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首页> 外文期刊>Journal of digital imaging: the official journal of the Society for Computer Applications in Radiology >Properties of noise in positron emission tomography images reconstructed with filtered-backprojection and row-action maximum likelihood algorithm
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Properties of noise in positron emission tomography images reconstructed with filtered-backprojection and row-action maximum likelihood algorithm

机译:用反滤波和行动作最大似然算法重建正电子发射断层图像的噪声特性

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摘要

Noise levels observed in positron emission tomography (PET) images complicate their geometric interpretation. Post-processing techniques aimed at noise reduction may be employed to overcome this problem. The detailed characteristics of the noise affecting PET images are, however, often not well known. Typically, it is assumed that overall the noise may be characterized as Gaussian. Other PET-imaging-related studies have been specifically aimed at the reduction of noise represented by a Poisson or mixed Poisson + Gaussian model. The effectiveness of any approach to noise reduction greatly depends on a proper quantification of the characteristics of the noise present. This work examines the statistical properties of noise in PET images acquired with a GEMINI PET/CT scanner. Noise measurements have been performed with a cylindrical phantom injected with 11C and well mixed to provide a uniform activity distribution. Images were acquired using standard clinical protocols and reconstructed with filtered-backprojection (FBP) and row-action maximum likelihood algorithm (RAMLA). Statistical properties of the acquired data were evaluated and compared to five noise models (Poisson, normal, negative binomial, log-normal, and gamma). Histograms of the experimental data were used to calculate cumulative distribution functions and produce maximum likelihood estimates for the parameters of the model distributions. Results obtained confirm the poor representation of both RAMLA- and FBP-reconstructed PET data by the Poisson distribution. We demonstrate that the noise in RAMLA-reconstructed PET images is very well characterized by gamma distribution followed closely by normal distribution, while FBP produces comparable conformity with both normal and gamma statistics.
机译:在正电子发射断层扫描(PET)图像中观察到的噪声水平使它们的几何解释复杂化。旨在降低噪声的后处理技术可以用来克服这个问题。但是,影响PET图像的噪声的详细特征通常并不为人所知。通常,假定总体噪声可表征为高斯噪声。其他与PET成像相关的研究也专门针对降低由Poisson或Poisson + Gaussian混合模型表示的噪声。任何降噪方法的有效性在很大程度上取决于对存在的噪声特性的正确量化。这项工作检查了使用GEMINI PET / CT扫描仪获取的PET图像中噪声的统计特性。用注入了11C的圆柱体模进行了噪声测量,并充分混合以提供均匀的活动分布。使用标准临床协议获取图像,并通过滤波反投影(FBP)和行动作最大似然算法(RAMLA)进行重建。评估所获取数据的统计属性,并将其与五个噪声模型(泊松,正态,负二项式,对数正态和伽玛)进行比较。实验数据的直方图用于计算累积分布函数,并为模型分布的参数产生最大似然估计。获得的结果证实了通过泊松分布对RAMLA和FBP重建的PET数据的不良表示。我们证明RAMLA重建的PET图像中的噪声非常好地由伽玛分布和紧随其后的正态分布来表征,而FBP与正态和伽玛统计量产生可比的一致性。

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