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A genetic algorithm used for the intensity level discretization in MLC leaf sequencing for step and shoot IMRT
作者姓名:CHEN  Bingzhou  ZHANG  Conghua  TANG  Zhiquan  HOU  Qing
作者单位:[1]School of Physics Science and Technology, Sichuan University, Chengdu 610064, China [2]Key Laboratory of Radiation Physics and Technology, Ministry of Education, Institute of Nuclear Science and Technology, Sichuan University, Chengdu 610064, China [3]Department ofRadiation Oncology, Huaxi Hospital, Sichuan University, Chengdu 610041, China
基金项目:国家自然科学基金,The Excellent Ycung Teachers Program of Chian
摘    要:The inverse planning for a step-and-shoot plan in intensity-modulated radiotherapy (IMRT) is usually a multiple step process. Before being converted into the MLC segments, the optimum intensity profiles of beams, which are generated by an optimization algorithm, shall be discretized into a few intensity levels. The discretization process of the optimum intensity profiles can induce deviations in the final dose distribution from the original optimum dose distribution. This paper describes a genetic algorithm for the discretization of given optimum intensity profiles. The algorithm minimizes an objective function written in terms of the intensity levels. Both the dose-based objective function, which is defined by the deviation between the dose distributions before and after the discretization, and the intensity-based objective function, which is defined by the deviation between the optimum intensity profiles and the discretization intensity profiles, have been adopted. To evaluate this algorithm, a series of simulation calculations had been carried out using the present algorithm, the even-spaced discretization and the k-means clustering algorithm respectively. By comparing the resultant discretization-induced deviations (D!Ds) in intensity profiles and in dose distributions, we have found that the genetic algorithm induced less DIDs in comparison with that induced in the even-spaced discretization or the k-means clustering algorithm. Additionally, it has been found that the DIDs created in the genetic algorithm correlate with the complexity of the intensity profiles that is measured by the "fluence map complexity".

关 键 词:放射治疗  射线  遗传因素  离散化
收稿时间:2006-05-28

A genetic algorithm used for the intensity level discretization in MLC leaf sequencing for step and shoot IMRT
CHEN Bingzhou ZHANG Conghua TANG Zhiquan HOU Qing.A genetic algorithm used for the intensity level discretization in MLC leaf sequencing for step and shoot IMRT[J].Nuclear Science and Techniques,2008,19(1):22-31.
Authors:CHEN Bingzhou  ZHANG Conghua  TANG Zhiquan  HOU Qing
Affiliation:1. School of Physics Science and Technology,Sichuan University,Chengdu 610064,China;Key Laboratory of Radiaaon Physics and Technology,Ministry of Education,Institute of Nuclear Science and Technology,Sichuan University,Chengdu 610064,China
2. Key Laboratory of Radiaaon Physics and Technology,Ministry of Education,Institute of Nuclear Science and Technology,Sichuan University,Chengdu 610064,China
3. Department of Radiation Oncology,Huaxi Hospital,Sichuan University,Chengdu 610041,China
Abstract:The inverse planning for a step-and-shoot plan in intensity-modulated radiotherapy(IMRT)is usually a multiple step process.Before being converted into the MLC segments,the optimum intensity profiles of beams,which are generated by an optimization algorithm,shall be discretized into a few intensity levels.The discretization process of the optimum intensity profiles can induce deviations in the final dose distribution from the original optimum dose distribution.This paper describes a genetic algorithm for the discredzation of given optimum intensity profiles.The algorithm minimizes an objective function written in terms of the intensity levels.Both the dose-based objective function,which is defined by the deviation between the dose distributions before and after the discretization,and the intensity-based objective function,which is defined by the deviation between the optimum intensity profiles and the discretization intensity profiles,have been adopted.To evaluate this algorithm,a series of simulation calculations had been carried out using the present algorithm,the even-spaced discredzation and the k-means clustering algorithm respectively.By comparing the resultant diseretization-induced deviations(DIDs)in intensity profiles and in dose distributions,we have found that the genetic algorithm induced less DIDs in comparison with that induced in the even-spaced discretization or the k-means clustering algorithm.Additionally,it has been found that the DIDs created in the genetic algorithm correlate with the complexity of the intensity profiles that is measured by the"fluence map complexity".
Keywords:IMRT  Inverse planning  Step-and-shoot  Discretization
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