Automatic Cutting and Flattening of Carotid Artery Geometries

P. Eulzer, K. Richter, M. Meuschke, A. Hundertmark, K. Lawonn
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引用次数: 9

Abstract

We propose a novel method to cut and flatten vascular geometry that results in an intuitive mapping between the 3D and 2D domains. Our approach is fully automatic, and the sole input is the vessel geometry. We aim to simplify parameter analysis on vessel walls for research on vascular disease and computational hemodynamics. We present a use case for the flattening to aid efforts in investigating the pathophysiology of carotid stenoses (vessel constrictions that are a root cause of stroke). To achieve an intuitive mapping, we introduce the notion of natural vessel cuts. They remain on one side of vessel branches, meaning they adhere to the longitudinal direction and thus result in a comprehensible unfolding of the geometry. Vessel branches and endpoints are automatically detected, and a 2D layout configuration is found that retains the original branch layout. We employ a quasi-isometric surface parameterization to map the geometry to the 2D domain as a single patch. The flattened depiction resolves the need for tedious 3D interaction as the whole surface is visible at once. We found this overview particularly beneficial for exploring temporally resolved parameters.
颈动脉几何形状的自动切割和平坦
我们提出了一种新颖的方法来切割和平坦血管几何形状,从而在3D和2D域之间产生直观的映射。我们的方法是全自动的,唯一的输入是容器的几何形状。我们的目的是简化血管壁的参数分析,用于血管疾病和计算血流动力学的研究。我们提出了一个用例,以帮助研究颈动脉狭窄的病理生理学(血管收缩是中风的根本原因)。为了实现直观的映射,我们引入了自然血管切割的概念。它们保持在容器分支的一侧,这意味着它们坚持纵向方向,从而导致几何形状的可理解展开。自动检测血管分支和端点,并找到保留原始分支布局的二维布局配置。我们采用准等距表面参数化将几何图形映射到二维域作为单个补丁。扁平的描绘解决了繁琐的3D交互的需要,因为整个表面一次可见。我们发现这个概述对于探索暂时解析的参数特别有用。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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