Learning patient-specific parameters for a diffuse interface glioblastoma model from neuroimaging data
Code:
55/2019
Title:
Learning patient-specific parameters for a diffuse interface glioblastoma model from neuroimaging data
Date:
Wednesday 18th December 2019
Author(s):
Agosti, A.; Ciarletta, P.; Garcke, H.; Hinze, M.
Abstract:
Parameters in mathematical models for glioblastoma multiforme (GBM) tumour growth
are highly patient specific. Here we aim to estimate parameters in a Cahn-Hilliard type
diffuse interface model in an optimised way using model order reduction (MOR) based on
proper orthogonal decomposition (POD). Based on snapshots derived from finite element
simulations for the full order model (FOM) we use POD for dimension reduction and solve
the parameter estimation for the reduced order model (ROM). Neuroimaging data are used
to define the highly inhomogeneous diffusion tensors as well as to define a target functional in
a patient specific manner. The reduced order model heavily relies on the discrete empirical
interpolation method (DEIM) which has to be appropriately adapted in order to deal with
the highly nonlinear and degenerate parabolic PDEs. A feature of the approach is that
we iterate between full order solves with new parameters to compute a POD basis function
and sensitivity based parameter estimation for the ROM problems. The algorithm is applied
using neuroimaging data for two clinical test cases and we can demonstrate that the reduced
order approach drastically decreases the computational effort.