Literature DB >> 30109989

Dose evaluation of fast synthetic-CT generation using a generative adversarial network for general pelvis MR-only radiotherapy.

Matteo Maspero1, 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.   

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 for accurate MR-based dose calculations in the entire pelvis. A study was conducted on data of 91 patients with prostate (59), rectal (18) and cervical (14) 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 slices of 32 prostate cancer patients. The trained network was tested on the remaining patients to generate sCT images. For 30 patients in the test set, dose recalculations of the clinical plan were performed on sCT images. Dose distributions were evaluated comparing voxel-based dose differences, gamma and dose-volume histogram (DVH) analysis. The sCT generation required 5.6 s and 21 s for a single patient volume on a GPU and CPU, respectively. On average, sCT images resulted in a higher dose to the target of maximum 0.3%. The average gamma pass rates using the 3%, 3 mm and 2%, 2 mm criteria were above 97 and 91%, respectively, for all volumes of interests considered. All DVH points calculated on sCT differed less than  ±2.5% from the corresponding points on CT. Results suggest that accurate MR-based dose calculation using sCT images generated with a cGAN trained on prostate cancer patients is feasible for the entire pelvis. The sCT generation was sufficiently fast for integration in an MR-guided radiotherapy workflow.

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Year:  2018        PMID: 30109989     DOI: 10.1088/1361-6560/aada6d

Source DB:  PubMed          Journal:  Phys Med Biol        ISSN: 0031-9155            Impact factor:   3.609


  49 in total

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4.  Patch-based generative adversarial neural network models for head and neck MR-only planning.

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Journal:  Radiol Med       Date:  2019-10-08       Impact factor: 3.469

7.  Improving CBCT quality to CT level using deep learning with generative adversarial network.

Authors:  Yang Zhang; Ning Yue; Min-Ying Su; Bo Liu; Yi Ding; Yongkang Zhou; Hao Wang; Yu Kuang; Ke Nie
Journal:  Med Phys       Date:  2021-05-14       Impact factor: 4.071

8.  Abdominal synthetic CT generation from MR Dixon images using a U-net trained with 'semi-synthetic' CT data.

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Journal:  Phys Med Biol       Date:  2020-06-15       Impact factor: 3.609

9.  Feasibility of synthetic computed tomography generated with an adversarial network for multi-sequence magnetic resonance-based brain radiotherapy.

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Journal:  J Radiat Res       Date:  2020-01-23       Impact factor: 2.724

10.  Dosimetric evaluation of synthetic CT generated with GANs for MRI-only proton therapy treatment planning of brain tumors.

Authors:  Samaneh Kazemifar; Ana M Barragán Montero; Kevin Souris; Sara T Rivas; Robert Timmerman; Yang K Park; Steve Jiang; Xavier Geets; Edmond Sterpin; Amir Owrangi
Journal:  J Appl Clin Med Phys       Date:  2020-03-26       Impact factor: 2.102

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