Literature DB >> 33438621

Generation of abdominal synthetic CTs from 0.35T MR images using generative adversarial networks for MR-only liver radiotherapy.

Jie Fu1, Kamal Singhrao, Minsong Cao, Victoria Yu, Anand P Santhanam, Yingli Yang, Minghao Guo, Ann C Raldow, Dan Ruan, John H Lewis.   

Abstract

Electron density maps must be accurately estimated to achieve valid dose calculation in MR-only radiotherapy. The goal of this study is to assess whether two deep learning models, the conditional generative adversarial network (cGAN) and the cycle-consistent generative adversarial network (cycleGAN), can generate accurate abdominal synthetic CT (sCT) images from 0.35T MR images for MR-only liver radiotherapy. A retrospective study was performed using CT images and 0.35T MR images of 12 patients with liver (n = 8) and non-liver abdominal (n = 4) cancer. CT images were deformably registered to the corresponding MR images to generate deformed CT (dCT) images for treatment planning. Both cGAN and cycleGAN were trained using MR and dCT transverse slices. Four-fold cross-validation testing was conducted to generate sCT images for all patients. The HU prediction accuracy was evaluated by voxel-wise similarity metric between each dCT and sCT image for all 12 patients. dCT-based and sCT-based dose distributions were compared using gamma and dose-volume histogram (DVH) metric analysis for 8 liver patients. sCTcycleGAN achieved the average mean absolute error (MAE) of 94.1 HU, while sCTcGAN achieved 89.8 HU. In both models, the average gamma passing rates within all volumes of interest were higher than 95% using a 2%, 2 mm criterion, and 99% using a 3%, 3 mm criterion. The average differences in the mean dose and DVH metrics were within ±0.6% for the planning target volume and within ±0.15% for evaluated organs in both models.
Results: demonstrated that abdominal sCT images generated by both cGAN and cycleGAN achieved accurate dose calculation for 8 liver radiotherapy plans. sCTcGAN images had smaller average MAE and achieved better dose calculation accuracy than sCTcyleGAN images. More abdominal patients will be enrolled in the future to further evaluate the two models.

Entities:  

Year:  2020        PMID: 33438621     DOI: 10.1088/2057-1976/ab6e1f

Source DB:  PubMed          Journal:  Biomed Phys Eng Express        ISSN: 2057-1976


  3 in total

1.  Synthetic Computed Tomography Generation from 0.35T Magnetic Resonance Images for Magnetic Resonance-Only Radiation Therapy Planning Using Perceptual Loss Models.

Authors:  Xue Li; Poonam Yadav; Alan B McMillan
Journal:  Pract Radiat Oncol       Date:  2021-08-24

Review 2.  Stereotactic body radiation therapy for hepatocellular carcinoma: From infancy to ongoing maturity.

Authors:  Shirley Lewis; Laura Dawson; Aisling Barry; Teodor Stanescu; Issa Mohamad; Ali Hosni
Journal:  JHEP Rep       Date:  2022-05-14

3.  Synthetic CT generation from weakly paired MR images using cycle-consistent GAN for MR-guided radiotherapy.

Authors:  Seung Kwan Kang; Hyun Joon An; Hyeongmin Jin; Jung-In Kim; Eui Kyu Chie; Jong Min Park; Jae Sung Lee
Journal:  Biomed Eng Lett       Date:  2021-06-19
  3 in total

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