Department of Radiation Oncology, University of Los Angeles California, Los Angeles, CA, USA.
Med Phys. 2017 Nov;44(11):5596-5609. doi: 10.1002/mp.12529. Epub 2017 Sep 22.
Direct aperture optimization (DAO) attempts to incorporate machine constraints in the inverse optimization to eliminate the post-processing steps in fluence map optimization (FMO) that degrade plan quality. Current commercial DAO methods utilize a stochastic or greedy approach to search a small aperture solution space. In this study, we propose a novel deterministic direct aperture optimization that integrates the segmentation of fluence map in the optimization problem using the multiphase piecewise constant Mumford-Shah formulation.
The Mumford-Shah based direct aperture optimization problem was formulated to include an L2-norm dose fidelity term to penalize differences between the projected dose and the prescribed dose, an anisotropic total variation term to promote piecewise continuity in the fluence maps, and the multiphase piecewise constant Mumford-Shah function to partition the fluence into pairwise discrete segments. A proximal-class, first-order primal-dual solver was implemented to solve the large scale optimization problem, and an alternating module strategy was implemented to update fluence and delivery segments. Three patients of varying complexity-one glioblastoma multiforme (GBM) patient, one lung (LNG) patient, and one bilateral head and neck (H&N) patient with 3 PTVs-were selected to test the new DAO method. For each patient, 20 non-coplanar beams were first selected using column generation, followed by the Mumford-Shah based DAO (DAO ). For comparison, a popular and successful approach to DAO known as simulated annealing-a stochastic approach-was replicated. The simulated annealing DAO (DAO ) plans were then created using the same beam angles and maximum number of segments per beam. PTV coverage, PTV homogeneity D95D5, and OAR sparing were assessed for each plan. In addition, high dose spillage, defined as the 50% isodose volume divided by the tumor volume, as well as conformity, defined as the van't Riet conformation number, were evaluated.
DAO achieved essentially the same OAR doses compared with the DAO plans for the GBM case. The average difference of OAR D and D between the two plans were within 0.05% of the plan prescription dose. The lung case showed slightly improved critical structure sparing using the DAO approach, where the average OAR D and D were reduced by 3.67% and 1.08%, respectively, of the prescription dose. The DAO plan substantially improved OAR dose sparing for the H&N patient, where the average OAR D and D were reduced by over 10% of the prescription dose. The DAO and DAO plans were comparable for the GBM and LNG PTV coverage, while the DAO plan substantially improved the H&N PTV coverage, increasing D99 by 6.98% of the prescription dose. For the GBM and LNG patients, the DAO and DAO plans had comparable high dose spillage but slightly worse conformity with the DAO approach. For the H&N plan, DAO was considerably superior in high dose spillage and conformity to the DAO . The deterministic approach is able to solve the DAO problem substantially faster than the simulated annealing approach, with a 9.5- to 40-fold decrease in total solve time, depending on the patient case.
A novel deterministic direct aperture optimization formulation was developed and evaluated. It combines fluence map optimization and the multiphase piecewise constant Mumford-Shah segmentation into a unified framework, and the resulting optimization problem can be solved efficiently. Compared to the widely and commercially used simulated annealing DAO approach, it showed comparable dosimetry behavior for simple plans, and substantially improved OAR sparing, PTV coverage, PTV homogeneity, high dose spillage, and conformity for the more complex head and neck plan.
直接孔径优化(DAO)试图在逆优化中纳入机器约束,以消除影响图优化(FMO)中降低计划质量的后处理步骤。当前的商业 DAO 方法利用随机或贪婪方法搜索小孔径解空间。在这项研究中,我们提出了一种新的确定性直接孔径优化,该方法使用多相分段常数 Mumford-Shah 公式在优化问题中集成了通量图的分割。
基于 Mumford-Shah 的直接孔径优化问题被公式化为包括 L2-范数剂量保真度项,以惩罚投影剂量与规定剂量之间的差异,各向异性全变差项以促进通量图的分段连续性,以及多相分段常数 Mumford-Shah 函数,将通量分割成两两离散段。实现了一个近端类、一阶原始对偶求解器来求解大规模优化问题,并实现了交替模块策略来更新通量和输送段。选择了三个不同复杂度的患者——一个多形性胶质母细胞瘤(GBM)患者、一个肺(LNG)患者和一个双侧头颈部(H&N)患者,有 3 个 PTV,以测试新的 DAO 方法。对于每个患者,首先使用列生成选择 20 个非共面光束,然后进行基于 Mumford-Shah 的 DAO(DAO)。为了比较,复制了一种流行且成功的 DAO 方法,称为模拟退火——一种随机方法。然后使用相同的光束角度和每个光束的最大段数创建模拟退火 DAO(DAO)计划。评估了每个计划的 PTV 覆盖率、PTV 均匀性 D95D5 和 OAR 保护。此外,评估了高剂量泄漏,定义为 50%等剂量体积除以肿瘤体积,以及适形性,定义为范特·里特构形数。
DAO 与 GBM 病例的 DAO 计划相比,基本上达到了相同的 OAR 剂量。两个计划之间 OAR D 和 D 的平均差异在计划规定剂量的 0.05%以内。肺病例使用 DAO 方法略微改善了关键结构保护,其中 OAR D 和 D 分别降低了规定剂量的 3.67%和 1.08%。DAO 计划大大改善了 H&N 患者的 OAR 剂量保护,其中 OAR D 和 D 分别降低了规定剂量的 10%以上。DAO 和 DAO 计划在 GBM 和 LNG PTV 覆盖率方面相当,而 DAO 计划大大提高了 H&N PTV 覆盖率,D99 增加了规定剂量的 6.98%。对于 GBM 和 LNG 患者,DAO 和 DAO 计划的高剂量泄漏量相当,但 DAO 方法的适形性稍差。对于 H&N 计划,DAO 在高剂量泄漏和适形性方面明显优于 DAO。确定性方法能够比模拟退火方法更快地解决 DAO 问题,总求解时间减少了 9.5 到 40 倍,具体取决于患者情况。
开发并评估了一种新的确定性直接孔径优化公式。它将通量图优化和多相分段常数 Mumford-Shah 分割结合到一个统一的框架中,并且可以有效地解决由此产生的优化问题。与广泛使用的商业模拟退火 DAO 方法相比,它在简单计划中表现出相当的剂量学行为,并且在更复杂的头颈部计划中,大大改善了 OAR 保护、PTV 覆盖率、PTV 均匀性、高剂量泄漏、适形性。