Development of a Beam Source Modeling Technique for a Flattening Filter Free (FFF) Beam

W. Cho, Jeong-Hoon Park, W. Jung, T. Suh, K. Kielar, E. Mok, Ruijiang Li, L. Xing
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Abstract

This study was focused on a new beam source modeling technique for a flattening filter free (FFF) beam. The model was based on a previous three source model, and improved by introducing off axis ratio (OAR) of photon fluence to the primary and scattered photon sources to generate cone shaped dose profiles. The model parameters and the OAR were optimized from measured head scatter factors and a dose profile with 40 x 40 cm2 field size by using line search optimization algorithm. The model was validated by comparing various dose profiles on 6 and 10 MV FFF beam from a True Beam STx linear accelerator. Planar dose distributions for clinically used radiation fields were also calculated and compared with measured data. All calculated dose profiles were agreed with the measured data within 1.5% for 6 MV FFF beam, and within 1% for 10 MV FFF beam. The calculated planar doses showed good passing rates (> 94%) at 3%/3 mm of gamma indexing criteria. This model expected to be easily applicable to any FFF beams for treatment planning systems because it only required measured PDD, dose profiles and output factors which were easily acquired during conventional beam commissioning process.
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无压平滤波(FFF)光束源建模技术的发展
本文研究了一种新的无压平滤波(FFF)光束源建模技术。该模型在原有三源模型的基础上,通过在主源和散射源中引入离轴比(OAR),得到锥形剂量分布图。采用线搜索优化算法,根据实测的头部散射系数和40 × 40 cm2场尺寸的剂量分布图对模型参数和桨形进行优化。通过比较来自True beam STx直线加速器的6和10 MV FFF光束的不同剂量谱,验证了该模型。计算了临床使用辐射场的平面剂量分布,并与实测数据进行了比较。6 MV FFF束流的计算剂量曲线与实测数据在1.5%以内一致,10 MV FFF束流的计算剂量曲线与实测数据在1%以内一致。计算的平面剂量在3%/ 3mm时显示出良好的通过率(> 94%)。该模型预计将很容易适用于任何FFF光束的治疗计划系统,因为它只需要测量的PDD,剂量分布和输出因子,这些在传统的光束调试过程中很容易获得。
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