...
首页> 外文期刊>Medical Physics >The effects of mapping CT images to Monte Carlo materials on GEANT4 proton simulation accuracy
【24h】

The effects of mapping CT images to Monte Carlo materials on GEANT4 proton simulation accuracy

机译:将CT图像映射到蒙特卡洛材料对GEANT4质子模拟精度的影响

获取原文
获取原文并翻译 | 示例
   

获取外文期刊封面封底 >>

       

摘要

Purpose: Monte Carlo simulations of radiation therapy require conversion from Hounsfield units (HU) in CT images to an exact tissue composition and density. The number of discrete densities (or density bins) used in this mapping affects the simulation accuracy, execution time, and memory usage in GEANT4 and other Monte Carlo code. The relationship between the number of density bins and CT noise was examined in general for all simulations that use HU conversion to density. Additionally, the effect of this on simulation accuracy was examined for proton radiation. Methods: Relative uncertainty from CT noise was compared with uncertainty from density binning to determine an upper limit on the number of density bins required in the presence of CT noise. Error propagation analysis was also performed on continuously slowing down approximation range calculations to determine the proton range uncertainty caused by density binning. These results were verified with Monte Carlo simulations. Results: In the presence of even modest CT noise (5 HU or 0.5%) 450 density bins were found to only cause a 5% increase in the density uncertainty (i.e., 95% of density uncertainty from CT noise, 5% from binning). Larger numbers of density bins are not required as CT noise will prevent increased density accuracy; this applies across all types of Monte Carlo simulations. Examining uncertainty in proton range, only 127 density bins are required for a proton range error of <0.1 mm in most tissue and <0.5 mm in low density tissue (e.g., lung). Conclusions: By considering CT noise and actual range uncertainty, the number of required density bins can be restricted to a very modest 127 depending on the application. Reducing the number of density bins provides large memory and execution time savings in GEANT4 and other Monte Carlo packages.
机译:目的:放射疗法的蒙特卡洛模拟需要将CT图像中的Hounsfield单位(HU)转换为精确的组织组成和密度。此映射中使用的离散密度(或密度仓)的数量会影响GEANT4和其他蒙特卡洛代码中的仿真精度,执行时间和内存使用情况。对于使用HU转换为密度的所有模拟,通常都会检查密度仓的数量与CT噪声之间的关系。此外,检查了质子辐射对仿真精度的影响。方法:将CT噪声的相对不确定度与密度分级的不确定度进行比较,以确定存在CT噪声时所需密度仓的数量上限。还对连续减慢的近似范围计算进行了误差传播分析,以确定由密度合并引起的质子范围不确定性。这些结果通过蒙特卡洛模拟得到了验证。结果:在存在适度CT噪声(5 HU或0.5%)的情况下,发现450个密度箱只会使密度不确定度增加5%(即,来自CT噪声的密度不确定度为95%,来自分箱的5%) 。不需要大量的密度仓,因为CT噪声会阻止密度精度的提高;这适用于所有类型的蒙特卡洛模拟。检查质子范围的不确定性,对于大多数组织中<0.1 mm的质子范围误差和在低密度组织(例如肺)中的<0.5 mm的质子范围误差,仅需要127个密度箱。结论:通过考虑CT噪声和实际范围不确定性,可以根据应用将所需密度箱的数量限制为非常适中的127个。减少密度存储箱的数量可在GEANT4和其他Monte Carlo软件包中节省大量内存并节省执行时间。

著录项

相似文献

  • 外文文献
  • 中文文献
  • 专利
获取原文

客服邮箱:kefu@zhangqiaokeyan.com

京公网安备:11010802029741号 ICP备案号:京ICP备15016152号-6 六维联合信息科技 (北京) 有限公司©版权所有
  • 客服微信

  • 服务号