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使用遗传算法的基于段的剂量优化。

Segment-based dose optimization using a genetic algorithm.

作者信息

Cotrutz Cristian, Xing Lei

机构信息

Department of Radiation Oncology, Stanford University School of Medicine, 300 Pasteur Drive, Stanford, CA 94305-5304, USA.

出版信息

Phys Med Biol. 2003 Sep 21;48(18):2987-98. doi: 10.1088/0031-9155/48/18/303.

Abstract

Intensity modulated radiation therapy (IMRT) inverse planning is conventionally done in two steps. Firstly, the intensity maps of the treatment beams are optimized using a dose optimization algorithm. Each of them is then decomposed into a number of segments using a leaf-sequencing algorithm for delivery. An alternative approach is to pre-assign a fixed number of field apertures and optimize directly the shapes and weights of the apertures. While the latter approach has the advantage of eliminating the leaf-sequencing step, the optimization of aperture shapes is less straightforward than that of beamlet-based optimization because of the complex dependence of the dose on the field shapes, and their weights. In this work we report a genetic algorithm for segment-based optimization. Different from a gradient iterative approach or simulated annealing, the algorithm finds the optimum solution from a population of candidate plans. In this technique, each solution is encoded using three chromosomes: one for the position of the left-bank leaves of each segment, the second for the position of the right-bank and the third for the weights of the segments defined by the first two chromosomes. The convergence towards the optimum is realized by crossover and mutation operators that ensure proper exchange of information between the three chromosomes of all the solutions in the population. The algorithm is applied to a phantom and a prostate case and the results are compared with those obtained using beamlet-based optimization. The main conclusion drawn from this study is that the genetic optimization of segment shapes and weights can produce highly conformal dose distribution. In addition, our study also confirms previous findings that fewer segments are generally needed to generate plans that are comparable with the plans obtained using beamlet-based optimization. Thus the technique may have useful applications in facilitating IMRT treatment planning.

摘要

调强放射治疗(IMRT)逆向计划通常分两步进行。首先,使用剂量优化算法对治疗射束的强度图进行优化。然后,使用叶片排序算法将每个强度图分解为多个射野段以便进行照射。另一种方法是预先指定固定数量的射野孔径,并直接优化孔径的形状和权重。虽然后一种方法具有省去叶片排序步骤的优点,但由于剂量对射野形状及其权重的复杂依赖性,孔径形状的优化比基于子野的优化更不直接。在这项工作中,我们报告了一种基于射野段的优化遗传算法。与梯度迭代方法或模拟退火不同,该算法从一组候选计划中找到最优解。在这项技术中,每个解使用三条染色体进行编码:一条用于每个射野段左岸叶片的位置,第二条用于右岸叶片的位置,第三条用于由前两条染色体定义的射野段的权重。通过交叉和变异算子实现向最优解的收敛,这些算子确保群体中所有解的三条染色体之间正确地交换信息。该算法应用于体模和前列腺病例,并将结果与使用基于子野的优化方法得到的结果进行比较。这项研究得出的主要结论是,射野段形状和权重的遗传优化可以产生高度适形的剂量分布。此外,我们的研究还证实了先前的发现,即通常需要更少的射野段来生成与使用基于子野的优化方法获得的计划相当的计划。因此,该技术在促进IMRT治疗计划方面可能具有有用的应用。

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