Faculty of Mathematics and Computer Science, Nicolaus Copernicus University in Toruń, Chopina 12/18, 87-100, Torun, Poland.
Department of Radiology, Collegium Medicum, School of Medicine, University of Warmia and Mazury, Olsztyn, Poland.
Med Biol Eng Comput. 2023 Jun;61(6):1343-1361. doi: 10.1007/s11517-022-02735-5. Epub 2023 Jan 26.
Understanding the 3D cerebral vascular network is one of the pressing issues impacting the diagnostics of various systemic disorders and is helpful in clinical therapeutic strategies. Unfortunately, the existing software in the radiological workstation does not meet the expectations of radiologists who require a computerized system for detailed, quantitative analysis of the human cerebrovascular system in 3D and a standardized geometric description of its components. In this study, we show a method that uses 3D image data from magnetic resonance imaging with contrast to create a geometrical reconstruction of the vessels and a parametric description of the reconstructed segments of the vessels. First, the method isolates the vascular system using controlled morphological growing and performs skeleton extraction and optimization. Then, around the optimized skeleton branches, it creates tubular objects optimized for quality and accuracy of matching with the originally isolated vascular data. Finally, it optimizes the joints on n-furcating vessel segments. As a result, the algorithm gives a complete description of shape, position in space, position relative to other segments, and other anatomical structures of each cerebrovascular system segment. Our method is highly customizable and in principle allows reconstructing vascular structures from any 2D or 3D data. The algorithm solves shortcomings of currently available methods including failures to reconstruct the vessel mesh in the proximity of junctions and is free of mesh collisions in high curvature vessels. It also introduces a number of optimizations in the vessel skeletonization leading to a more smooth and more accurate model of the vessel network. We have tested the method on 20 datasets from the public magnetic resonance angiography image database and show that the method allows for repeatable and robust segmentation of the vessel network and allows to compute vascular lateralization indices.
理解三维脑血管网络是影响各种系统性疾病诊断的紧迫问题之一,有助于临床治疗策略的制定。然而,现有的放射学工作站软件未能满足放射科医生的期望,他们需要一个计算机化的系统,以便对三维人脑血管系统进行详细、定量的分析,并对其组件进行标准化的几何描述。在本研究中,我们展示了一种使用磁共振成像对比的三维图像数据来创建血管的几何重建和血管重建段的参数描述的方法。首先,该方法使用受控形态生长来分离血管系统,并进行骨架提取和优化。然后,在优化的骨架分支周围,创建管状物体,以优化与原始分离血管数据的匹配质量和准确性。最后,优化具有 n 个分叉的血管段的关节。结果,该算法给出了每个脑血管系统段的形状、空间位置、与其他段的相对位置以及其他解剖结构的完整描述。我们的方法具有高度的可定制性,原则上允许从任何二维或三维数据重建血管结构。该算法解决了当前可用方法的一些缺点,包括在接头附近重建血管网格的失败,并且在高曲率血管中没有网格碰撞。它还在血管骨架化中引入了一些优化,从而使血管网络的模型更加平滑和准确。我们已经在来自公共磁共振血管造影图像数据库的 20 个数据集上测试了该方法,结果表明该方法允许对血管网络进行可重复且稳健的分割,并允许计算血管侧化指数。