Computational modeling of therapy on pancreatic cancer in its early stages

Journal Article (2019)
Author(s)

Jiao Chen (TU Delft - Numerical Analysis)

Daphne Weihs (Technion)

Fred J. Vermolen (TU Delft - Numerical Analysis)

DOI related publication
https://doi.org/10.1007/s10237-019-01219-0 Final published version
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Publication Year
2019
Language
English
Journal title
Biomechanics and Modeling in Mechanobiology
Issue number
2
Volume number
19 (2020)
Pages (from-to)
427-444
Downloads counter
234
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Institutional Repository
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Abstract

More than eighty percent of pancreatic cancer involves ductal adenocarcinoma with an abundant desmoplastic extracellular matrix surrounding the solid tumor entity. This aberrant tumor microenvironment facilitates a strong resistance of pancreatic cancer to medication. Although various therapeutic strategies have been reported to be effective in mice with pancreatic cancer, they still need to be tested quantitatively in wider animal-based experiments before being applied as therapies. To aid the design of experiments, we develop a cell-based mathematical model to describe cancer progression under therapy with a specific application to pancreatic cancer. The displacement of cells is simulated by solving a large system of stochastic differential equations with the Euler–Maruyama method. We consider treatment with the PEGylated drug PEGPH20 that breaks down hyaluronan in desmoplastic stroma followed by administration of the chemotherapy drug gemcitabine to inhibit the proliferation of cancer cells. Modeling the effects of PEGPH20 + gemcitabine concentrations is based on Green’s fundamental solutions of the reaction–diffusion equation. Moreover, Monte Carlo simulations are performed to quantitatively investigate uncertainties in the input parameters as well as predictions for the likelihood of success of cancer therapy. Our simplified model is able to simulate cancer progression and evaluate treatments to inhibit the progression of cancer.