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Cortical brain structures segmentation using constrained optimization and intensity coupling

机译:使用约束优化和强度耦合的大脑皮层结构分割

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Brain image segmentation is one of the most important applications in medicine and also is one of the most challenging topics in the field of medical image processing. In general, most automatic segmentation methods consist of an energy function, a shape model, and an optimization strategy. Each plays an important role in the design of an accurate segmentation algorithm. Here we introduce a modified version of a coupled structure segmentation algorithm that is based on earlier paper. Specifically, we have 1) utilized a multiple atlas strategy to estimate a joint probability mass function of the location and tissue type information of the structures; 2) analyzed the relationship among the various structures to achieve more robust probability density function (pdf) estimation; 3) added a constraint to the optimization process to minimize intersection among the different structures; and 4) demonstrated the effectiveness of the method for the segmentation of certain brain structures.
机译:脑图像分割是医学上最重要的应用之一,也是医学图像处理领域中最具挑战性的主题之一。通常,大多数自动分割方法包括能量函数,形状模型和优化策略。在精确分割算法的设计中,每一个都起着重要的作用。在这里,我们介绍一种基于早期论文的耦合结构分割算法的改进版本。具体来说,我们有1)利用多图谱策略来估计结构的位置和组织类型信息的联合概率质量函数; 2)分析了各种结构之间的关系,以实现更鲁棒的概率密度函数(pdf)估计; 3)在优化过程中增加了约束,以最大程度地减少不同结构之间的交集;和4)证明了该方法对某些大脑结构进行分割的有效性。

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