Deep learning based linear energy transfer calculation for proton therapy

被引:4
作者
Tang, Xueyan [1 ]
Wan Chan Tseung, Hok [1 ]
Moseley, Douglas [1 ]
Zverovitch, Alexei [2 ]
Hughes, Cian O. [2 ]
George, Jon [2 ]
Johnson, Jedediah E. [1 ]
Breen, William G. [1 ]
Qian, Jing [1 ]
机构
[1] Dept Radiat Oncol, Mayo Clin, 200 First St SW, Rochester, MN 55905 USA
[2] Google Inc, Mountain View, CA USA
关键词
deep learning; linear energy transfer; proton therapy; EFFECTIVENESS RBE VALUES; BIOLOGICAL EFFECTIVENESS; CLINICAL-EVIDENCE; BEAM; OPTIMIZATION; CONSTRAINTS;
D O I
10.1088/1361-6560/ad4844
中图分类号
R318 [生物医学工程];
学科分类号
0831 ;
摘要
Objective. This study aims to address the limitations of traditional methods for calculating linear energy transfer (LET), a critical component in assessing relative biological effectiveness (RBE). Currently, Monte Carlo (MC) simulation, the gold-standard for accuracy, is resource-intensive and slow for dose optimization, while the speedier analytical approximation has compromised accuracy. Our objective was to prototype a deep-learning-based model for calculating dose-averaged LET (LETd) using patient anatomy and dose-to-water (DW) data, facilitating real-time biological dose evaluation and LET optimization within proton treatment planning systems. Approach. 275 4-field prostate proton Stereotactic Body Radiotherapy plans were analyzed, rendering a total of 1100 fields. Those were randomly split into 880, 110, and 110 fields for training, validation, and testing. A 3D Cascaded UNet model, along with data processing and inference pipelines, was developed to generate patient-specific LETd distributions from CT images and DW. The accuracy of the LETd of the test dataset was evaluated against MC-generated ground truth through voxel-based mean absolute error (MAE) and gamma analysis. Main results. The proposed model accurately inferred LETd distributions for each proton field in the test dataset. A single-field LETd calculation took around 100 ms with trained models running on a NVidia A100 GPU. The selected model yielded an average MAE of 0.94 +/- 0.14 MeV cm-1 and a gamma passing rate of 97.4% +/- 1.3% when applied to the test dataset, with the largest discrepancy at the edge of fields where the dose gradient was the largest and counting statistics was the lowest. Significance. This study demonstrates that deep-learning-based models can efficiently calculate LETd with high accuracy as a fast-forward approach. The model shows great potential to be utilized for optimizing the RBE of proton treatment plans. Future efforts will focus on enhancing the model's performance and evaluating its adaptability to different clinical scenarios.
引用
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页数:11
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