基于深度学习的容积调制弧治疗剂量计算方法

IF 3.3 2区 医学 Q2 ONCOLOGY Radiation Oncology Pub Date : 2024-10-10 DOI:10.1186/s13014-024-02534-2
Bin Liang, Wenlong Xia, Ran Wei, Yuan Xu, Zhiqiang Liu, Jianrong Dai
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引用次数: 0

摘要

背景:容积调制弧治疗(VMAT)规划优化涉及众多参数的迭代调整,因此需要反复进行剂量重新计算。在这项研究中,我们利用深度学习方法开发了一种用于 VMAT 的快速准确剂量计算方法:方法:采用经典的三维 UNet 并对其进行训练,以学习剂量计算的物理原理。输入包括投射通量图(FM)、计算机断层扫描(CT)图像、放射深度和源到象素距离(SVD)。投射通量图是通过将两个连续控制点(CP)之间的累积通量图投射到患者的解剖结构上生成的。累积调频是通过模拟多叶准直器(MLC)从一个控制点到下一个控制点的运动来计算的。治疗计划系统(TPS)计算出的剂量被用作基本事实。使用了 51 个头颈部 VMAT 计划,其中 43、1 和 7 个病例分别作为训练、验证和测试数据集。相应地,训练、验证和测试数据集中分别包含 7182、180 和 1260 个 CP 样本:通过比较得出的剂量分布与 TPS 计算的剂量分布,对所提出的方法进行了评估。单个 CP 和整个计划(所有 CP 的总和)的剂量分布都是一致的。但网络推导的剂量比 TPS 计算的剂量更平滑。对网络得出的剂量和 TPS 计算得出的剂量进行了伽马分析。在 2%(容许误差)-2 毫米(一致距离,DTA)的标准下,平均伽马通过率分别为 96.56%、98.75%、98.03% 和 99.30%。2%-3 毫米、3%-2 毫米和 3%-3 毫米。在最大值、平均剂量以及 2000 cGy、4000 cGy 和处方剂量覆盖的相对体积等关键指标上,没有观察到明显差异。对于一个 CP,网络和 TPS 的平均计算时间分别为 0.09s 和 0.53s。对于一名患者,网络和 TPS 的平均计算时间分别为 16.51s 和 95.60s:网络得出的剂量分布与 TPS 计算得出的剂量分布显示出良好的一致性。计算时间缩短至原来的六分之一。因此,所介绍的基于深度学习的剂量计算方法有望用于计划优化。
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A deep learning-based dose calculation method for volumetric modulated arc therapy.

Background: Volumetric modulated arc therapy (VMAT) planning optimization involves iterative adjustment of numerous parameters, and hence requires repeatedly dose recalculation. In this study, we used the deep learning method to develop a fast and accurate dose calculation method for VMAT.

Methods: The classical 3D UNet was adopted and trained to learn the physics principle of dose calculation. The inputs included the projected fluence map (FM), computed tomography (CT) images, the radiological depth and the source-to-voxel distance (SVD). The projected FM was generated by projecting the accumulated FM between two consecutive control points (CPs) onto the patient's anatomy. The accumulated FM was calculated by simulating the movement of the multi-leaf collimator (MLC) from one CP to the next. The dose, calculated by the treatment planning system (TPS), was used as ground truth. 51 head and neck VMAT plans were used, with 43, 1 and 7 cases as training, validation, and testing datasets, respectively. Correspondingly, 7182, 180 and 1260 CP samples were included in the training, validation, and testing datasets.

Results: This presented method was evaluated by comparing the derived dose distribution to the TPS calculated dose distribution. The dose profiles coincided for both the single CP and the entire plan (summation of all CPs). But the network derived dose was smoother than the TPS calculated dose. Gamma analysis was performed between the network derived dose and the TPS calculated dose. The average gamma pass rate was 96.56%, 98.75%, 98.03% and 99.30% under the criteria of 2% (tolerance) -2 mm (distance to agreement, DTA). 2%-3 mm, 3%-2 mm and 3%-3 mm. No significant difference was observed on the critical indices including the max, mean dose, and the relative volume covered by the 2000 cGy, 4000 cGy and the prescription dose. For one CP, the average computational time of the network and TPS was 0.09s and 0.53s. And for one patient, the average time was 16.51s and 95.60s.

Conclusion: The dose distribution derived by the network showed good agreement with the TPS calculated dose distribution. The computational time was reduced to approximate one-sixth of its original duration. Therefore the presented deep learning-based dose calculation method has the potential to be used for planning optimization.

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来源期刊
Radiation Oncology
Radiation Oncology ONCOLOGY-RADIOLOGY, NUCLEAR MEDICINE & MEDICAL IMAGING
CiteScore
6.50
自引率
2.80%
发文量
181
审稿时长
3-6 weeks
期刊介绍: Radiation Oncology encompasses all aspects of research that impacts on the treatment of cancer using radiation. It publishes findings in molecular and cellular radiation biology, radiation physics, radiation technology, and clinical oncology.
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