Department of Physical Sciences, Peter MacCallum Cancer Centre, Melbourne, Victoria, Australia.
Sir Peter MacCallum Department of Oncology, The University of Melbourne, Melbourne, Victoria, Australia.
Med Phys. 2024 Jan;51(1):682-693. doi: 10.1002/mp.16761. Epub 2023 Oct 5.
Lattice radiation therapy (LRT) alternates regions of high and low doses within the target. The heterogeneous dose distribution is delivered to a geometrical structure of vertices segmented inside the tumor. LRT is typically used to treat patients with large tumor volumes with cytoreduction intent. Due to the geometric complexity of the target volume and the required dose distribution, LRT treatment planning demands additional resources, which may limit clinical integration.
We introduce a fully automated method to (1) generate an ordered lattice of vertices with various sizes and center-to-center distances and (2) perform dose optimization and calculation. We aim to report the dosimetry associated with these lattices to help clinical decision-making.
Sarcoma cancer patients with tumor volume between 100 cm and 1500 cm who received radiotherapy treatment between 2010 and 2018 at our institution were considered for inclusion. Automated segmentation and dose optimization/calculation were performed by using the Eclipse Scripting Application Programming Interface (ESAPI, v16, Varian Medical Systems, Palo Alto, USA). Vertices were modeled by spheres segmented within the gross tumor volume (GTV) with 1 cm/1.5 cm/2 cm diameters (LRT-1 cm/1.5 cm/2 cm) and 2 to 5 cm center-to-center distance on square lattices alternating along the superior-inferior direction. Organs at risk were modeled by subtracting the GTV from the body structure (body-GTV). The prescription dose was that 50% of the vertice volume should receive at least 20 Gy in one fraction. The automated dose optimization included three stages. The vertices optimization objectives were refined during optimization according to their values at the end of the first and second stages. Lattices were classified according to a score based on the minimization of body-GTV max dose and the maximization of GTV dose uniformity (measured with the equivalent uniform dose [EUD]), GTV dose heterogeneity (measured with the GTV D90%/D10% ratio), and the number of patients with more than one vertex inserted in the GTV. Plan complexity was measured with the modulation complexity score (MCS). Correlations were assessed with the Spearman correlation coefficient (r) and its associated p-value.
Thirty-three patients with GTV volumes between 150 and 1350 cm (median GTV volume = 494 cm , IQR = 272-779 cm were included. The median time required for segmentation/planning was 1 min/21 min. The number of vertices was strongly correlated with GTV volume in each LRT lattice for each center-to-center distance (r > 0.85, p-values < 0.001 in each case). Lattices with center-to-center distance = 2.5 cm/3 cm/3.5 cm in LRT-1.5 cm and center-to-center distance = 4 cm in LRT-1 cm had the best scores. These lattices were characterized by high heterogeneity (median GTV D90%/D10% between 0.06 and 0.19). The generated plans were moderately complex (median MCS ranged between 0.19 and 0.40).
The automated LRT planning method allows for the efficacious generation of vertices arranged in an ordered lattice and the refinement of planning objectives during dose optimization, enabling the systematic evaluation of LRT dosimetry from various lattice geometries.
网格放射治疗(LRT)在靶区内交替出现高剂量区和低剂量区。不均匀的剂量分布输送到肿瘤内部分割的顶点几何结构。LRT 通常用于治疗具有细胞减少意图的大肿瘤体积的患者。由于靶区的几何复杂性和所需的剂量分布,LRT 治疗计划需要额外的资源,这可能会限制临床应用。
我们介绍了一种全自动方法,用于(1)生成具有不同大小和中心到中心距离的有序顶点网格,以及(2)进行剂量优化和计算。我们旨在报告这些晶格的剂量学数据,以帮助临床决策。
我们考虑了在我们机构接受放射治疗的肿瘤体积在 100cm 到 1500cm 之间的肉瘤癌症患者,治疗时间在 2010 年至 2018 年之间。自动分割和剂量优化/计算是通过使用 Eclipse 脚本应用程序编程接口(ESAPI,v16,Varian Medical Systems,Palo Alto,USA)完成的。顶点是通过在大体肿瘤体积(GTV)内分割直径为 1cm/1.5cm/2cm 的球体来建模的(LRT-1cm/1.5cm/2cm),并在沿上下方向交替的正方形晶格上以 2cm 到 5cm 的中心到中心距离排列。危及器官是通过从体结构中减去 GTV 来建模的(体-GTV)。处方剂量为 50%的顶点体积应在一个分次中至少接受 20Gy 的剂量。自动剂量优化包括三个阶段。根据第一和第二阶段结束时的数值,优化期间细化了顶点优化目标。根据基于最小化体-GTV 最大剂量和最大化 GTV 剂量均匀性(用等效均匀剂量 [EUD] 测量)、GTV 剂量异质性(用 GTV D90%/D10% 比值测量)以及插入 GTV 内的患者数量超过一个顶点的分数对晶格进行分类。计划复杂性用调制复杂度评分(MCS)来衡量。用 Spearman 相关系数(r)及其相关的 p 值评估相关性。
我们纳入了 33 名 GTV 体积在 150 到 1350cm 之间的患者(中位 GTV 体积为 494cm,IQR=272-779cm)。分割/计划的中位时间为 1 分钟/21 分钟。在每个 LRT 晶格中,每个中心到中心距离的顶点数量与 GTV 体积强烈相关(r>0.85,p 值<0.001)。中心到中心距离为 2.5cm/3cm/3.5cm 的 LRT-1.5cm 和中心到中心距离为 4cm 的 LRT-1cm 的晶格具有最佳的分数。这些晶格的特点是高异质性(中位数 GTV D90%/D10% 在 0.06 到 0.19 之间)。生成的计划具有中等的复杂性(中位数 MCS 在 0.19 到 0.40 之间)。
自动 LRT 计划方法允许有效地生成有序晶格排列的顶点,并在剂量优化过程中细化计划目标,从而可以从各种晶格几何结构系统地评估 LRT 剂量学。