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An image-based modeling framework for patient-specific computational hemodynamics
Authors:Luca Antiga  Marina Piccinelli  Lorenzo Botti  Bogdan Ene-Iordache  Andrea Remuzzi  David A Steinman
Institution:(1) Biomedical Engineering Department, Mario Negri Institute for Pharmacological Research, Villa Camozzi, Ranica, BG, Italy;(2) Industrial Engineering Department, University of Bergamo, Bergamo, Italy;(3) Biomedical Simulation Laboratory, Department of Mechanical and Industrial Engineering, University of Toronto, Toronto, Canada
Abstract:We present a modeling framework designed for patient-specific computational hemodynamics to be performed in the context of large-scale studies. The framework takes advantage of the integration of image processing, geometric analysis and mesh generation techniques, with an accent on full automation and high-level interaction. Image segmentation is performed using implicit deformable models taking advantage of a novel approach for selective initialization of vascular branches, as well as of a strategy for the segmentation of small vessels. A robust definition of centerlines provides objective geometric criteria for the automation of surface editing and mesh generation. The framework is available as part of an open-source effort, the Vascular Modeling Toolkit, a first step towards the sharing of tools and data which will be necessary for computational hemodynamics to play a role in evidence-based medicine.
Keywords:Patient-specific modeling  Image segmentation  Computational geometry  Mesh generation  CFD  Hemodynamics
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