Seo Jung-Hee, Eslami Parastou, Caplan Justin, Tamargo Rafael J, Mittal Rajat
Department of Mechanical Engineering, Johns Hopkins University, Baltimore, MD, United States.
Department of Neurosurgery, Johns Hopkins Medicine, Baltimore, MD, United States.
Front Physiol. 2018 Jun 12;9:681. doi: 10.3389/fphys.2018.00681. eCollection 2018.
Intracranial aneurysms manifest in a vast variety of morphologies and their growth and rupture risk are subject to patient-specific conditions that are coupled with complex, non-linear effects of hemodynamics. Thus, studies that attempt to understand and correlate rupture risk to aneurysm morphology have to incorporate hemodynamics, and at the same time, address a large enough sample size so as to produce reliable statistical correlations. In order to perform accurate hemodynamic simulations for a large number of aneurysm cases, automated methods to convert medical imaging data to simulation-ready configuration with minimal (or no) human intervention are required. In the present study, we develop a highly-automated method based on the immersed boundary method framework to construct computational models from medical imaging data which is the key idea is the direct use of voxelized contrast information from the 3D angiograms to construct a level-set based computational "mask" for the hemodynamic simulation. Appropriate boundary conditions are provided to the mask and the dynamics of blood flow inside the vessels and aneurysm is simulated by solving the Navier-Stokes equations on the Cartesian grid using the sharp-interface immersed boundary method. The present method does not require body conformal surface/volume mesh generation or other intervention for model clean-up. The viability of the proposed method is demonstrated for a number of distinct aneurysms derived from actual, patient-specific data.
颅内动脉瘤表现出多种多样的形态,其生长和破裂风险取决于患者的具体情况,这些情况与血流动力学的复杂非线性效应相关。因此,试图理解破裂风险与动脉瘤形态之间关系的研究必须纳入血流动力学因素,同时,要涉及足够大的样本量,以便得出可靠的统计相关性。为了对大量动脉瘤病例进行精确的血流动力学模拟,需要能够将医学影像数据转换为模拟就绪配置且只需最少(或无需)人工干预的自动化方法。在本研究中,我们基于浸入边界法框架开发了一种高度自动化的方法,用于从医学影像数据构建计算模型,其关键思想是直接利用三维血管造影的体素化对比信息来构建基于水平集的血流动力学模拟计算“掩码”。为该掩码提供适当的边界条件,并使用锐界面浸入边界法在笛卡尔网格上求解纳维 - 斯托克斯方程,以模拟血管和动脉瘤内的血流动力学。本方法不需要生成与身体共形的表面/体积网格,也无需进行其他模型清理干预。对于从实际患者特定数据中得出的多个不同动脉瘤,验证了所提方法的可行性。