论文标题
OpenKBP-OPT:对76种基于知识的计划管道的国际和可再现评估
OpenKBP-Opt: An international and reproducible evaluation of 76 knowledge-based planning pipelines
论文作者
论文摘要
我们建立了开放框架,用于开发放射疗法中基于知识的计划(KBP)的计划优化模型。我们的框架包括针对100例头颈癌患者的参考计划,以及在OpenKBP大挑战期间由不同研究组开发的19个KBP模型的高质量剂量预测。剂量预测输入了四个优化模型,以形成生成7600个计划的76个独特的KBP管道。将预测和计划与参考计划通过:剂量分数进行了比较,这是达到剂量的平均平均绝对体素逐素差异;剂量 - 体积直方图(DVH)标准的偏差;以及临床计划标准满意度的频率。我们还进行了理论研究,以证明我们的剂量模仿模型。预测和其KBP管道之间剂量得分的等级顺序相关范围为0.50至0.62,这表明预测的质量通常与计划质量呈正相关。此外,与输入预测相比,KBP生成的计划在23个DVH标准中的18个标准中的18个计划表现出色(p <0.05;单侧Wilcoxon测试)。同样,每个优化模型生成的计划满足了比参考计划更高的标准。最后,我们的理论调查表明,模仿模型的剂量模型生成的计划也是传统计划模型的最佳选择。这是评估KBP预测和优化模型组合的最大国际努力。为了重现性,我们的数据和代码可在https://github.com/ababier/open-kbp-opt上自由获取。
We establish an open framework for developing plan optimization models for knowledge-based planning (KBP) in radiotherapy. Our framework includes reference plans for 100 patients with head-and-neck cancer and high-quality dose predictions from 19 KBP models that were developed by different research groups during the OpenKBP Grand Challenge. The dose predictions were input to four optimization models to form 76 unique KBP pipelines that generated 7600 plans. The predictions and plans were compared to the reference plans via: dose score, which is the average mean absolute voxel-by-voxel difference in dose a model achieved; the deviation in dose-volume histogram (DVH) criterion; and the frequency of clinical planning criteria satisfaction. We also performed a theoretical investigation to justify our dose mimicking models. The range in rank order correlation of the dose score between predictions and their KBP pipelines was 0.50 to 0.62, which indicates that the quality of the predictions is generally positively correlated with the quality of the plans. Additionally, compared to the input predictions, the KBP-generated plans performed significantly better (P<0.05; one-sided Wilcoxon test) on 18 of 23 DVH criteria. Similarly, each optimization model generated plans that satisfied a higher percentage of criteria than the reference plans. Lastly, our theoretical investigation demonstrated that the dose mimicking models generated plans that are also optimal for a conventional planning model. This was the largest international effort to date for evaluating the combination of KBP prediction and optimization models. In the interest of reproducibility, our data and code is freely available at https://github.com/ababier/open-kbp-opt.