applying a single convolutional network to facilitate dose calculation based on CBCT for head-and-neck, lung and breast cancer patients.
Materials and Methods Ninety-nine patients diagnosed with head-and-neck, lung or breast cancer undergoing radiotherapy with CBCT-based position verification were included in this study. The CBCTs were registered to planning CT according to clinical procedures. Three cycle-consistent generative adversarial networks (cycle-GANs) were trained in an unpaired manner on 15 patients per anatomical site generating synthetic-CTs (sCTs). Another network was trained with all the anatomical sites together. Performances of all four networks were compared and evaluated for image similarity against rescan CT (rCT). Clinical plans were recalculated on rCT and sCT and analysed through voxel-based dose differences and
γ
-analysis.
Results A sCT was generated in 10 s. Image similarity was comparable between models trained on different anatomical sites and a single model for all sites. Mean dose differences
<
0.5
%
were obtained in high-dose regions. Mean gamma (3%, 3 mm) pass-rates
>
95
%
were achieved for all sites.
Conclusion Cycle-GAN reduced CBCT artefacts and increased similarity to CT, enabling sCT-based dose calculations. A single network achieved CBCT-based dose calculation generating synthetic CT for head-and-neck, lung, and breast cancer patients with similar performance to a network specifically trained for each anatomical site.
KW - Adaptive radiotherapy
KW - Artificial intelligence
KW - CBCT
KW - Deep learning
KW - Dose calculation
KW - Image-guided radiotherapy
KW - Image-to-image translation
KW - Machine learning
UR - https://www.scopus.com/pages/publications/85084977268
U2 - 10.1016/j.phro.2020.04.002
DO - 10.1016/j.phro.2020.04.002
M3 - Article
C2 - 33458310
AN - SCOPUS:85084977268
SN - 2405-6316
VL - 14
SP - 24
EP - 31
JO - Physics and Imaging in Radiation Oncology
JF - Physics and Imaging in Radiation Oncology
ER -