A computational platform for the personalized clinical treatment of glioblastoma multiforme
Code:
55/2017
Title:
A computational platform for the personalized clinical treatment of glioblastoma multiforme
Date:
Monday 23rd October 2017
Author(s):
Agosti, A.; Cattaneo, C.; Giverso, C.; Ambrosi, D.; Ciarletta, P.
Abstract:
In this work, we develop a computational tool to predict the patient-specific evolution of a highly malignant
brain tumour, the glioblastoma multiforme (GBM), and its response to therapy. A diffuse-interface mathematical
model based on mixture theory is fed by clinical neuroimaging data that provide the anatomical and microstructural
characteristics of the patient brain. The model is numerically solved using the finite element method, on the basis
of suitable numerical techniques to deal with the resulting Cahn-Hilliard type equation with degenerate mobility and
single-well potential. We report the results of simulations performed on the real geometry of a patient brain, proving
how the tumour expansion is actually dependent on the local tissue structure. We also report a sensitivity analysis
concerning the effects of the different therapeutic strategies employed in the clinical Stupp protocol. The simulated
results are in qualitative agreement with the observed evolution of GBM during growth, recurrence and response to
treatment. Taken as a proof-of-concept, these results open the way to a novel personalized approach of mathematical
tools in clinical oncology.