Sun Shih-Yu, Wang Peng, Sun Shanhui, Chen Terrence
Med Image Comput Comput Assist Interv. 2014;17(Pt 2):594-602. doi: 10.1007/978-3-319-10470-6_74.
Analysis of vessel structures in 2D X-ray angiograms is important for pre-operative evaluation and image-guided intervention. However, automated vessel segmentation in angiograms, especially extraction of the topology such as bifurcations and vessel crossings, remains challenging mainly due to the projective nature of angiography and background clutter. In this paper, a novel framework for model-guided coronary vessel extraction in 2D angiograms is presented. In this framework, a graph is constructed using a sparse set of pixels in the angiogram. With a single user-supplied click as the starting point, the vessel tree structure in the angiogram is automatically extracted from the graph. Ambiguities in this tree structure caused by 3D-to-2D projection are then resolved using topological information from the 3D vessel model of the same patient. By incorporating this prior shape information, the proposed method is effective in extraction of vessel topology, and is robust to background clutter and uneven illumination. Through quantitative evaluation on 20 angiograms, it is shown that this model-guided approach significantly improves detection of vessel structures and bifurcations.
二维X射线血管造影中的血管结构分析对于术前评估和图像引导干预非常重要。然而,血管造影中的自动血管分割,尤其是诸如分叉和血管交叉等拓扑结构的提取,仍然具有挑战性,主要原因是血管造影的投影性质和背景杂波。本文提出了一种用于二维血管造影中模型引导的冠状动脉血管提取的新颖框架。在此框架中,使用血管造影中的一组稀疏像素构建一个图。以用户提供的单个点击作为起点,从该图中自动提取血管造影中的血管树结构。然后,使用来自同一患者的三维血管模型的拓扑信息来解决由三维到二维投影引起的该树结构中的模糊性。通过合并此先验形状信息,所提出的方法在血管拓扑提取方面是有效的,并且对背景杂波和不均匀照明具有鲁棒性。通过对20幅血管造影进行定量评估,结果表明这种模型引导方法显著提高了血管结构和分叉的检测率。