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Deep-Learning for Rapid Estimation of the Out-of-Field Dose in External Beam Photon Radiation Therapy – A Proof of Concept.

Authors :
Benzazon, Nathan
Carré, Alexandre
de Kermenguy, François
Niyoteka, Stéphane
Maury, Pauline
Colnot, Julie
M'hamdi, Meissane
Aichi, Mohammed El
Veres, Cristina
Allodji, Rodrigue
de Vathaire, Florent
Sarrut, David
Journy, Neige
Alapetite, Claire
Grégoire, Vincent
Deutsch, Eric
Diallo, Ibrahima
Robert, Charlotte
Source :
International Journal of Radiation Oncology, Biology, Physics. Sep2024, Vol. 120 Issue 1, p253-264. 12p.
Publication Year :
2024

Abstract

The dose deposited outside of the treatment field during external photon beam radiation therapy treatment, also known as out-of-field dose, is the subject of extensive study as it may be associated with a higher risk of developing a second cancer and could have deleterious effects on the immune system that compromise the efficiency of combined radio-immunotherapy treatments. Out-of-field dose estimation tools developed today in research, including Monte Carlo simulations and analytical methods, are not suited to the requirements of clinical implementation because of their lack of versatility and their cumbersome application. We propose a proof of concept based on deep learning for out-of-field dose map estimation that addresses these limitations. For this purpose, a 3D U-Net, considering as inputs the in-field dose, as computed by the treatment planning system, and the patient's anatomy, was trained to predict out-of-field dose maps. The cohort used for learning and performance evaluation included 3151 pediatric patients from the FCCSS database, treated in 5 clinical centers, whose whole-body dose maps were previously estimated with an empirical analytical method. The test set, composed of 433 patients, was split into 5 subdata sets, each containing patients treated with devices unseen during the training phase. Root mean square deviation evaluated only on nonzero voxels located in the out-of-field areas was computed as performance metric. Root mean square deviations of 0.28 and 0.41 cGy/Gy were obtained for the training and validation data sets, respectively. Values of 0.27, 0.26, 0.28, 0.30, and 0.45 cGy/Gy were achieved for the 6 MV linear accelerator, 16 MV linear accelerator, Alcyon cobalt irradiator, Mobiletron cobalt irradiator, and betatron device test sets, respectively. This proof-of-concept approach using a convolutional neural network has demonstrated unprecedented generalizability for this task, although it remains limited, and brings us closer to an implementation compatible with clinical routine. [ABSTRACT FROM AUTHOR]

Details

Language :
English
ISSN :
03603016
Volume :
120
Issue :
1
Database :
Academic Search Index
Journal :
International Journal of Radiation Oncology, Biology, Physics
Publication Type :
Academic Journal
Accession number :
178997602
Full Text :
https://doi.org/10.1016/j.ijrobp.2024.03.007