Abstract

Biochemical reaction networks are often modelled using discrete-state, continuous-time Markov chains. System statistics of these Markov chains usually cannot be calculated analytically and therefore estimates must be generated via simulation techniques. There is a well documented class of simulation techniques known as exact stochastic simulation algorithms, an example of which is Gillespie’s direct method. These algorithms often come with high computational costs, therefore approximate stochastic simulation algorithms such as the tau-leap method are used. However, in order to minimise the bias in the estimates generated using them, a relatively small value of tau is needed, rendering the computational costs comparable to Gillespie’s direct method. The multi-level Monte Carlo method (Anderson and Higham, Multiscale Model. Simul. 10:146–179, 2012) provides a reduction in computational costs whilst minimising or even eliminating the bias in the estimates of system statistics. This is achieved by first crudely approximating required statistics with many sample paths of low accuracy. Then correction terms are added until a required level of accuracy is reached. Recent literature has primarily focussed on implementing the multi-level method efficiently to estimate a single system statistic. However, it is clearly also of interest to be able to approximate entire probability distributions of species counts. We present two novel methods that combine known techniques for distribution reconstruction with the multi-level method. We demonstrate the potential of our methods using a number of examples.

Highlights

  • Biochemical reaction networks describe interactions between the molecular populations of biological and physiological systems

  • Biochemical reaction networks are often modelled using discrete-state, continuoustime Markov chains. System statistics of these Markov chains usually cannot be calculated analytically and estimates must be generated via simulation techniques

  • There is a well documented class of simulation techniques known as exact stochastic simulation algorithms, an example of which is Gillespie’s direct method

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Summary

INTRODUCTION

Biochemical reaction networks describe interactions between the molecular populations of biological and physiological systems. A classical deterministic approach to modelling these networks is to use systems of ordinary or partial differential equations to describe the evolution of the concentrations of each species Experimental researchers, such as Elowitz et al.,[2] have shown that stochasticity can be observed in a variety of biological phenomena including gene expression within the cell. We combine these two approximation methods with the multi-level method.

MODELLING AND SIMULATING BIOCHEMICAL REACTION NETWORKS
Gillespie’s direct method
The tau-leap method
The multi-level Monte Carlo method
Using a maximum entropy approach
A dimerisation model
Using an indicator function approach
The Schlögl model
DISCUSSION
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