Kamima Tatsuya, Yoshioka Minoru, Takahashi Ryo, Sato Tomoharu
Radiation Oncology Department, The Cancer Institute Hospital, Japanese Foundation for Cancer Research.
Section of Radiation Safety and Quality Assurance, National Cancer Center Hospital East.
Nihon Hoshasen Gijutsu Gakkai Zasshi. 2019;75(2):151-159. doi: 10.6009/jjrt.2019_JSRT_75.2.151.
RapidPlan, a knowledge-based planning software, uses a model library containing the dose-volume histogram (DVH) of previous treatment plans, and it automatically provides optimization objectives based on a trained model to future patients for volumetric modulated arc therapy treatment planning. However, it is unknown how DVH outliers registered in models influence the resulting plans. The purpose of this study was to investigate the effect of DVH outliers on the resulting quality of RapidPlan knowledge-based plans generated for patients with prostate cancer. First, 123 plans for patients with prostate cancer were used to populate the initial model (model). Next, model and model were created by excluding DVH outliers of bladder optimization contours 20 and 40 patients from model, respectively. These models were used to create plans for a 20-patient. The plans created using model showed reductions of D and D in the bladder wall dose, and the DVH shape excluding outliers were affected. However, there were no significant differences in monitor units, target doses, or bladder wall doses between each treatment plan. Thus, we have shown that removal of DVH outliers from models does not affect the quality of plans created by the model.
RapidPlan是一款基于知识的计划软件,它使用一个包含先前治疗计划剂量体积直方图(DVH)的模型库,并基于训练模型自动为未来患者的容积调强弧形放疗治疗计划提供优化目标。然而,模型中记录的DVH异常值如何影响最终计划尚不清楚。本研究的目的是调查DVH异常值对为前列腺癌患者生成的基于RapidPlan知识的计划最终质量的影响。首先,使用123例前列腺癌患者的计划来填充初始模型(模型)。接下来,分别通过排除模型中20例和40例患者膀胱优化轮廓的DVH异常值来创建模型和模型。这些模型用于为20例患者创建计划。使用模型创建的计划显示膀胱壁剂量中的D和D降低,并且排除异常值后的DVH形状受到影响。然而,各治疗计划之间在监测单位、靶剂量或膀胱壁剂量方面没有显著差异。因此,我们表明从模型中去除DVH异常值不会影响模型创建的计划质量。