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多弧内双准直优化算法在多处方立体定向放疗治疗多发转移瘤中的应用

Intra-arc binary collimation algorithm for the optimization of stereotactic radiotherapy treatment of multiple metastases with multiple prescriptions.

机构信息

Department of Physics and Atmospheric Science, Dalhousie University, Halifax, Nova Scotia, B3H 4R2, Canada.

Department of Medical Physics, Nova Scotia Health Authority, Queen Elizabeth II Health 10 Sciences Centre, Halifax, Nova Scotia, B3H 1V7, Canada.

出版信息

Med Phys. 2018 Dec;45(12):5597-5607. doi: 10.1002/mp.13224. Epub 2018 Oct 24.

Abstract

PURPOSE

To design and implement a novel treatment planning algorithm based on a modification of dynamic conformal arc (DCA) therapy for the treatment of multiple cranial metastases with variable prescription doses.

METHODS

A workflow was developed in which separate dose matrices were calculated for each target at each control point (i.e., the multileaf collimator (MLC) was fit conformally to that single target). A cost function was used to quantify the relative contributions of each dose matrix in the plan to the overall plan objectives. Simulated annealing was used to allow for the inclusion or exclusion of individual dose matrices at each control point. The exclusion of individual targets at a given control point is termed intra-arc binary collimation (iABC) in this work and is accomplished by closing the MLCs over the target for a duration specified by simulated annealing optimization. Dynamic collimator motions were employed to minimize the variation between the idealized dose matrices (i.e., perfectly collimated targets) and actual dose matrices (i.e., MLC apertures that include quantities of nontarget tissue due to the relative orientations of targets in the field). An additional simulated annealing optimization was performed to weight the relative contributions of dose at each control point [referred to as the monitor unit distribution (MUD)] to improve compliance with plan objectives. The algorithm was tested on seven previously treated multiple metastases patients and plans were compared to the clinically treated VMAT plans.

RESULTS

Treatment plans generated with iABC used an average of 2716 (34%) fewer MU in the total plan than VMAT (P = 0.01). All normal tissue metrics for all plans and all patients were clinically acceptable. There were no statistically significant differences in any normal tissue dose metrics. Normalized prescription target coverage accuracy for all targets was 3% better on average for VMAT plans when compared to iABC (P = 0.07), and 14% better on average for iABC when compared to optimized DCA (P = 0.03).

CONCLUSION

A novel method of aperture and dose distribution design has been developed to significantly increase the MU efficiency of single isocenter treatment of multiple metastases with variable prescription doses when compared to VMAT, and which improves target coverage accuracy significantly when compared to optimized DCA. By applying a DCA approach to subsets of targets across control points, a hybrid method of treatment delivery has been developed that combines the efficiency of dynamic conformal treatments and the dosimetric flexibility of VMAT.

摘要

目的

设计并实现一种新的治疗计划算法,该算法基于对动态适形弧(DCA)治疗的修改,用于治疗具有不同处方剂量的多个颅转移瘤。

方法

开发了一种工作流程,其中为每个目标在每个控制点(即多叶准直器(MLC)与单个目标相适应)计算单独的剂量矩阵。使用成本函数来量化计划中每个剂量矩阵对整体计划目标的相对贡献。模拟退火用于允许在每个控制点包含或排除单个剂量矩阵。在给定的控制点上排除单个目标称为弧形内二进制准直(iABC),通过在模拟退火优化指定的时间段内关闭 MLC 来完成。采用动态准直器运动来最小化理想剂量矩阵(即完全准直的目标)和实际剂量矩阵(即由于场中目标的相对取向而包含一定量非目标组织的 MLC 孔径)之间的变化。进行另一个模拟退火优化以加权每个控制点的剂量相对贡献(称为监视器单位分布(MUD)),以提高与计划目标的一致性。该算法在七名先前接受治疗的多发性转移患者中进行了测试,并将计划与临床治疗的 VMAT 计划进行了比较。

结果

使用 iABC 生成的治疗计划在总计划中平均比 VMAT 少使用 2716 个 MU(P = 0.01)。所有计划和所有患者的所有正常组织指标均为临床可接受。在任何正常组织剂量指标方面,均无统计学上的显著差异。与 iABC 相比,VMAT 计划中所有目标的归一化处方靶区覆盖率准确性平均提高了 3%(P = 0.07),与优化的 DCA 相比,iABC 平均提高了 14%(P = 0.03)。

结论

已经开发出一种新颖的孔径和剂量分布设计方法,与 VMAT 相比,可显著提高多个具有不同处方剂量的颅转移瘤的单个等中心治疗的 MU 效率,与优化的 DCA 相比,可显著提高靶区覆盖率准确性。通过将 DCA 方法应用于控制点之间的目标子集,已经开发出一种混合的治疗输送方法,该方法结合了动态适形治疗的效率和 VMAT 的剂量灵活性。

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