论文标题
自动处理计划从计算机断层扫描到磁共振的域适应
Domain Adaptation of Automated Treatment Planning from Computed Tomography to Magnetic Resonance
论文作者
论文摘要
目的:基于机器学习(ML)的辐射治疗(RT)计划涉及常规反向计划的迭代和耗时的性质。鉴于仅磁共振(MR)仅处理治疗计划工作流程的重要性,我们试图确定是否可以通过域的适应来应用于计算机断层扫描(CT)成像的基于ML的治疗计划模型(CT)成像。方法:在这项研究中,MR和CT成像是从55名在MR线性加速器治疗的前列腺癌患者中收集的。使用RayStation 8b中的市售模型为每个患者和MR成像生成了基于ML的计划。使用机构剂量评估标准比较了基于MR和CT计划的剂量分布和接受率。 MR和CT计划之间的剂量差异进一步分解为设置,队列和成像域组件。结果:MR计划是高度可接受的,符合所有评估标准的93.1%,而CT计划的96.3%,除膀胱壁,阴茎灯泡,大肠,一个直肠壁标准外,所有评估标准的剂量等效性(p <0.05)。更改输入成像方式(域组件)仅占MR和CT计划之间观察到的差异差异的一半。 ML训练集与LINAC MR(队列组件)之间的解剖学差异也是重要的贡献者。意义:尽管观察到临床上显着的剂量偏差,但观察到了基于CT的计划,我们能够使用CT训练的ML模型来制定高度可接受的基于MR的治疗计划。
Objective: Machine learning (ML) based radiation treatment (RT) planning addresses the iterative and time-consuming nature of conventional inverse planning. Given the rising importance of Magnetic resonance (MR) only treatment planning workflows, we sought to determine if an ML based treatment planning model, trained on computed tomography (CT) imaging, could be applied to MR through domain adaptation. Methods: In this study, MR and CT imaging was collected from 55 prostate cancer patients treated on an MR linear accelerator. ML based plans were generated for each patient on both CT and MR imaging using a commercially available model in RayStation 8B. The dose distributions and acceptance rates of MR and CT based plans were compared using institutional dose-volume evaluation criteria. The dosimetric differences between MR and CT plans were further decomposed into setup, cohort, and imaging domain components. Results: MR plans were highly acceptable, meeting 93.1% of all evaluation criteria compared to 96.3% of CT plans, with dose equivalence for all evaluation criteria except for the bladder wall, penile bulb, small and large bowel, and one rectum wall criteria (p<0.05). Changing the input imaging modality (domain component) only accounted for about half of the dosimetric differences observed between MR and CT plans. Anatomical differences between the ML training set and the MR linac cohort (cohort component) were also a significant contributor. Significance: We were able to create highly acceptable MR based treatment plans using a CT-trained ML model for treatment planning, although clinically significant dose deviations from the CT based plans were observed.