Abstract

BackgroundChemical reaction networks provide an abstraction scheme for a broad range of models in biology and ecology. The two common means for simulating these networks are the deterministic and the stochastic approaches. The traditional deterministic approach, based on differential equations, enjoys a rich set of analysis techniques, including a treatment of reaction fluxes. However, the discrete stochastic simulations, which provide advantages in some cases, lack a quantitative treatment of network fluxes.ResultsWe describe a method for flux analysis of chemical reaction networks, where flux is given by the flow of species between reactions in stochastic simulations of the network. Extending discrete event simulation algorithms, our method constructs several data structures, and thereby reveals a variety of statistics about resource creation and consumption during the simulation. We use these structures to quantify the causal interdependence and relative importance of the reactions at arbitrary time intervals with respect to the network fluxes. This allows us to construct reduced networks that have the same flux-behavior, and compare these networks, also with respect to their time series. We demonstrate our approach on an extended example based on a published ODE model of the same network, that is, Rho GTP-binding proteins, and on other models from biology and ecology.ConclusionsWe provide a fully stochastic treatment of flux analysis. As in deterministic analysis, our method delivers the network behavior in terms of species transformations. Moreover, our stochastic analysis can be applied, not only at steady state, but at arbitrary time intervals, and used to identify the flow of specific species between specific reactions. Our cases study of Rho GTP-binding proteins reveals the role played by the cyclic reverse fluxes in tuning the behavior of this network.

Highlights

  • Chemical reaction networks provide an abstraction scheme for a broad range of models in biology and ecology

  • We present a method for flux analysis in stochastic simulations with reaction networks, where flux is the flow of resources between reactions of the network

  • We illustrate our method on example networks of models from biology and ecology

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Summary

Introduction

Chemical reaction networks provide an abstraction scheme for a broad range of models in biology and ecology. The traditional deterministic approach, based on differential equations, enjoys a rich set of analysis techniques, including a treatment of reaction fluxes. Some individual-based models enjoy compact representations in the form of chemical reaction networks. Examples of these include Lotka-Volterra predator-prey systems [1,2]a and plant-pollinator systems [3]. Various implementations of stochastic Petri nets (see, e.g., [6]), which are isomorphic to chemical reaction networks, provide a straight-forward means for this. Flux analysis on chemical reaction networks with differential equation representations are well established. There is a growing number of studies on flux analysis that include issues related to simplification of models [7], while a stochastic treatment of flux is still lacking

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