Intensity ridge and widths for tubular object segmentation and description

S. Aylward, E. Bullitt, S. Pizer, Dave H. Eberly
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引用次数: 162

Abstract

Introduces a technique for the automated description of tubular objects in 3D medical images. The goal of automated 3D object description is to extract a representation which consistently details the location, size, and structure of objects in 3D images using minimal user interaction. Such a representation provides a means by which objects can be classified, quantifiably evaluated, and registered. It also serves as a region of interest specification for visualization processes. The technique presented in this paper is suited for generating representations of 3D objects with nearly circular cross sections which have, possibly as a result of a global operation (e.g., blurring), intensity extrema near their centers. Such tubular objects commonly occur within human anatomy (e.g., vessels and selected bones). The medial axis of each of these objects is well approximated by its intensity ridge. The scales of the local maxima in medialness at all points along the ridge can be mapped to local width estimates. Together these measures capture the location, size, and structure of tubular objects. This paper covers the mathematical basis, the implementation issues, and the application of this technique to the extraction of vessels from 3D magnetic resonance angiographic images and bones from 3D X-ray computed tomographic images.
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用于管状物体分割和描述的强度脊和宽度
介绍了一种三维医学图像中管状物体的自动描述技术。自动化3D对象描述的目标是在使用最少的用户交互的情况下,提取出一种一致地详细描述3D图像中对象的位置、大小和结构的表示。这种表示提供了一种可以对对象进行分类、定量评估和注册的方法。它还可以作为可视化过程的兴趣区域规范。本文中提出的技术适用于生成具有近圆形横截面的3D物体的表示,这些物体可能由于全局操作(例如,模糊)而在其中心附近具有强度极值。这种管状物体通常出现在人体解剖学中(例如,血管和选定的骨骼)。每一个物体的中轴线都很好地近似于其强度脊。沿脊的所有点的局部最大中度的尺度可以映射到局部宽度估计值。这些措施一起捕捉到管状物体的位置、大小和结构。本文介绍了该技术的数学基础、实现问题,以及该技术在三维磁共振血管造影图像中血管提取和三维x射线计算机断层图像中骨骼提取中的应用。
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