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首页> 外文期刊>Medical Imaging, IEEE Transactions on >Coupled Nonparametric Shape and Moment-Based Intershape Pose Priors for Multiple Basal Ganglia Structure Segmentation
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Coupled Nonparametric Shape and Moment-Based Intershape Pose Priors for Multiple Basal Ganglia Structure Segmentation

机译:耦合非参数形状和基于矩的互形姿势先验,用于多个基底神经节结构分割

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摘要

This paper presents a new active contour-based, statistical method for simultaneous volumetric segmentation of multiple subcortical structures in the brain. In biological tissues, such as the human brain, neighboring structures exhibit co-dependencies which can aid in segmentation, if properly analyzed and modeled. Motivated by this observation, we formulate the segmentation problem as a maximum a posteriori estimation problem, in which we incorporate statistical prior models on the shapes and intershape (relative) poses of the structures of interest. This provides a principled mechanism to bring high level information about the shapes and the relationships of anatomical structures into the segmentation problem. For learning the prior densities we use a nonparametric multivariate kernel density estimation framework. We combine these priors with data in a variational framework and develop an active contour-based iterative segmentation algorithm. We test our method on the problem of volumetric segmentation of basal ganglia structures in magnetic resonance images. We present a set of 2-D and 3-D experiments as well as a quantitative performance analysis. In addition, we perform a comparison to several existent segmentation methods and demonstrate the improvements provided by our approach in terms of segmentation accuracy.
机译:本文提出了一种新的基于活动轮廓的统计方法,用于大脑中多个皮层下结构的同时体积分割。在生物组织(例如人脑)中,如果进行适当的分析和建模,则相邻的结构会显示出相互依赖性,从而有助于进行分割。受此观察结果的启发,我们将分割问题公式化为最大后验估计问题,在该问题中,我们对感兴趣结构的形状和形状(相对)姿势合并了统计先验模型。这提供了一种原理性的机制,可将有关解剖结构的形状和关系的高级信息带入分割问题。为了学习先验密度,我们使用非参数多元核密度估计框架。我们将这些先验数据与变量框架中的数据相结合,并开发了基于主动轮廓的迭代分割算法。我们在磁共振图像中对基底神经节结构的体积分割问题进行了测试。我们介绍了一组2-D和3-D实验以及定量性能分析。此外,我们对几种现有的分割方法进行了比较,并证明了我们的方法在分割精度方面的改进。

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