A Bayesian framework for the extraction of input function for 18F-FDG metabolism study for both healthy and infarcted rats' hearts

R. Mabrouk, F. Dubeau, L. Bentabet
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Abstract

The quantitative analysis of tracers in positron emission tomography (PET) studies requires the measurement uptake and retention of tracer in tissue over time. This analysis applied to the heart allows to diagnose its state. It could provide a means to identify areas of myocardial viability and to assess myocardial ischemia. However, the input function (IF), quite commonly used in quantitative analysis, can be corrupted by undesirable effects such as spillover. In this paper, we propose a new approach to correct the cross contamination effect on PET dynamic image sequences. It is based on the decomposition of image pixel intensity into blood and tissue components using Bayesian statistics. The method uses an a priori knowledge of the probable distribution of blood and tissue in the images. Likelihood measures are computed by a General Gaussian Distribution (GGD) model. Bayes’ rule is then applied to compute weights that account for the concentrations of the radiotracer in blood and tissue and their relative contributions in each image pixel. We tested the method on a set of dynamic cardiac FDG-PET of healthy and unhealthy rats. The results show the benefit of our correction on the generation of pixel-wise images of myocardial metabolic rates for glucose (MMRG).
健康和梗死大鼠心脏18F-FDG代谢研究输入函数提取的贝叶斯框架
正电子发射断层扫描(PET)研究中示踪剂的定量分析需要测量示踪剂在组织中随时间的吸收和保留。这种分析应用于心脏,可以诊断其状态。它可以提供一种方法来确定心肌活力的区域和评估心肌缺血。然而,在定量分析中非常常用的输入函数(IF)可能会被溢出等不良影响所破坏。本文提出了一种校正PET动态图像序列交叉污染效应的新方法。它是基于使用贝叶斯统计将图像像素强度分解为血液和组织成分。该方法使用了血液和组织在图像中可能分布的先验知识。似然测度由一般高斯分布(GGD)模型计算。然后应用贝叶斯规则来计算血液和组织中放射性示踪剂浓度的权重,以及它们在每个图像像素中的相对贡献。并在健康大鼠和非健康大鼠的动态心脏FDG-PET上进行了实验。结果表明我们的校正对生成逐像素心肌葡萄糖代谢率(MMRG)图像的好处。
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