Nwankwo Obioma, Sihono Dwi Seno K, Schneider Frank, Wenz Frederik
Department of Radiation Oncology, Universitätsmedizin Mannheim, University of Heidelberg, Theodor-Kutzer-Ufer 1-3, D-68167, Mannheim, Germany.
Phys Med Biol. 2014 Sep 21;59(18):5575-91. doi: 10.1088/0031-9155/59/18/5575. Epub 2014 Aug 29.
The quality of radiotherapy treatment plans varies across institutions and depends on the experience of the planner. For the purpose of intra- and inter-institutional homogenization of treatment plan quality, we present an algorithm that learns the organs-at-risk (OARs) sparing patterns from a database of high quality plans. Thereafter, the algorithm predicts the dose that similar organs will receive in future radiotherapy plans prior to treatment planning on the basis of the anatomies of the organs. The predicted dose provides the basis for the individualized specification of planning objectives, and for the objective assessment of the quality of radiotherapy plans.
One hundred and twenty eight (128) Volumetric Modulated Arc Therapy (VMAT) plans were selected from a database of prostate cancer plans. The plans were divided into two groups, namely a training set that is made up of 95 plans and a validation set that consists of 33 plans. A multivariate analysis technique was used to determine the relationships between the positions of voxels and their dose. This information was used to predict the likely sparing of the OARs of the plans of the validation set. The predicted doses were visually and quantitatively compared to the reference data using dose volume histograms, the 3D dose distribution, and a novel evaluation metric that is based on the dose different test.
A voxel of the bladder on the average receives a higher dose than a voxel of the rectum in optimized radiotherapy plans for the treatment of prostate cancer in our institution if both voxels are at the same distance to the PTV. Based on our evaluation metric, the predicted and reference dose to the bladder agree to within 5% of the prescribed dose to the PTV in 18 out of 33 cases, while the predicted and reference doses to the rectum agree to within 5% in 28 out of the 33 plans of the validation set.
We have described a method to predict the likely dose that OARs will receive before treatment planning. This prospective knowledge could be used to implement a global quality assurance system for personalized radiation therapy treatment planning.
放射治疗计划的质量在不同机构之间存在差异,并且取决于计划制定者的经验。为了实现机构内部和机构间治疗计划质量的同质化,我们提出了一种算法,该算法从高质量计划数据库中学习危及器官(OARs)的 sparing 模式。此后,该算法在治疗计划之前,根据器官的解剖结构预测未来放射治疗计划中相似器官将接受的剂量。预测剂量为规划目标的个体化设定以及放射治疗计划质量的客观评估提供了基础。
从前列腺癌计划数据库中选择了128个容积调强弧形治疗(VMAT)计划。这些计划被分为两组,即由95个计划组成的训练集和由33个计划组成的验证集。使用多变量分析技术来确定体素位置与其剂量之间的关系。此信息用于预测验证集计划中OARs的可能 sparing情况。使用剂量体积直方图、3D剂量分布以及基于剂量差异测试的新型评估指标,将预测剂量与参考数据进行视觉和定量比较。
在我们机构中,对于前列腺癌治疗的优化放射治疗计划,如果膀胱和直肠的体素到计划靶体积(PTV)的距离相同,膀胱的体素平均比直肠的体素接受更高的剂量。根据我们的评估指标,在验证集的33个病例中的18个病例中,膀胱的预测剂量与参考剂量在PTV规定剂量的5%以内相符,而在验证集的33个计划中的28个计划中,直肠的预测剂量与参考剂量在5%以内相符。
我们描述了一种在治疗计划之前预测OARs可能接受剂量的方法。这种前瞻性知识可用于实施个性化放射治疗计划的全球质量保证系统。