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Construction of Abdominal Probabilistic Atlases and Their Value in Segmentation of Normal Organs in Abdominal CT Scans

机译:腹部概率图谱的构建及其在腹部CT扫描中正常器官分割中的价值

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A good abdominal probabilistic atlas can provide important information to guide segmentation and registration applications in the abdomen. Here we build and test probabilistic atlases using 24 abdominal CT scans with available expert manual segmentations. Atlases are built by picking a target and mapping other training scans onto that target and then summing the results into one probabilistic atlas. We improve our previous abdominal atlas by 1) choosing a least biased target as determined by a statistical tool, i.e. multidimensional scaling operating on bending energy, 2) using a better set of control points to model the deformation, and 3) using higher information content CT scans with visible internal liver structures. One atlas is built in the least biased target space and two atlases are built in other target spaces for performance comparisons. The value of an atlas is assessed based on the resulting segmentations; whichever atlas yields the best segmentation performance is considered the better atlas. We consider two segmentation methods of abdominal volumes after registration with the probabilistic atlas: 1) simple segmentation by atlas thresholding and 2) application of a Bayesian maximum a posteriori method. Using jackknifing we measure the atlas-augmented segmentation performance with respect to manual expert segmentation and show that the atlas built in the least biased target space yields better segmentation performance than atlases built in other target spaces.
机译:良好的腹部概率图谱可以提供重要信息,以指导腹部的分割和配准应用。在这里,我们使用24条腹部CT扫描以及可用的专家手动分割来构建和测试概率图集。通过选择一个目标并将其他训练扫描图映射到该目标,然后将结果汇总为一个概率图集来构建地图集。我们通过以下方法来改进以前的腹部图集:1)选择由统计工具确定的偏差最小的目标,即对弯曲能量进行多维缩放; 2)使用一组更好的控制点来模拟变形; 3)使用较高的信息量CT扫描可见的肝脏内部结构。一个地图集建在偏差最小的目标空间中,而两个地图集建在其他目标空间中,以进行性能比较。地图集的价值是根据产生的细分进行评估的;哪一个图集产生最佳的分割效果,都被认为是更好的图集。在考虑概率图谱后,我们考虑了两种腹部容积的分割方法:1)通过图谱阈值进行简单分割; 2)应用贝叶斯最大后验方法。使用千斤顶,我们测量了相对于手动专家分割的图集增强分割性能,并显示了在最小偏差目标空间中构建的图集比在其他目标空间中构建的图集产生更好的分割性能。

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