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首页> 外文期刊>Medical image analysis >Mutual information in coupled multi-shape model for medical image segmentation.
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Mutual information in coupled multi-shape model for medical image segmentation.

机译:用于医学图像分割的耦合多形状模型中的互信息。

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摘要

This paper presents extensions which improve the performance of the shape-based deformable active contour model presented earlier in [IEEE Conf. Comput. Vision Pattern Recog. 1 (2001) 463] for medical image segmentation. In contrast to that previous work, the segmentation framework that we present in this paper allows multiple shapes to be segmented simultaneously in a seamless fashion. To achieve this, multiple signed distance functions are employed as the implicit representations of the multiple shape classes within the image. A parametric model for this new representation is derived by applying principal component analysis to the collection of these multiple signed distance functions. By deriving a parametric model in this manner, we obtain a coupling between the multiple shapes within the image and hence effectively capture the co-variations among the different shapes. The parameters of the multi-shape model are then calculated to minimize a single mutual information-based cost criterion for image segmentation. The use of a single cost criterion further enhances the coupling between the multiple shapes as the deformation of any given shape depends, at all times, upon every other shape, regardless of their proximity. We found that this resulting algorithm is able to effectively utilize the co-dependencies among the different shapes to aid in the segmentation process. It is able to capture a wide range of shape variability despite being a parametric shape-model. And finally, the algorithm is robust to large amounts of additive noise. We demonstrate the utility of this segmentation framework by applying it to a medical application: the segmentation of the prostate gland, the rectum, and the internal obturator muscles for MR-guided prostate brachytherapy.
机译:本文提出了一些扩展,这些扩展改善了先前在[IEEE Con​​f。计算视觉模式Recog。 1(2001)463]用于医学图像分割。与之前的工作相反,我们在本文中介绍的分割框架允许以无缝方式同时分割多个形状。为了实现这一点,采用多个带符号距离函数作为图像中多个形状类别的隐式表示。通过将主成分分析应用于这些多个带符号距离函数的集合,可以得出此新表示形式的参数模型。通过以这种方式导出参数模型,我们获得了图像内多个形状之间的耦合,从而有效地捕获了不同形状之间的协变量。然后计算多形状模型的参数以最小化用于图像分割的单个基于互信息的成本标准。单一成本标准的使用进一步增强了多个形状之间的耦合,因为任何给定形状的变形始终始终取决于其他形状,而与它们的邻近程度无关。我们发现,这种结果算法能够有效利用不同形状之间的相互依赖性,以辅助分割过程。尽管是参数形状模型,它仍可以捕获各种形状变化。最后,该算法对大量加性噪声具有鲁棒性。我们通过将其应用于医疗应用来证明此分割框架的实用性:MR引导的前列腺近距离放射治疗的前列腺,直肠和内部闭孔肌的分割。

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