Lei Jie, Li Yongjie
School of Life Science and Technology, University of Electronic Science and Technology of China, Chengdu, Sichuan, PR China.
Comput Methods Programs Biomed. 2009 Mar;93(3):257-65. doi: 10.1016/j.cmpb.2008.10.005. Epub 2008 Dec 6.
A method named approaching genetic algorithm (AGA) is introduced to automatically select the beam angles for intensity-modulated radiotherapy (IMRT) planning. In AGA, the best individual of the current population is found at first, and the rest of the normal individuals approach the current best one according to some specially designed rules. In the course of approaching, some better individuals may be obtained. Then, the current best individual is updated to try to approach the real best one. The approaching and updating operations of AGA replace the selection, crossover and mutation operations of the genetic algorithm (GA) completely. Using the specially designed updating strategies, AGA can recover the varieties of the population to a certain extent and retain the powerful ability of evolution, compared to GA. The beam angles are selected using AGA, followed by a beam intensity map optimization using conjugate gradient (CG). A simulated case and a clinical case with nasopharynx cancer are employed to demonstrate the feasibility of AGA. For the case investigated, AGA was feasible for the beam angle optimization (BAO) problem in IMRT planning and converged faster than GA.
一种名为逼近遗传算法(AGA)的方法被引入用于自动选择调强放射治疗(IMRT)计划的射束角度。在AGA中,首先找到当前种群中的最优个体,其余普通个体根据一些专门设计的规则向当前最优个体逼近。在逼近过程中,可能会获得一些更好的个体。然后,更新当前最优个体以尝试逼近真正的最优个体。AGA的逼近和更新操作完全取代了遗传算法(GA)的选择、交叉和变异操作。与GA相比,使用专门设计的更新策略,AGA可以在一定程度上恢复种群的多样性并保留强大的进化能力。使用AGA选择射束角度,随后使用共轭梯度(CG)进行射束强度图优化。采用一个模拟病例和一个鼻咽癌临床病例来证明AGA的可行性。对于所研究的病例,AGA对于IMRT计划中的射束角度优化(BAO)问题是可行的,并且比GA收敛得更快。