Abstract
BackgroundThe understanding of regulatory and signaling networks has long been a core objective in Systems Biology. Knowledge about these networks is mainly of qualitative nature, which allows the construction of Boolean models, where the state of a component is either 'off' or 'on'. While often able to capture the essential behavior of a network, these models can never reproduce detailed time courses of concentration levels.Nowadays however, experiments yield more and more quantitative data. An obvious question therefore is how qualitative models can be used to explain and predict the outcome of these experiments.ResultsIn this contribution we present a canonical way of transforming Boolean into continuous models, where the use of multivariate polynomial interpolation allows transformation of logic operations into a system of ordinary differential equations (ODE). The method is standardized and can readily be applied to large networks. Other, more limited approaches to this task are briefly reviewed and compared. Moreover, we discuss and generalize existing theoretical results on the relation between Boolean and continuous models. As a test case a logical model is transformed into an extensive continuous ODE model describing the activation of T-cells. We discuss how parameters for this model can be determined such that quantitative experimental results are explained and predicted, including time-courses for multiple ligand concentrations and binding affinities of different ligands. This shows that from the continuous model we may obtain biological insights not evident from the discrete one.ConclusionThe presented approach will facilitate the interaction between modeling and experiments. Moreover, it provides a straightforward way to apply quantitative analysis methods to qualitatively described systems.
Highlights
The understanding of regulatory and signaling networks has long been a core objective in Systems Biology
In this contribution we present a canonical way of transforming Boolean into continuous models, where the use of multivariate polynomial interpolation allows transformation of logic operations into a system of ordinary differential equations (ODE)
We showed that a continuous model inferred from a Boolean model is able to reproduce experimental data in a quantitative way
Summary
The understanding of regulatory and signaling networks has long been a core objective in Systems Biology Knowledge about these networks is mainly of qualitative nature, which allows the construction of Boolean models, where the state of a component is either ‘off’ or ‘on’. Large-scale models of regulatory or signaling networks are often so-called Boolean models [1] These models can be seen as the mathematically rigorous representation of qualitative biological knowledge. Boolean models can neither describe continuous concentration levels nor realistic time scales For this reason, they cannot be used to explain and predict the outcome of biological experiments that yield quantitative data. With increasing emphasis on these quantitative experiments the need for precisely this kind of model arises In this contribution, we present and exemplify a practicable solution to this problem: a standardized method for accurately converting any Boolean model into a continuous model. The results of these experiments, in turn, help to refine the model
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