Deep learning-based prediction of deliverable adaptive plans for MR-guided adaptive radiotherapy: A feasibility study

被引:9
作者
Buchanan, Laura [1 ]
Hamdan, Saleh [1 ]
Zhang, Ying [1 ]
Chen, Xinfeng [1 ]
Li, X. Allen [1 ]
机构
[1] Med Coll Wisconsin, Dept Radiat Oncol, Milwaukee, WI 53226 USA
关键词
adaptive radiation therapy; MR-guided adaptive radiation therapy; online replanning; real-time adaptation; deep-learning;
D O I
10.3389/fonc.2023.939951
中图分类号
R73 [肿瘤学];
学科分类号
100214 ;
摘要
PurposeFast and automated plan generation is desirable in radiation therapy (RT), in particular, for MR-guided online adaptive RT (MRgOART) or real-time (intrafractional) adaptive RT (MRgRART), to reduce replanning time. The purpose of this study is to investigate the feasibility of using deep learning to quickly predict deliverable adaptive plans based on a target dose distribution for MRgOART/MRgRART. MethodsA conditional generative adversarial network (cGAN) was trained to predict the MLC leaf sequence corresponding to a target dose distribution based on reference plan created prior to MRgOART using a 1.5T MR-Linac. The training dataset included 50 ground truth dose distributions and corresponding beam parameters (aperture shapes and weights) created during MRgOART for 10 pancreatic cancer patients (each with five fractions). The model input was the dose distribution from each individual beam and the output was the predicted corresponding field segments with specific shape and weight. Patient-based leave-one-out-cross-validation was employed and for each model trained, four (44 training beams) out of five fractionated plans of the left-out patient were set aside for testing purposes. We deliberately kept a single fractionated plan in the training dataset so that the model could learn to replan the patient based on a prior plan. The model performance was evaluated by calculating the gamma passing rate of the ground truth dose vs. the dose from the predicted adaptive plan and calculating max and mean dose metrics. ResultsThe average gamma passing rate (95%, 3mm/3%) among 10 test cases was 88%. In general, we observed 95% of the prescription dose to PTV achieved with an average 7.6% increase of max and mean dose, respectively, to OARs for predicted replans. Complete adaptive plans were predicted in <= 20 s using a GTX 1660TI GPU. ConclusionWe have proposed and demonstrated a deep learning method to generate adaptive plans automatically and rapidly for MRgOART. With further developments using large datasets and the inclusion of patient contours, the method may be implemented to accelerate MRgOART process or even to facilitate MRgRART.
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页数:9
相关论文
共 26 条
[1]   An on-line replanning scheme for interfractional variations [J].
Ahunbay, Ergun E. ;
Peng, Cheng ;
Chen, Guang-Pei ;
Narayanan, Sreeram ;
Yu, Cedric ;
Lawton, Colleen ;
Li, X. Allen .
MEDICAL PHYSICS, 2008, 35 (08) :3607-3615
[2]  
[Anonymous], 2018, P 3 MACH LEARN HEALT
[3]   Knowledge-based automated planning with three-dimensional generative adversarial networks [J].
Babier, Aaron ;
Mahmood, Rafid ;
McNiven, Andrea L. ;
Diamant, Adam ;
Chan, Timothy C. Y. .
MEDICAL PHYSICS, 2020, 47 (02) :297-306
[4]   Three-dimensional dose prediction for lung IMRT patients with deep neural networks: robust learning from heterogeneous beam configurations [J].
Barragan-Montero, Ana Maria ;
Dan Nguyen ;
Lu, Weiguo ;
Lin, Mu-Han ;
Norouzi-Kandalan, Roya ;
Geets, Xavier ;
Sterpin, Edmond ;
Jiang, Steve .
MEDICAL PHYSICS, 2019, 46 (08) :3679-3691
[5]   Significance of intra-fractional motion for pancreatic patients treated with charged particles [J].
Batista, Vania ;
Richter, Daniel ;
Chaudhri, Naved ;
Naumann, Patrick ;
Herfarth, Klaus ;
Jaekel, Oliver .
RADIATION ONCOLOGY, 2018, 13
[6]   Big Data and machine learning in radiation oncology: State of the art and future prospects [J].
Bibault, Jean-Emmanuel ;
Giraud, Philippe ;
Burgun, Anita .
CANCER LETTERS, 2016, 382 (01) :110-117
[7]   Neural network dose models for knowledge-based planning in pancreatic SBRT [J].
Campbell, Warren G. ;
Miften, Moyed ;
Olsen, Lindsey ;
Stumpf, Priscilla ;
Schefter, Tracey ;
Goodman, Karyn A. ;
Jones, Bernard L. .
MEDICAL PHYSICS, 2017, 44 (12) :6148-6158
[8]   Advances in Auto-Segmentation [J].
Cardenas, Carlos E. ;
Yang, Jinzhong ;
Anderson, Brian M. ;
Court, Laurence E. ;
Brock, Kristy B. .
SEMINARS IN RADIATION ONCOLOGY, 2019, 29 (03) :185-197
[9]   A feasibility study on an automated method to generate patient-specific dose distributions for radiotherapy using deep learning [J].
Chen, Xinyuan ;
Men, Kuo ;
Li, Yexiong ;
Yi, Junlin ;
Dai, Jianrong .
MEDICAL PHYSICS, 2019, 46 (01) :56-64
[10]   A feasibility study for predicting optimal radiation therapy dose distributions of prostate cancer patients from patient anatomy using deep learning [J].
Dan Nguyen ;
Long, Troy ;
Jia, Xun ;
Lu, Weiguo ;
Gu, Xuejun ;
Iqbal, Zohaib ;
Jiang, Steve .
SCIENTIFIC REPORTS, 2019, 9 (1)