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Exploiting self-similarity of arterial trees to reduce the complexity of analysis

机译:利用动脉树的自相似性来降低分析的复杂性

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Abstract: Vascular structures such as the pulmonary arterial tree contain hundreds of thousands of vessel segments, making structural and functional analysis of an entire 3D image volume very difficult. Currently-available methods for segmentation and morphometry of 3D vascular tree images require user interaction making the task very tedious and sometimes impossible. Our aim is to exploit the self-similar nature of arterial trees to simplify morphometric analysis. The structure of pulmonary arterial trees exhibits self- similarity in the sense that the segment length and diameter data from different pathways are statistically indistinguishable for subtrees distal to a given segment diameter. We analyze 3D micro-CT images of mouse and rat pulmonary arterial trees by measuring the lengths and diameters of the vessel segments of the several longest arterial pathways and their immediate branches interactively. Since measurements made on the longest pathways are representative of the tree as a whole, and there are less than 30 branches off the main trunk, the morphometry of the complex tree can be characterized by less than 100 length and diameter measurements. !56
机译:摘要:诸如肺动脉树之类的血管结构包含成千上万的血管段,因此很难对整个3D图像体积进行结构和功能分析。当前可用的用于3D血管树图像的分割和形态测量的方法需要用户交互,这使得任务非常繁琐,有时甚至是不可能的。我们的目的是利用动脉树的自相似性来简化形态分析。肺动脉树的结构在某种意义上表现出自相似性,即对于给定段直径远侧的子树,来自不同路径的段长度和直径数据在统计上是无法区分的。我们通过测量几个最长的动脉通路及其直接分支的血管段的长度和直径,来分析小鼠和大鼠肺动脉树的3D micro-CT图像。由于在最长路径上进行的测量代表了整个树,并且主干处的分支少于30个,因此复杂树的形态可通过少于100个长度和直径测量来表征。 !56

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