Abstract

As technological advances allow a better identification of cellular networks, large-scale molecular data are swiftly produced, allowing the construction of large and detailed molecular interaction maps. One approach to unravel the dynamical properties of such complex systems consists in deriving coarse-grained dynamical models from these maps, which would make the salient properties emerge. We present here a method to automatically derive such models, relying on the abstract interpretation framework to formally relate model behaviour at different levels of description. We illustrate our approach on two relevant case studies: the formation of a complex involving a protein adaptor, and a race between two competing biochemical reactions. States and traces of reaction networks are first abstracted by sampling the number of instances of chemical species within a finite set of intervals. We show that the qualitative models induced by this abstraction are too coarse to reproduce properties of interest. We then refine our approach by taking into account additional constraints, the mass invariants and the limiting resources for interval crossing, and by introducing information on the reaction kinetics. The resulting qualitative models are able to capture sophisticated properties of interest, such as a sequestration effect, which arise in the case studies and, more generally, participate in shaping the dynamics of cell signaling and regulatory networks. Our methodology offers new trade-offs between complexity and accuracy, and clarifies the implicit assumptions made in the process of qualitative modelling of biological networks.

Highlights

  • As technological advances allow a better identification of cellular networks, more and more molecular data are produced enabling the construction of de-IThis material is based upon works sponsored by the “Ecole normale superieure” (ENS) under an incitative action and by the Defense Advanced Research Projects Agency (DARPA) and the U

  • We have designed a formal framework to derive qualitative dynamical models from reaction networks, using the abstract interpretation framework to formally relate the behaviors of models seen at di↵erent levels of abstraction

  • The assumptions underlying our methodology are clearly established. This allows to properly reassess the assumptions made, but it provides flexibility in the modelling process, allowing the modeller to test di↵erent hypotheses and to integrate various sets of constraints, for example concerning the choice of mass preservation constraints kept in the framework, or regarding the assumptions made about time scale separation

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Summary

Introduction

As technological advances allow a better identification of cellular networks, more and more molecular data are produced enabling the construction of de-. Our motivation is twofold: we want to design an automatic tool to derive accurate coarse-grained discrete models from reaction networks, and we want to better understand the process of qualitative modelling and its underlying implicit assumptions To achieve these goals, we use abstract interpretation.

Case studies
Trace semantics
Derivation of a coarse-grained qualitative semantics
Refinements
Analysis refinement
Watching interval boundaries
Sep and thus that:
Reduced product
Application to the case studies
Modelling assumptions
The model with the adaptor
Conclusion
Cov and any set Y
Full Text
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