An Automatic Approach for Satisfying Dose-Volume Constraints in Linear Fluence Map Optimization for IMPT.

Maryam Zaghian, Gino Lim, Wei Liu, Radhe Mohan
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引用次数: 17

Abstract

Prescriptions for radiation therapy are given in terms of dose-volume constraints (DVCs). Solving the fluence map optimization (FMO) problem while satisfying DVCs often requires a tedious trial-and-error for selecting appropriate dose control parameters on various organs. In this paper, we propose an iterative approach to satisfy DVCs using a multi-objective linear programming (LP) model for solving beamlet intensities. This algorithm, starting from arbitrary initial parameter values, gradually updates the values through an iterative solution process toward optimal solution. This method finds appropriate parameter values through the trade-off between OAR sparing and target coverage to improve the solution. We compared the plan quality and the satisfaction of the DVCs by the proposed algorithm with two nonlinear approaches: a nonlinear FMO model solved by using the L-BFGS algorithm and another approach solved by a commercial treatment planning system (Eclipse 8.9). We retrospectively selected from our institutional database five patients with lung cancer and one patient with prostate cancer for this study. Numerical results show that our approach successfully improved target coverage to meet the DVCs, while trying to keep corresponding OAR DVCs satisfied. The LBFGS algorithm for solving the nonlinear FMO model successfully satisfied the DVCs in three out of five test cases. However, there is no recourse in the nonlinear FMO model for correcting unsatisfied DVCs other than manually changing some parameter values through trial and error to derive a solution that more closely meets the DVC requirements. The LP-based heuristic algorithm outperformed the current treatment planning system in terms of DVC satisfaction. A major strength of the LP-based heuristic approach is that it is not sensitive to the starting condition.

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线性通量图优化中满足剂量-体积约束的自动方法。
放射治疗的处方是根据剂量-体积限制(DVCs)给出的。在满足DVCs的同时,解决通量图优化(FMO)问题往往需要在不同器官上选择合适的剂量控制参数,这需要进行繁琐的反复试验。在本文中,我们提出了一种迭代的方法来满足DVCs使用多目标线性规划(LP)模型求解光束强度。该算法从任意初始参数值出发,通过迭代求解的过程,逐步更新参数值,求出最优解。该方法通过在声速节约和目标覆盖率之间进行权衡,找到合适的参数值,以改进解。我们将所提出的算法与两种非线性方法进行了比较,一种是采用L-BFGS算法求解的非线性FMO模型,另一种是采用商业治疗计划系统(Eclipse 8.9)求解的方法。我们回顾性地从我们的机构数据库中选择了5名肺癌患者和1名前列腺癌患者进行这项研究。数值结果表明,该方法成功地提高了目标覆盖率以满足DVCs,同时尽量保持相应的OAR DVCs。求解非线性FMO模型的LBFGS算法在5个测试用例中有3个满足了DVCs。然而,在非线性FMO模型中,除了通过试错法手动改变一些参数值,推导出更接近于满足DVC要求的解外,没有办法纠正不满足的DVC。基于lp的启发式算法在DVC满意度方面优于现有的治疗计划系统。基于lp的启发式方法的一个主要优点是它对起始条件不敏感。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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