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Bias Reduction for Low-Statistics PET: Maximum Likelihood Reconstruction With a Modified Poisson Distribution

机译:低统计PET的偏倚减少:具有修正的Poisson分布的最大似然重建

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摘要

Positron emission tomography data are typically reconstructed with maximum likelihood expectation maximization (MLEM). However, MLEM suffers from positive bias due to the non-negativity constraint. This is particularly problematic for tracer kinetic modeling. Two reconstruction methods with bias reduction properties that do not use strict Poisson optimization are presented and compared to each other, to filtered backprojection (FBP), and to MLEM. The first method is an extension of NEGML, where the Poisson distribution is replaced by a Gaussian distribution for low count data points. The transition point between the Gaussian and the Poisson regime is a parameter of the model. The second method is a simplification of ABML. ABML has a lower and upper bound for the reconstructed image whereas AML has the upper bound set to infinity. AML uses a negative lower bound to obtain bias reduction properties. Different choices of the lower bound are studied. The parameter of both algorithms determines the effectiveness of the bias reduction and should be chosen large enough to ensure bias-free images. This means that both algorithms become more similar to least squares algorithms, which turned out to be necessary to obtain bias-free reconstructions. This comes at the cost of increased variance. Nevertheless, NEGML and AML have lower variance than FBP. Furthermore, randoms handling has a large influence on the bias. Reconstruction with smoothed randoms results in lower bias compared to reconstruction with unsmoothed randoms or randoms precorrected data. However, NEGML and AML yield both bias-free images for large values of their parameter.
机译:正电子发射断层扫描数据通常以最大似然期望最大化(MLEM)进行重建。然而,由于非负性约束,MLEM遭受正偏差。这对于示踪剂动力学建模尤其成问题。提出了两种不使用严格的Poisson优化的具有减少偏差属性的重建方法,并将它们相互比较,与滤波反投影(FBP)和MLEM进行比较。第一种方法是NEGML的扩展,其中对于低计数数据点,泊松分布被高斯分布代替。高斯和泊松制度之间的过渡点是模型的参数。第二种方法是ABML的简化。 ABML具有重构图像的上下限,而AML具有设置为无穷大的上限。 AML使用负下限来获得减少偏差的属性。研究了下限的不同选择。两种算法的参数都确定了减少偏差的效果,因此应选择足够大的值以确保无偏差的图像。这意味着这两种算法都变得与最小二乘算法更加相似,后者被证明是获得无偏差重构所必需的。这是以增加差异为代价的。但是,NEGML和AML的差异低于FBP。此外,随机处理对偏差有很大的影响。与使用不平滑的随机数或使用随机预校正的数据进行重建相比,使用平滑的随机数进行重建产生的偏差更低。但是,NEGML和AML对于较大的参数值都能产生无偏差的图像。

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