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Segmentation and analysis of emission-computed-tomography images

机译:放射计算机断层扫描图像的分割和分析

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Abstract: This paper describes a statistical model for reconstruction of emission computed tomography (ECT) images. A distinguishing feature of this model is that it is parameterized in terms of quantities of direct physiological significance, rather than only in terms of grey-level voxel values. Specifically, parameters representing regions, region means, and region volumes are included in the model formulation and are estimated directly from projection data. The model is specified hierarchically within the Bayesian paradigm. At the lowest level of the hierarchy, a Gibbs distribution is employed to specify a probability distribution on the space of all possible partitions of the discretized image scene. A novel feature of this distribution is that the number of partitioning elements, or image regions, is not assumed known a priori. In contrast, any other segmentation models (e.g., Liang et al., 1991, Amit et al., 1991) require that the number of regions be specified prior to image reconstruction. Since the number of regions in a source distribution is seldom known a priori, allowing the number of regions to vary within the model framework is an important practical feature of this model. In the second level of the model hierarchy, random variables representing emission intensity are associated with each partitioning element or region. Individual voxel intensities are assumed to be drawn from a gamma distribution with mean equal to the region mean in the third stage, and in the final stage of the hierarchy projection data are assumed to be generated from Poisson distributions with means equal to weighted sums of voxel intensities. !13
机译:摘要:本文描述了用于重建放射计算机断层摄影(ECT)图像的统计模型。该模型的一个显着特征是,根据直接生理学意义的量进行参数化,而不仅仅是根据灰度体素值进行参数化。具体来说,代表区域,区域均值和区域体积的参数包括在模型公式中,并直接从投影数据进行估算。该模型在贝叶斯范式内分层指定。在层次结构的最低级别,采用吉布斯分布来指定离散化图像场景的所有可能分区的空间上的概率分布。这种分布的一个新颖特征是,无需先验就知道分区元素或图像区域的数量。相反,任何其他分割模型(例如Liang等,1991; Amit等,1991)都要求在图像重建之前指定区域数量。由于很少先验地知道源分布中的区域数,因此在模型框架内允许区域数变化是该模型的重要实用特征。在模型层次结构的第二级中,代表发射强度的随机变量与每个分区元素或区域相关联。假设个体像素强度是从第三阶段的均值等于区域均值的伽马分布中得出的,并且在层次结构的最后阶段,假设投影数据是由泊松分布生成的,均值等于像素的加权和强度。 !13

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