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基于模糊推理系统的自动注量图优化

Automated fluence map optimization based on fuzzy inference systems.

作者信息

Dias Joana, Rocha Humberto, Ventura Tiago, Ferreira Brígida, Lopes Maria do Carmo

机构信息

FEUC and Inesc-Coimbra, University of Coimbra, Coimbra 3004512, Portugal.

Inesc-Coimbra, University of Coimbra, Coimbra 3000033, Portugal.

出版信息

Med Phys. 2016 Mar;43(3):1083-95. doi: 10.1118/1.4941007.

Abstract

PURPOSE

The planning of an intensity modulated radiation therapy treatment requires the optimization of the fluence intensities. The fluence map optimization (FMO) is many times based on a nonlinear continuous programming problem, being necessary for the planner to define a priori weights and/or lower bounds that are iteratively changed within a trial-and-error procedure until an acceptable plan is reached. In this work, the authors describe an alternative approach for FMO that releases the human planner from trial-and-error procedures, contributing for the automation of the planning process.

METHODS

The FMO is represented by a voxel-based convex penalty continuous nonlinear model. This model makes use of both weights and lower/upper bounds to guide the optimization process toward interesting solutions that are able to satisfy all the constraints defined for the treatment. All the model's parameters are iteratively changed by resorting to a fuzzy inference system. This system analyzes how far the current solution is from a desirable solution, changing in a completely automated way both weights and lower/upper bounds. The fuzzy inference system is based on fuzzy reasoning that enables the use of common-sense rules within an iterative optimization process. The method is built in two stages: in a first stage, an admissible solution is calculated, trying to guarantee that all the treatment planning constraints are being satisfied. In this first stage, the algorithm tries to improve as much as possible the irradiation of the planning target volumes. In a second stage, the algorithm tries to improve organ sparing, without jeopardizing tumor coverage.

RESULTS

The proposed methodology was applied to ten head-and-neck cancer cases already treated in the Portuguese Oncology Institute of Coimbra (IPOCFG) and signalized as complex cases. IMRT treatment was considered, with 7, 9, and 11 equidistant beam angles. It was possible to obtain admissible solutions for all the patients considered and with no human planner intervention. The results obtained were compared with the optimized solution using a similar optimization model but with human planner intervention. For the vast majority of cases, it was possible to improve organ sparing and at the same time to assure better tumor coverage.

CONCLUSIONS

Embedding a fuzzy inference system into FMO allows human planner reasoning to be used in the guidance of the optimization process toward interesting regions in a truly automated way. The proposed methodology is capable of calculating high quality plans within reasonable computational times and can be an important contribution toward fully automated radiation therapy treatment planning.

摘要

目的

调强放射治疗计划需要优化注量强度。注量图优化(FMO)多次基于非线性连续规划问题,计划者有必要定义先验权重和/或下限,这些权重和下限在反复试验过程中迭代变化,直到获得可接受的计划。在这项工作中,作者描述了一种FMO的替代方法,该方法使人工计划者无需反复试验过程,有助于实现计划过程的自动化。

方法

FMO由基于体素的凸惩罚连续非线性模型表示。该模型利用权重和下限/上限来引导优化过程朝着能够满足治疗所定义的所有约束的理想解决方案进行。通过采用模糊推理系统,对模型的所有参数进行迭代更改。该系统分析当前解决方案与理想解决方案的差距,以完全自动化的方式改变权重和下限/上限。模糊推理系统基于模糊推理,能够在迭代优化过程中使用常识规则。该方法分两个阶段构建:在第一阶段,计算一个可接受的解决方案,试图确保满足所有治疗计划约束。在这个第一阶段,算法试图尽可能地改善计划靶区的照射。在第二阶段,算法试图在不危及肿瘤覆盖的情况下改善器官保护。

结果

所提出的方法应用于葡萄牙科英布拉肿瘤研究所(IPOCFG)已经治疗过的10例头颈癌病例,这些病例被标记为复杂病例。考虑了调强放射治疗,有7、9和11个等距射束角度。在没有人工计划者干预的情况下,有可能为所有考虑的患者获得可接受的解决方案。将获得的结果与使用类似优化模型但有人工计划者干预的优化解决方案进行比较。对于绝大多数病例,有可能改善器官保护,同时确保更好的肿瘤覆盖。

结论

将模糊推理系统嵌入FMO允许人工计划者的推理以真正自动化的方式用于引导优化过程朝着理想区域进行。所提出的方法能够在合理的计算时间内计算出高质量的计划,并且可以为完全自动化的放射治疗计划做出重要贡献。

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