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Statistical modelling of the chest radiograph and simulation in a Bayesian framework

机译:贝叶斯框架胸部射线照片和模拟的统计建模

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The authors have recently developed a new statistical model for chest X-ray image formation. Here, they utilise Bayesian sampling to study the characteristics of the distributions of the random variables in this model. Using the Metropolis-Hastings algorithm on a clinically acquired image, posterior samples were generated from the distribution of mean direct detected photons (ideal image). From these samples, posterior (marginal) distributions could be found, and these proved to be unimodal, indicating that point estimation schemes such as GEM methods are likely to be close to optimal. It could also be seen that the sampling (conditional) distributions favor a wide range of exposure values for chest X-ray data. The sampling correlation proved to be on the order of 100 iterations, indicating that the chances of successfully using sampling algorithms such as Markov Chain Monte Carlo to do or evaluate image estimation is high. The general framework described can also be used for validation of approximations made in the derivation of the model.
机译:作者最近已经开发出一种新的胸部X射线图像形成统计模型。在这里,它们利用贝叶斯采样来研究该模型中随机变量的分布的特征。在临床获取的图像上使用Metropolis-Hastings算法,从平均直接检测到的光子的分布产生后样品(理想图像)。从这些样品中,可以找到后(边缘)分布,这些分布证明是单峰的,表明宝石方法的点估计方案可能接近最佳。还可以看出,采样(条件)分布有利于胸部X射线数据的广泛曝光值。所证明的采样相关性是约100次迭代的顺序,表明成功使用采样算法如Markov链蒙特卡罗来做或评估图像估计的机会很高。所描述的一般框架也可以用于验证模型推导中所做的近似。

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