A self-tuned bat algorithm for optimization in radiation therapy treatment planning

G. Kalantzis, Y. Lei
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引用次数: 5

Abstract

The performance of any optimization algorithm largely depends on the setting of its algorithm-dependent parameters. Swarm intelligence algorithms are popular methods in optimization since they have been proved very efficient. One drawback of those methods though, is that the appropriate setting of the algorithm-dependent parameters has a significant impact on the algorithm's performance. The “parameter tuning” of an algorithm in such a way to be able to find the optimal solution by using the minimum number of iterations, quite often is a difficult and time consuming task depending on the optimization problem. Essentially this is a hyper-optimization problem, that is, the optimization of the optimization algorithm. In this paper, a novel self-tuned metaheuristic algorithm is presented for optimization in radiation therapy treatment planning. The proposed Self-Tuned Bat Algorithm (STBA) finds itself the optimal set of algorithm-dependent parameters and therefore minimizes the number of iterations required for the optimization to reach sub-optimal solution. The applicability of the proposed algorithm is demonstrated in the optimization of a prostate case using intensity modulation radiation therapy (IMRT).
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放射治疗方案优化的自调谐蝙蝠算法
任何优化算法的性能在很大程度上取决于其算法相关参数的设置。群体智能算法是一种非常流行的优化方法,因为它被证明是非常有效的。然而,这些方法的一个缺点是,算法相关参数的适当设置对算法的性能有重大影响。对算法进行“参数调优”,使其能够通过使用最少的迭代次数找到最优解,这通常是一项困难且耗时的任务,具体取决于优化问题。本质上这是一个超优化问题,也就是优化算法的优化问题。本文提出了一种新的自调谐元启发式算法,用于放射治疗方案的优化。所提出的自调谐蝙蝠算法(STBA)找到了与算法相关的最优参数集,因此最小化了优化达到次优解所需的迭代次数。所提出的算法的适用性证明了优化前列腺病例使用强度调制放射治疗(IMRT)。
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