scholarly journals Fluence Map Prediction Using Deep Learning Models – Direct Plan Generation for Pancreas Stereotactic Body Radiation Therapy

Author(s):  
Wentao Wang ◽  
Yang Sheng ◽  
Chunhao Wang ◽  
Jiahan Zhang ◽  
Xinyi Li ◽  
...  
2020 ◽  
Vol 392 ◽  
pp. 181-188 ◽  
Author(s):  
Bulat Ibragimov ◽  
Diego A.S. Toesca ◽  
Daniel T. Chang ◽  
Yixuan Yuan ◽  
Albert C. Koong ◽  
...  

2020 ◽  
Vol 47 (8) ◽  
pp. 3721-3731
Author(s):  
Bulat Ibragimov ◽  
Diego A. S. Toesca ◽  
Daniel T. Chang ◽  
Yixuan Yuan ◽  
Albert C. Koong ◽  
...  

Author(s):  
Wentao Wang ◽  
Yang Sheng ◽  
Manisha Palta ◽  
Brian Czito ◽  
Christopher Willett ◽  
...  

Abstract Objective: To design a deep transfer learning framework for modeling fluence map predictions for stereotactic body radiation therapy (SBRT) of adrenal cancer and similar sites that usually have a small number of cases. Approach: We developed a transfer learning framework for adrenal SBRT planning that leverages knowledge in a pancreas SBRT planning model. Treatment plans from the two sites had different dose prescriptions and beam settings but both prioritized gastrointestinal sparing. A base framework was first trained with 100 pancreas cases. This framework consists of two convolutional neural networks (CNN), which predict individual beam doses (BD-CNN) and fluence maps (FM-CNN) sequentially for 9-beam intensity-modulated radiation therapy (IMRT) plans. Forty-five adrenal plans were split into training/validation/test sets with the ratio of 20/10/15. The base BD-CNN was re-trained with transfer learning using 5/10/15/20 adrenal training cases to produce multiple candidate adrenal BD-CNN models. The base FM-CNN was directly used for adrenal cases. The deep learning (DL) plans were evaluated by several clinically relevant dosimetric endpoints, producing a percentage score relative to the clinical plans. Main results: Transfer learning significantly reduced the number of training cases and training time needed to train such a DL framework. The adrenal transfer learning model trained with 5/10/15/20 cases achieved validation plan scores of 85.4/91.2/90.7/89.4, suggesting that model performance saturated with 10 training cases. Meanwhile, a model using all 20 adrenal training cases without transfer learning only scored 80.5. For the final test set, the 5/10/15/20-case models achieved scores of 73.5/75.3/78.9/83.3. Significance: It is feasible to use deep transfer learning to train an IMRT fluence prediction framework. This technique could adapt to different dose prescriptions and beam configurations. This framework potentially enables DL modeling for clinical sites that have a limited dataset, either due to few cases or due to rapid technology evolution.


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