首页> 外文会议>International Conference on Information Processing in Medical Imaging(IPMI 2007); 20070702-06; Kerkrade(NL) >An Anatomical Equivalence Class Based Joint Transformation-Residual Descriptor for Morphological Analysis
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An Anatomical Equivalence Class Based Joint Transformation-Residual Descriptor for Morphological Analysis

机译:基于解剖等价类的联合变换-残差描述符用于形态分析

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摘要

Existing approaches to computational anatomy assume that a perfectly conforming diffeomorphism applied to an anatomy of interest captures its morphological characteristics relative to a template. However, biological variability renders this task extremely difficult, if possible at all in many cases. Consequently, the information not reflected by the transformation, is lost permanently from subsequent analysis. We establish that this residual information is highly significant for characterizing subtle morphological variations and is complementary to the transformation. The amount of residual, in turn, depends on transformation parameters, such as its degree of regularization as well as on the template. We, therefore, present a methodology that measures morphological characteristics via a lossless morphological descriptor, based on both the residual and the transformation. Since there are infinitely many [transformation, residual] pairs that reconstruct a given anatomy, which collectively form a nonlinear manifold embedded in a high-dimensional space, we treat them as members of an Anatomical Equivalence Class (AEC). A unique and optimal representation, according to a certain criterion, of each individual anatomy is then selected from the corresponding AEC, by solving an optimization problem. This process effectively determines the optimal template and transformation parameters for each individual anatomy, and removes respective confounding variation in the data. Based on statistical tests on synthetic 2D images and real 3D brain scans with simulated atrophy, we show that this approach provides significant improvement over descriptors based solely on a transformation, in addition to being nearly independent of the choice of the template.
机译:现有的计算解剖学方法假定应用于关注解剖结构的完全符合的微分态捕获其相对于模板的形态特征。但是,生物学上的可变性使这项任务极为困难,即使在许多情况下都可以做到。因此,未通过转换反映的信息会从后续分析中永久丢失。我们确定该残留信息对于表征细微的形态变化非常重要,并且是对变换的补充。残差的数量又取决于转换参数,例如其正则化程度以及模板。因此,我们提出了一种基于残差和变换的,通过无损形态描述符来测量形态特征的方法。由于存在无限多的[变换,残差]对来重构给定的解剖结构,它们共同形成嵌入在高维空间中的非线性流形,因此我们将它们视为解剖学等效类(AEC)的成员。然后,通过解决优化问题,从特定的AEC中根据特定标准,选择每个个体解剖结构的唯一且最佳的表示形式。该过程有效地确定了每个个体解剖结构的最佳模板和转换参数,并消除了数据中各自混杂的变化。基于对合成2D图像的统计测试和具有模拟萎缩的真实3D脑部扫描,我们表明,除了几乎不依赖于模板的选择,该方法相对于仅基于变换的描述符提供了显着改进。

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