Unsupervised pseudo CT generation using heterogenous multicentric CT/MR images and CycleGAN: Dosimetric assessment for 3D conformal radiotherapy

被引:26
作者
Jabbarpour, Amir [1 ]
Mahdavi, Seied Rabi [1 ,2 ]
Sadr, Alireza Vafaei [3 ,9 ,10 ]
Esmaili, Golbarg [4 ]
Shiri, Isaac [5 ]
Zaidi, Habib [5 ,6 ,7 ,8 ]
机构
[1] Iran Univ Med Sci, Sch Med, Med Phys Dept, Tehran, Iran
[2] Iran Univ Med Sci, Radiat Biol Res Ctr, Tehran, Iran
[3] RWTH Aachen Univ Hosp, Inst Pathol, Aachen, Germany
[4] Pars Hosp, Tehran, Iran
[5] Geneva Univ Hosp, Div Nucl Med & Mol Imaging, CH-1211 Geneva 4, Switzerland
[6] Univ Geneva, Neuroctr, Geneva, Switzerland
[7] Univ Groningen, Univ Med Ctr Groningen, Dept Nucl Med & Mol Imaging, Groningen, Netherlands
[8] Univ Southern Denmark, Dept Nucl Med, Odense, Denmark
[9] Univ Geneva, Dept Theoret Phys, Geneva, Switzerland
[10] Univ Geneva, Ctr Astroparticle Phys, Geneva, Switzerland
基金
瑞士国家科学基金会;
关键词
MRI-Only radiotherapy; Brain tumors; Unsupervised deep learning; CycleGAN; RADIATION-THERAPY; MRI; REGISTRATION;
D O I
10.1016/j.compbiomed.2022.105277
中图分类号
Q [生物科学];
学科分类号
07 ; 0710 ; 09 ;
摘要
Purpose: Absorbed dose calculation in magnetic resonance-guided radiation therapy (MRgRT) is commonly based on pseudo CT (pCT) images. This study investigated the feasibility of unsupervised pCT generation from MRI using a cycle generative adversarial network (CycleGAN) and a heterogenous multicentric dataset. A dosimetric analysis in three-dimensional conformal radiotherapy (3DCRT) planning was also performed. Material and methods: Overall, 87 T1-weighted and 102 T2-weighted MR images alongside with their corre-sponding computed tomography (CT) images of brain cancer patients from multiple centers were used. Initially, images underwent a number of preprocessing steps, including rigid registration, novel CT Masker, N4 bias field correction, resampling, resizing, and rescaling. To overcome the gradient vanishing problem, residual blocks and mean squared error (MSE) loss function were utilized in the generator and in both networks (generator and discriminator), respectively. The CycleGAN was trained and validated using 70 T1 and 80 T2 randomly selected patients in an unsupervised manner. The remaining patients were used as a holdout test set to report final evaluation metrics. The generated pCTs were validated in the context of 3DCRT. Results: The CycleGAN model using masked T2 images achieved better performance with a mean absolute error (MAE) of 61.87 +/- 22.58 HU, peak signal to noise ratio (PSNR) of 27.05 +/- 2.25 (dB), and structural similarity index metric (SSIM) of 0.84 +/- 0.05 on the test dataset. T1-weighted MR images used for dosimetric assessment revealed a gamma index of 3%, 3 mm, 2%, 2 mm and 1%, 1 mm with acceptance criteria of 98.96%+/- 1.1%, 95% +/- 3.68%, 90.1% +/- 6.05%, respectively. The DVH differences between CTs and pCTs were within 2%. Conclusions: A promising pCT generation model capable of handling heterogenous multicenteric datasets was proposed. All MR sequences performed competitively with no significant difference in pCT generation. The proposed CT Masker proved promising in improving the model accuracy and robustness. There was no significant difference between using T1-weighted and T2-weighted MR images for pCT generation.
引用
收藏
页数:12
相关论文
共 35 条
[1]   Dosimetry-Driven Quality Measure of Brain Pseudo Computed Tomography Generated From Deep Learning for MRI-Only Radiation Therapy Treatment Planning [J].
Andres, Emilie Alvarez ;
Fidon, Lucas ;
Vakalopoulou, Maria ;
Lerousseau, Marvin ;
Carre, Alexandre ;
Sun, Roger ;
Klausner, Guillaume ;
Ammari, Samy ;
Benzazon, Nathan ;
Reuze, Sylvain ;
Estienne, Theo ;
Niyoteka, Stephane ;
Battistella, Enzo ;
Rouyar, Angela ;
Noel, Georges ;
Beaudre, Anne ;
Dhermain, Frederic ;
Deutsch, Eric ;
Paragios, Nikos ;
Robert, Charlotte .
INTERNATIONAL JOURNAL OF RADIATION ONCOLOGY BIOLOGY PHYSICS, 2020, 108 (03) :813-823
[2]  
Bok V, DEEP LEARNING GENERA
[3]   Dual-core steered non-rigid registration for multi-modal images via bi-directional image synthesis [J].
Cao, Xiaohuan ;
Yang, Jianhua ;
Gao, Yaozong ;
Guo, Yanrong ;
Wu, Guorong ;
Shen, Dinggang .
MEDICAL IMAGE ANALYSIS, 2017, 41 :18-31
[4]   Toward Implementing an MRI-Based PET Attenuation-Correction Method for Neurologic Studies on the MR-PET Brain Prototype [J].
Catana, Ciprian ;
van der Kouwe, Andre ;
Benner, Thomas ;
Michel, Christian J. ;
Hamm, Michael ;
Fenchel, Matthias ;
Fischl, Bruce ;
Rosen, Bruce ;
Schmand, Matthias ;
Sorensen, A. Gregory .
JOURNAL OF NUCLEAR MEDICINE, 2010, 51 (09) :1431-1438
[5]   An evaluation of four CT-MRI co-registration techniques for radiotherapy treatment planning of prone rectal cancer patients [J].
Dean, C. J. ;
Sykes, J. R. ;
Cooper, R. A. ;
Hatfield, P. ;
Carey, B. ;
Swift, S. ;
Bacon, S. E. ;
Thwaites, D. ;
Sebag-Montefiore, D. ;
Morgan, A. M. .
BRITISH JOURNAL OF RADIOLOGY, 2012, 85 (1009) :61-68
[6]   Dosimetric evaluation of synthetic CT for head and neck radiotherapy generated by a patch-based three-dimensional convolutional neural network [J].
Dinkla, Anna M. ;
Florkow, Mateusz C. ;
Maspero, Matteo ;
Savenije, Mark H. F. ;
Zijlstra, Frank ;
Doornaert, Patricia A. H. ;
van Stralen, Marijn ;
Philippens, Marielle E. P. ;
van den Berg, Cornelis A. T. ;
Seevinck, Peter R. .
MEDICAL PHYSICS, 2019, 46 (09) :4095-4104
[7]   Automatic Substitute Computed Tomography Generation and Contouring for Magnetic Resonance Imaging (MRI)-Alone External Beam Radiation Therapy From Standard MRI Sequences [J].
Dowling, Jason A. ;
Sun, Jidi ;
Pichler, Peter ;
Rivest-Henault, David ;
Ghose, Soumya ;
Richardson, Haylea ;
Wratten, Chris ;
Martin, Jarad ;
Arm, Jameen ;
Best, Leah ;
Chandra, Shekhar S. ;
Fripp, Jurgen ;
Menk, Frederick W. ;
Greer, Peter B. .
INTERNATIONAL JOURNAL OF RADIATION ONCOLOGY BIOLOGY PHYSICS, 2015, 93 (05) :1144-1153
[8]   A review of substitute CT generation for MRI-only radiation therapy [J].
Edmund, Jens M. ;
Nyholm, Tufve .
RADIATION ONCOLOGY, 2017, 12
[9]   Generating synthetic CTs from magnetic resonance images using generative adversarial networks [J].
Emami, Hajar ;
Dong, Ming ;
Nejad-Davarani, Siamak P. ;
Glide-Hurst, Carri K. .
MEDICAL PHYSICS, 2018, 45 (08) :3627-3636
[10]   MR-based synthetic CT generation using a deep convolutional neural network method [J].
Han, Xiao .
MEDICAL PHYSICS, 2017, 44 (04) :1408-1419