首页> 外文会议>IEEE Nuclear Science Symposium and Medical Imaging Conference >Statistical comparison of likelihood models for low dose x-ray CT
【24h】

Statistical comparison of likelihood models for low dose x-ray CT

机译:低剂量X射线CT可能性模型的统计比较

获取原文

摘要

Iterative reconstruction in x-ray CT using maximum likelihood estimation (MLE) seeks to improve image quality over analytic techniques by accurately modeling the statistics of the CT acquisition. However there are a variety of statistical models to choose from, each providing a different tradeoff between data fidelity and computational simplicity. In this work, we simplify the reconstruction task to estimating the depth of a single stack of material, which makes estimation tractable for any model. We use this methodology to compare the tradeoffs of different statistical models. We specifically focus on comparing the added value in using complex, clinically infeasible models over conventional ones. The likelihood function for various statistical CT models is calculated either analytically or computationally for a particular x-ray source/detector system. Computational likelihoods are built through repeated calculation of their density functions. From these likelihoods, the bias and variance of each MLE are calculated. Excluding electronic noise, the bias and variance improvements of accurately modeling quantum noise with a compound Poisson model are negligible after accounting for beam hardening. Two strategies for including electronic noise - as additive Gaussian noise in the likelihood vs simple thresholding - are examined. Although each strategy leads to different estimates at low signals, their overall performance is similar. While accounting for beam-hardening of multi-energetic x-ray spectrum is important, we found that the benefit of modeling energy-integrating detectors is negligible. Also, while the presence of electronic noise worsens estimation performance at low signal levels, incorporating electronic noise in the likelihood model doesn't improve performance compared to thresholding.
机译:使用最大似然估计(MLE)的X射线CT迭代重建旨在通过对CT采集的统计数据进行准确建模,从而通过分析技术来提高图像质量。但是,有多种统计模型可供选择,每种统计模型都在数据保真度和计算简单性之间提供了不同的权衡。在这项工作中,我们将重建任务简化为估算单个材料堆叠的深度,这使得对任何模型的估算都易于处理。我们使用这种方法来比较不同统计模型的权衡。我们特别着重于比较使用复杂的,临床上不可行的模型与传统模型所带来的附加值。对于特定的X射线源/探测器系统,可以通过分析或计算来计算各种统计CT模型的似然函数。通过重复计算其密度函数来建立计算似然性。根据这些可能性,可以计算出每个MLE的偏差和方差。除电子噪声外,考虑到束硬化后,用复合泊松模型精确建模量子噪声的偏差和方差的改善可忽略不计。研究了两种将电子噪声包括在内的策略-作为可能性与简单阈值的加性高斯噪声。尽管每种策略在低信号时会导致不同的估计,但是它们的整体性能是相似的。尽管考虑到多能X射线光谱的光束硬化很重要,但我们发现对能量积分探测器进行建模的好处可忽略不计。同样,尽管电子噪声的存在会降低低信号水平下的估计性能,但与阈值相比,将电子噪声合并到似然模型中并不会提高性能。

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