Published March 26, 2021 | Version v1

All simulation results, figures and code regarding the manuscript: Calibrating models of cancer invasion: parameter estimation using Approximate Bayesian Computation and gradient matching

  • 1. University of St Andrews

Description

We present two different methods to estimate parameters within a partial differential equation (PDE) model of cancer invasion. The model describes the spatio-temporal evolution of three variables -- tumour cell density, extracellular matrix density and matrix degrading enzyme concentration -- in a one-dimensional tissue domain. The first method is a likelihood-free approach associated with Approximate Bayesian Computation (ABC); the second is a two-stage gradient matching method based on smoothing the data with a Generalized Additive Model (GAM) and matching gradients from the GAM to those from the model. Both methods performed well on simulated data.  To increase realism, additionally we tested the gradient matching scheme with simulated measurement error and found that the ability to estimate some model parameters deteriorated rapidly as measurement error increased.

Notes

The primary repository can be found directly on Github: https://github.com/ycx12341/Data-Code-Figures-ver-4. Updates to the datasets will first be made to this primary repository. 

Funding provided by: Engineering and Physical Sciences Research Council
Crossref Funder Registry ID: http://dx.doi.org/10.13039/501100000266
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Funding provided by: St Leonard International Fee Scholarship *
Crossref Funder Registry ID:
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Funding provided by: St Leonard International Fee Scholarship
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