Dose evaluation of fast synthetic-CT generation using a generative adversarial network for general pelvis MR-only radiotherapy
Matteo Maspero, Mark H. F. Savenije, Anna M. Dinkla, Peter R., Seevinck, Martijn P. W. Intven, Ina M. Jurgenliemk-Schulz, Linda G. W., Kerkmeijer, Cornelis A. T. van den Berg

TL;DR
This study demonstrates that a deep learning-based generative adversarial network can rapidly produce synthetic CT images from MRI data for accurate dose calculation in pelvic radiotherapy, enabling efficient MR-only workflows.
Contribution
The paper presents a fast, cGAN-based method for generating synthetic CT images from MRI for the entire pelvis, suitable for MR-guided radiotherapy.
Findings
sCT generation time: 5.6 seconds on GPU
Maximum dose difference: 0.3% to clinical plan
Feasibility of MR-based dose calculation with cGAN-generated sCT
Abstract
To enable magnetic resonance (MR)-only radiotherapy and facilitate modelling of radiation attenuation in humans, synthetic-CT (sCT) images need to be generated. Considering the application of MR-guided radiotherapy and online adaptive replanning, sCT generation should occur within minutes. This work aims at assessing whether an existing deep learning network can rapidly generate sCT images to be used for accurate MR-based dose calculations in the entire pelvis. A study was conducted on data of 91 patients with prostate, rectal and cervical cancer who underwent external beam radiotherapy acquiring both CT and MRI for patients' simulation. Dixon reconstructed water, fat and in-phase images obtained from a conventional dual gradient-recalled echo sequence were used to generate sCT images. A conditional generative adversarial network (cGAN) was trained in a paired fashion on 2D transverse…
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