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On the Use of a Priori Knowledge in Pattern Search Methods: Application to Beam Angle Optimization for Intensity-Modulated Radiation Therapy

机译:在模式搜索方法中使用先验知识:在强度调制辐射治疗的束角优化中的应用

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Pattern search methods are widely used for the minimization of non-convex functions without the use of derivatives. One of the main features of pattern search methods is the flexibility to incorporate different search strategies taking advantage of the imported global optimization techniques without jeopardizing their convergence properties. Pattern search methods can also be adapted to problem contexts where the user can provide points incorporating a priori knowledge of the problem that can lead to an objective function improvement. Here, an automated incorporation of a priori knowledge in pattern search methods is implemented instead of an algorithm that requires the user's contribution. Moreover, a priori knowledge can also play a role on the choice of the initial point(s), an important aspect in the success of a global optimization process. Our pattern search approach is tailored for addressing the beam angle optimization (BAO) problem in intensity-modulated radiation therapy (IMRT) treatment planning that consists of selecting appropriate radiation incidence directions and may influence the quality of the IMRT plans, both to enhance better organs sparing and to improve tumor coverage. Beam's-eye-view dose ray tracing metrics are used as a priori knowledge of the problem both to decide the initial point(s) and to be incorporated within a pattern search methods framework. A couple of retrospective treated cases of head-and-neck tumors at the Portuguese Institute of Oncology of Coimbra is used to discuss the benefits of incorporating a priori dosimetric knowledge in pattern search methods for the optimization of the BAO problem.
机译:模式搜索方法被广泛用于不使用导数的情况下最小化非凸函数。模式搜索方法的主要特征之一是可以灵活地合并各种搜索策略,从而利用导入的全局优化技术,而不会损害它们的收敛性。模式搜索方法也可以适用于问题上下文,在该上下文中,用户可以提供包含问题先验知识的点,从而可以提高目标功能。在此,实现了先验知识在模式搜索方法中的自动合并,而不是需要用户做出贡献的算法。此外,先验知识也可以在初始点的选择上起作用,这是全局优化过程成功的重要方面。我们的模式搜索方法专为解决强度调制放射疗法(IMRT)治疗计划中的光束角优化(BAO)问题而设计,该问题包括选择合适的放射线入射方向,并可能影响IMRT计划的质量,以提高器官质量保留并改善肿瘤覆盖率。光束的视线剂量射线追踪度量既可以用作问题的先验知识,也可以用于确定初始点,也可以将其纳入模式搜索方法框架中。葡萄牙科英布拉肿瘤研究所的一些头颈肿瘤回顾性治疗病例被用来讨论在模式搜索方法中结合先验剂量学知识以优化BAO问题的好处。

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