Fitting ordinary differential equations to short time course data

Author:

Brewer Daniel12,Barenco Martino12,Callard Robin12,Hubank Michael12,Stark Jaroslav34

Affiliation:

1. Institute of Child Health, University College London30 Guilford Street, London WC1N 1EH, UK

2. CoMPLEX, University College London4 Stephenson Way, London NW1 2HE, UK

3. Department of Mathematics, Imperial College LondonLondon SW7 2AZ, UK

4. Centre for Integrative Systems Biology at Imperial College, Imperial College LondonLondon SW7 2AZ, UK

Abstract

Ordinary differential equations (ODEs) are widely used to model many systems in physics, chemistry, engineering and biology. Often one wants to compare such equations with observed time course data, and use this to estimate parameters. Surprisingly, practical algorithms for doing this are relatively poorly developed, particularly in comparison with the sophistication of numerical methods for solving both initial and boundary value problems for differential equations, and for locating and analysing bifurcations. A lack of good numerical fitting methods is particularly problematic in the context of systems biology where only a handful of time points may be available. In this paper, we present a survey of existing algorithms and describe the main approaches. We also introduce and evaluate a new efficient technique for estimating ODEs linear in parameters particularly suited to situations where noise levels are high and the number of data points is low. It employs a spline-based collocation scheme and alternates linear least squares minimization steps with repeated estimates of the noise-free values of the variables. This is reminiscent of expectation–maximization methods widely used for problems with nuisance parameters or missing data.

Publisher

The Royal Society

Subject

General Physics and Astronomy,General Engineering,General Mathematics

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