Authors
Axel Largent, Anaïs Barateau, Jean-Claude Nunes, Eugenia Mylona, Joël Castelli, Caroline Lafond, Peter B Greer, Jason A Dowling, John Baxter, Hervé Saint-Jalmes, Oscar Acosta, Renaud De Crevoisier
Publication date
2019/12/1
Journal
International Journal of Radiation Oncology* Biology* Physics
Volume
105
Issue
5
Pages
1137-1150
Publisher
Elsevier
Description
Purpose
Deep learning methods (DLMs) have recently been proposed to generate pseudo-CT (pCT) for magnetic resonance imaging (MRI) based dose planning. This study aims to evaluate and compare DLMs (U-Net and generative adversarial network [GAN]) using various loss functions (L2, single-scale perceptual loss [PL], multiscale PL, weighted multiscale PL) and a patch-based method (PBM).
Methods and Materials
Thirty-nine patients received a volumetric modulated arc therapy for prostate cancer (78 Gy). T2-weighted MRIs were acquired in addition to planning CTs. The pCTs were generated from the MRIs using 7 configurations: 4 GANs (L2, single-scale PL, multiscale PL, weighted multiscale PL), 2 U-Net (L2 and single-scale PL), and the PBM. The imaging endpoints were mean absolute error and mean error, in Hounsfield units, between the reference CT (CTref) and the pCT. Dose uncertainties were …
Total citations
202020212022202320241018211516
Scholar articles
A Largent, A Barateau, JC Nunes, E Mylona, J Castelli… - International Journal of Radiation Oncology* Biology …, 2019