Modeling and hexahedral meshing of cerebral arterial networks from centerlines
M\'eghane Decroocq, Carole Frindel, Pierre Roug\'e, Makoto Ohta and, Guillaume Lavou\'e

TL;DR
This paper introduces an automatic method for generating structured hexahedral meshes from vascular centerlines, improving robustness and mesh quality for CFD simulations of cerebral arteries.
Contribution
It presents a novel vessel modeling and meshing approach based on penalized splines and anatomical parametric models, enabling defect-free meshing from noisy centerline data.
Findings
92% vessels meshed without defects
83% bifurcations meshed without defects
Method applied successfully to 60 cerebral networks
Abstract
Computational fluid dynamics (CFD) simulation provides valuable information on blood flow from the vascular geometry. However, it requires extracting precise models of arteries from low-resolution medical images, which remains challenging. Centerline-based representation is widely used to model large vascular networks with small vessels, as it encodes both the geometric and topological information and facilitates manual editing. In this work, we propose an automatic method to generate a structured hexahedral mesh suitable for CFD directly from centerlines. We addressed both the modeling and meshing tasks. We proposed a vessel model based on penalized splines to overcome the limitations inherent to the centerline representation, such as noise and sparsity. The bifurcations are reconstructed using a parametric model based on the anatomy that we extended to planar n-furcations. Finally, we…
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Taxonomy
TopicsMedical Image Segmentation Techniques · 3D Shape Modeling and Analysis · Computer Graphics and Visualization Techniques
