Abstract

BackgroundWithin cells, stimuli are transduced into cell responses by complex networks of biochemical reactions. In many cell decision processes the underlying networks behave as bistable switches, converting graded stimuli or inputs into all or none cell responses. Observing how systems respond to different perturbations, insight can be gained into the underlying molecular mechanisms by developing mathematical models. Emergent properties of systems, like bistability, can be exploited to this purpose. One of the main challenges in modeling intracellular processes, from signaling pathways to gene regulatory networks, is to deal with high structural and parametric uncertainty, due to the complexity of the systems and the difficulty to obtain experimental measurements. Formal methods that exploit structural properties of networks for parameter estimation can help to overcome these problems.ResultsWe here propose a novel method to infer the kinetic parameters of bistable biochemical network models. Bistable systems typically show hysteretic dose response curves, in which the so called bifurcation points can be located experimentally. We exploit the fact that, at the bifurcation points, a condition for multistationarity derived in the context of the Chemical Reaction Network Theory must be fulfilled. Chemical Reaction Network Theory has attracted attention from the (systems) biology community since it connects the structure of biochemical reaction networks to qualitative properties of the corresponding model of ordinary differential equations. The inverse bifurcation method developed here allows determining the parameters that produce the expected behavior of the dose response curves and, in particular, the observed location of the bifurcation points given by experimental data.ConclusionsOur inverse bifurcation method exploits inherent structural properties of bistable switches in order to estimate kinetic parameters of bistable biochemical networks, opening a promising route for developments in Chemical Reaction Network Theory towards kinetic model identification.Electronic supplementary materialThe online version of this article (doi:10.1186/s12918-014-0114-2) contains supplementary material, which is available to authorized users.

Highlights

  • Within cells, stimuli are transduced into cell responses by complex networks of biochemical reactions

  • Some of these results are central to the Chemical Reaction Network Theory (CRNT) [8,9], which has received in the recent years a considerable amount of attention from the biology community [10]

  • We consider biochemical reaction networks with mass action kinetics where the dynamics are modeled by systems of ordinary differential equations (ODEs)

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Summary

Introduction

Stimuli are transduced into cell responses by complex networks of biochemical reactions. In the context of systems biology, modeling is used to drive the acquisition of knowledge about the molecular mechanisms governing intracellular processes by evaluating the system’s behavior. In this way, measuring how the levels of some key species in the network evolve, for example, upon environmental perturbations, may help. Depending on the initial and environmental conditions the system will evolve towards one steady state or the other This property enables the cell to take decisions, by transforming, for example, graded stimuli into all or none responses. There are a number of results connecting particular structural features with the absence or presence of bistability in biochemical reaction networks. Some of these results are central to the Chemical Reaction Network Theory (CRNT) [8,9], which has received in the recent years a considerable amount of attention from the (systems) biology community [10]

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