基于深度学习的重离子治疗蒙特卡罗剂量分布预测

IF 3.4 Q2 ONCOLOGY
Rui He , Hui Zhang , Jian Wang , Guosheng Shen , Ying Luo , Xinyang Zhang , Yuanyuan Ma , Xinguo Liu , Yazhou Li , Haibo Peng , Pengbo He , Qiang Li
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引用次数: 0

摘要

背景和目的目前的方法,如治疗计划系统算法(TPSDose)缺乏准确性,而蒙特卡罗剂量分布(MCDose)准确但计算量大。提出了一种用于重离子治疗(HIT)中蒙特卡罗模拟剂量分布(MCDose)快速预测的深度学习(DL)模型。材料和方法我们建立了一个DL模型-级联分层密集3D U-Net (CHD U-Net) -利用计算机断层扫描图像和TPSDose预测67例头颈部患者和30例胸腹患者的MCDose。我们还将结果与其他质子剂量DL模型和TPSDose进行了比较。结果与TPSDose相比,伽玛通过率(GPR)提高16% (1 %/1 mm)。值得注意的是,在临床相关标准(3% / 3mm)下,该模型在患者的整个剂量分布中达到了99%和97%的准确性。对于头颈部患者,C3D和HD U-Net模型在PTV区域的GPRs分别为97%和85%,在体内的GPRs分别为98%和97%。对于胸腹部患者,C3D和HD U-Net模型在PTV区域的GPR分别为71%和51%,在体内的GPR分别为95%和90%。结论所建立的冠心病U-Net模型可以在几秒内预测MCDose,优于两种备选的DL模型。预测剂量由于其MC模拟的准确性,可以代替TPSDose在HIT临床过程中使用,从而提高剂量计算的准确性,为质量保证提供有价值的参考。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Deep learning-based prediction of Monte Carlo dose distribution for heavy ion therapy

Background and purpose

Current methods, like treatment planning system algorithms (TPSDose), lack accuracy, whereas Monte Carlo dose distribution (MCDose) is accurate but computationally intensive. We proposed a deep learning (DL) model for rapid prediction of Monte Carlo simulated dose distribution (MCDose) in heavy ion therapy (HIT).

Materials and methods

We developed a DL model − the Cascade Hierarchically Densely 3D U-Net (CHD U-Net) − to predict MCDose using computed tomography images and TPSDose of 67 head-and-neck patients and 30 thorax-and-abdomen patients. We also compared the results with other proton dose DL models and TPSDose.

Results

Compared to TPSDose, the gamma passing rate (GPR) improved by 16 % (1 %/1 mm). Notably, the model achieved 99 % and 97 % accuracy under clinically relevant criteria (3 %/3 mm) across the whole dose distribution in patients. For head-and-neck patients, the GPRs of the C3D and HD U-Net models in the PTV region were 97 % and 85 %, and in the body were 98 % and 97 %, respectively. For thorax-and-abdomen patients, the GPR of the C3D and HD U-Net models in the PTV region were 71 % and 51 %, and in the body were 95 % and 90 %, respectively.

Conclusions

The proposed CHD U-Net model can predict MCDose in a few seconds and outperforms two alternative DL models. The predicted dose can replace TPSDose in HIT clinical process due to its MC simulation accuracy, thus improving the accuracy of dose calculation and providing a valuable reference for quality assurance.
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来源期刊
Physics and Imaging in Radiation Oncology
Physics and Imaging in Radiation Oncology Physics and Astronomy-Radiation
CiteScore
5.30
自引率
18.90%
发文量
93
审稿时长
6 weeks
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