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A Joint Transformation and Residual Image Descriptor for Morphometric Image Analysis using an Equivalence Class Formulation

机译:使用等价类公式进行形态学图像分析的联合变换和残差图像描述符

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摘要

Existing computational anatomy methodologies for morphometric analysis of medical images are often based solely on the shape transformation, typically being a diffeomorphism, that warps these images to a common template or vice versa. However, anatomical differences as well as changes induced by pathology, prevent the warping transformation from producing an exact correspondence. The residual image captures information that is not reflected by the diffeomorphism, and therefore allows us to maintain the entire morphological profile for analysis. In this paper we present a morphological descriptor which combines the warping transformation with the residual image in an equivalence class formulation, to characterize morphology of anatomical structures. Equivalence classes are formed by pairs of transformation and residual, for different levels of smoothness of the warping transformation. These pairs belong to the same equivalence class, since they jointly reconstruct the exact same morphology. Moreover, pattern classification methods are trained on the entire equivalence class, instead of a single pair, in order to become more robust to a variety of factors that affect the warping transformation, including the anatomy being measured. This joint descriptor is evaluated by statistical testing and estimation of class separation by classification, initially for 2-D synthetic images with simulated atrophy and subsequently for a volumetric dataset consisting of schizophrenia patients and healthy controls. Results of class separation indicate that this joint descriptor produces generally better and more robust class separation than using each of the components separately.
机译:用于医学图像的形态分析的现有的计算解剖学方法学通常仅基于形状变换,通常是衍射,将这些图像扭曲为通用模板,反之亦然。但是,解剖学差异以及病理学引起的变化会阻止翘曲变换产生精确的对应关系。残差图像捕获了未由亚同态性反映的信息,因此可以使我们保持整个形态轮廓以进行分析。在本文中,我们提出了一种形态描述子,将等价类公式中的翘曲变换与残差图像相结合,以表征解剖结构的形态。等价类由成对的变换和残差构成,用于变形变换的不同平滑度。这些对属于相同的等价类,因为它们共同重建了完全相同的形态。此外,模式分类方法是在整个等效类上而不是在一对等效类上训练的,以便对影响变形的各种因素(包括要测量的解剖结构)变得更加健壮。通过统计测试和分类分类估计来评估此联合描述符,首先对具有模拟萎缩的二维合成图像,然后对由精神分裂症患者和健康对照组成的体积数据集进行评估。类分离的结果表明,与单独使用每个组件相比,此联合描述符通常产生更好,更可靠的类分离。

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