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Probabilistic atlas and geometric variability estimation to drive tissue segmentation

机译:概率图集和几何变异估计驱动组织分割

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摘要

Computerized anatomical atlases play an important role in medical image analysis. While an atlas usually refers to a standard or mean image also called template, which presumably represents well a given population, it is not enough to characterize the observed population in detail. A template image should be learned jointly with the geometric variability of the shapes represented in the observations. These two quantities will in the sequel form the atlas of the corresponding population. The geometric variability is modeled as deformations of the template image so that it fits the observations. In this paper, we provide a detailed analysis of a new generative statistical model based on dense deformable templates that represents several tissue types observed in medical images. Our atlas contains both an estimation of probability maps of each tissue (called class) and the deformation metric. We use a stochastic algorithm for the estimation of the probabilistic atlas given a dataset. This atlas is then used for atlas-based segmentation method to segment the new images. Experiments are shown on brain T1 MRI datasets.
机译:计算机化的解剖图谱在医学图像分析中起着重要的作用。虽然地图集通常是指标准图像或均值图像(也称为模板),它大概可以很好地代表给定的人口,但不足以详细描述观察到的人口。模板图像应与观测结果中表示的形状的几何可变性一起学习。这两个数量将在后继形成相应人群的地图集。将几何可变性建模为模板图像的变形,以使其适合观察结果。在本文中,我们提供了一种新的生成统计模型的详细分析,该模型基于致密的可变形模板,该模板代表在医学图像中观察到的几种组织类型。我们的地图集既包含每个组织(称为类别)的概率图的估计,也包含变形度量。给定数据集,我们使用随机算法来估计概率图集。然后将此图集用于基于图集的分割方法以分割新图像。实验显示在大脑T1 MRI数据集上。

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