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Model-based Segmentation of Abdominal Aortic Aneurysms in CTA Images

机译:CTA图像中腹主动脉瘤的模型分割

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Segmentation of thrombus in abdominal aortic aneurysms is complicated by regions of low boundary contrast and by the presence of many neighboring structures in close proximity to the aneurysm wall. This paper presents an automated method that is similar to the well known Active Shape Models (ASM), which combine a three-dimensional shape model with a one-dimensional boundary appearance model. Our contribution is twofold: First, we show how the generalizability of a shape model of curvilinear objects can be improved by modeling the objects axis deformation independent of its cross-sectional deformation. Second, a non-parametric appearance modeling scheme that effectively deals with a highly varying background is presented. In contrast with the conventional ASM approach, the new appearance model trains on both true and false examples of boundary profiles. The probability that a given image profile belongs to the boundary is obtained using k nearest neighbor (kNN) probability density estimation. The performance of this scheme is compared to that of original ASMs, which minimize the Mahalanobis distance to the average true profile in the training set. A set of leave-one-out experiments is performed on 23 datasets. Modeling the axis and cross-section separately reduces the shape reconstruction error in all cases. The average reconstruction error was reduced from 2.2 to 1.6 mm. Segmentation using the kNN appearance model significantly outperforms the original ASM scheme; average volume errors are 5.9% and 46% respectively.
机译:腹部主动脉瘤中血栓的分割对低界面对比度的区域复杂化,并且通过对动脉瘤壁附近的许多相邻结构存在。本文介绍了一种自动化方法,其类似于众所周知的主动形状​​模型(ASM),其将三维形状模型与一维边界外观模型相结合。我们的贡献是双重的:首先,我们展示了如何通过对其横截面变形建模的物体轴变形来改善曲线管对象形状模型的普遍性。其次,呈现了有效地处理高度变化的背景的非参数外观建模方案。与传统的ASM方法相比,新的外观模型列表在边界配置的真假示例中。使用K最近邻居(KNN)概率密度估计获得给定图像简档属于边界的概率。将该方案的性能与原始ASM的性能进行比较,这使得Mahalanobis与训练集中的平均真实配置文件最小化。在23个数据集上执行一组休假实验。建模轴和横截面分别降低了所有情况的形状重建误差。平均重建误差从2.2降至1.6毫米。使用KNN外观模型进行分割显着优于原始ASM方案;平均体积误差分别为5.9%和46%。

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