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+ | ===Part 2=== |
There are numerous challenges in generating high-quality meshes of cardiac anatomies due to
the complex geometry of the heart, its curvature, and its motion. More generally, computational
modeling of anatomical models bounded by curved surfaces can benefit from the use of high-order
curved meshes. Using such meshes ensures that the curvature is captured correctly in the corresponding
mesh. In addition, for a fixed level of accuracy, pairing a high-order mesh with a high-order PDE solver
requires fewer mesh elements hence making the mesh generation and PDE solve much less
computationally expensive. The use of high-order meshes in dynamic simulations helps prevent
instabilities.
In this talk, we first present our advancing front-based high-order tetrahedral mesh generation method
for finite element meshes. While most existing high-order mesh generation methods employ a
computer-aided design (CAD) model to represent the boundary surface, our method requires only the
element vertices and connectivities. Thus, it can employ a high-order surface mesh which was
generated from medical image segmentation masks or a CAD model. Our method then directly
generates a high-order volume mesh and applies mesh optimization to utilize the higher degrees of
freedom and further improve the mesh quality.
Second, we present our high-order mesh warping algorithm for tetrahedral meshes, which allows us to
perform time-dependent deformations present in biomedical applications. Our method is based on a
finite element formulation for hyperelastic materials. We employ the two-parameter incompressible
Mooney-Rivlin model with appropriate material properties to represent the continuum model. We use
Newton iteration to solve the nonlinear elasticity equations obtained from the Mooney-Rivlin model and
equilibrium conditions; the solution to the nonlinear elasticity equations then yields the deformed
mesh.
Finally, we use our methods to generate several second-order tetrahedral meshes of anatomical models
obtained from medical images and CAD models and apply several time-dependent deformations. We
conclude with a vision for research in mesh generation for biomedical simulation.
This talk represents joint work with Fariba Mohammadi, University of Michigan, and Cristian Linte,
Rochester Institute of Technology
Published on 12/07/23
Volume Plenary Lecture Suzanne M. Shontz, 2023
DOI: 10.23967/admos.2023.082
Licence: CC BY-NC-SA license
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