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A hierarchical evolutionary algorithm for multiobjective optimization in IMRT

机译:IMRT中用于多目标优化的分层进化算法

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摘要

>Purpose: The current inverse planning methods for intensity modulated radiation therapy (IMRT) are limited because they are not designed to explore the trade-offs between the competing objectives of tumor and normal tissues. The goal was to develop an efficient multiobjective optimization algorithm that was flexible enough to handle any form of objective function and that resulted in a set of Pareto optimal plans.>Methods: A hierarchical evolutionary multiobjective algorithm designed to quickly generate a small diverse Pareto optimal set of IMRT plans that meet all clinical constraints and reflect the optimal trade-offs in any radiation therapy plan was developed. The top level of the hierarchical algorithm is a multiobjective evolutionary algorithm (MOEA). The genes of the individuals generated in the MOEA are the parameters that define the penalty function minimized during an accelerated deterministic IMRT optimization that represents the bottom level of the hierarchy. The MOEA incorporates clinical criteria to restrict the search space through protocol objectives and then uses Pareto optimality among the fitness objectives to select individuals. The population size is not fixed, but a specialized niche effect, domination advantage, is used to control the population and plan diversity. The number of fitness objectives is kept to a minimum for greater selective pressure, but the number of genes is expanded for flexibility that allows a better approximation of the Pareto front.>Results: The MOEA improvements were evaluated for two example prostate cases with one target and two organs at risk (OARs). The population of plans generated by the modified MOEA was closer to the Pareto front than populations of plans generated using a standard genetic algorithm package. Statistical significance of the method was established by compiling the results of 25 multiobjective optimizations using each method. From these sets of 12–15 plans, any random plan selected from a MOEA population had a 11.3%±0.7% chance of dominating any random plan selected by a standard genetic package with 0.04%±0.02% chance of domination in reverse. By implementing domination advantage and protocol objectives, small and diverse populations of clinically acceptable plans that approximated the Pareto front could be generated in a fraction of 1 h. Acceleration techniques implemented on both levels of the hierarchical algorithm resulted in short, practical runtimes for multiobjective optimizations.>Conclusions: The MOEA produces a diverse Pareto optimal set of plans that meet all dosimetric protocol criteria in a feasible amount of time. The final goal is to improve practical aspects of the algorithm and integrate it with a decision analysis tool or human interface for selection of the IMRT plan with the best possible balance of successful treatment of the target with low OAR dose and low risk of complication for any specific patient situation.
机译:>目的:当前的强度调制放射治疗(IMRT)逆向计划方法是有局限性的,因为它们并非旨在探讨肿瘤与正常组织的竞争目标之间的取舍。目标是开发一种高效的多目标优化算法,该算法足够灵活以处理任何形式的目标函数,并产生一组帕累托最优计划。>方法:一种旨在快速生成的分层进化多目标算法开发了满足各种临床条件并在任何放射治疗计划中反映最佳折衷的小型多样的帕累托最优IMRT计划集。分层算法的顶层是多目标进化算法(MOEA)。 MOEA中生成的个体的基因是定义惩罚函数的参数,该惩罚函数在代表层次结构最低层的加速确定性IMRT优化过程中最小化。 MOEA结合了临床标准以通过协议目标限制搜索空间,然后在适合度目标之间使用帕累托最优选择个人。人口规模不是固定的,而是一种特殊的利基效应,即优势优势,用于控制人口和规划多样性。适应性目标的数量保持最小以增加选择性压力,但为了灵活起见,扩展了基因数量,可以更好地近似帕累托前沿。>结果:评估了两个方面的MOEA改进具有一个靶标和两个处于危险中的器官(OAR)的前列腺病例。修改后的MOEA生成的计划种群比使用标准遗传算法软件包生成的计划种群更接近帕累托前沿。通过对每种方法的25个多目标优化结果进行汇总,确定了该方法的统计意义。从这套12-15个计划中,从MOEA人群中选择的任何随机计划有11.3%±0.7%的机会占主导地位,而由标准遗传软件包选择的任何随机计划具有0.04%±0.02%的反向统治机会。通过实施优势控制和方案目标,可以在1小时内生成少量多样的临床可接受计划,这些计划近似于帕累托前沿。在分层算法的两个级别上实施的加速技术导致了用于多目标优化的短而实用的运行时间。>结论: MOEA生成了一组帕累托最优计划集,这些计划集可以在可行的范围内满足所有剂量协议标准。时间。最终目标是改善算法的实际方面,并将其与决策分析工具或人机界面集成,以选择IMRT计划,从而在成功治疗目标时尽可能获得最佳平衡,且OAR剂量低且并发症风险低具体患者情况。

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