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基于精确 3D 剂量的机器人放射治疗的多叶准直器段生成。

Accurate 3D-dose-based generation of MLC segments for robotic radiotherapy.

机构信息

Department of Radiation Oncology, Erasmus MC Cancer Institute, Rotterdam, the Netherlands.

出版信息

Phys Med Biol. 2020 Aug 31;65(17):175011. doi: 10.1088/1361-6560/ab97e7.

DOI:10.1088/1361-6560/ab97e7
PMID:32470965
Abstract

Radiotherapy treatment planning requires accurate modeling of the delivered patient dose, including radiation scatter effects, multi-leaf collimator (MLC) leaf transmission, interleaf-leakage, etc. In fluence map optimization (FMO), a simple dose model is used to first generate an intermediate plan based on pencil-beams. In a second step (segmentation phase), this intermediate plan is then converted into a deliverable treatment plan with MLC segments. In this paper, we investigate novel approaches for the use of a clinical dose engine (CDE) for segmentation of FMO plans in robotic radiotherapy. Segments are sequentially added to the plan. Generation of each next segment is based on the total 3D dose distribution, resulting from already selected segments and the desired FMO dose, considering all treatment beams as candidates for delivery of the new segment. Three versions of the segmentation algorithm were investigated with differences in the integration of the CDE. The combined use of pencil-beams and segments in a segmentation method is non-trivial. Therefore, new methods were developed for the use of segment doses calculated with the CDE in combination with pencil-beams, used for the selection of new segments. For 20 patients with prostate cancer and 12 with liver cancer, segmented plans were compared with FMO plans. All three versions of the proposed segmentation algorithm could well mimic FMO dose distributions. Segmentation with a fully integrated CDE provided the best plan quality and lowest numbers of monitor units and segments at the cost of increased calculation time.

摘要

放射治疗计划需要准确地模拟所给予的患者剂量,包括辐射散射效应、多叶准直器 (MLC) 叶片传输、叶片间漏射等。在影响图优化 (FMO) 中,首先使用简单的剂量模型根据铅笔束生成中间计划。在第二步(分割阶段),然后将该中间计划转换为具有 MLC 段的可交付治疗计划。在本文中,我们研究了使用临床剂量引擎 (CDE) 进行机器人放射治疗中 FMO 计划分割的新方法。分段顺序添加到计划中。下一个分段的生成基于已经选择的分段和所需的 FMO 剂量的总 3D 剂量分布,同时考虑所有治疗束作为新分段交付的候选。研究了三种版本的分割算法,它们在 CDE 的集成方面存在差异。在分割方法中结合使用铅笔束和分段是复杂的。因此,为了在结合使用铅笔束的情况下使用 CDE 计算的分段剂量,开发了新方法来选择新的分段。对 20 例前列腺癌患者和 12 例肝癌患者进行了分段计划与 FMO 计划的比较。所提出的分割算法的所有三个版本都可以很好地模拟 FMO 剂量分布。完全集成 CDE 的分割提供了最佳的计划质量和最低的监测单位和分段数量,但计算时间增加。

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