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Exact model reduction of combinatorial reaction networks.


ABSTRACT: BACKGROUND: Receptors and scaffold proteins usually possess a high number of distinct binding domains inducing the formation of large multiprotein signaling complexes. Due to combinatorial reasons the number of distinguishable species grows exponentially with the number of binding domains and can easily reach several millions. Even by including only a limited number of components and binding domains the resulting models are very large and hardly manageable. A novel model reduction technique allows the significant reduction and modularization of these models. RESULTS: We introduce methods that extend and complete the already introduced approach. For instance, we provide techniques to handle the formation of multi-scaffold complexes as well as receptor dimerization. Furthermore, we discuss a new modeling approach that allows the direct generation of exactly reduced model structures. The developed methods are used to reduce a model of EGF and insulin receptor crosstalk comprising 5,182 ordinary differential equations (ODEs) to a model with 87 ODEs. CONCLUSION: The methods, presented in this contribution, significantly enhance the available methods to exactly reduce models of combinatorial reaction networks.

SUBMITTER: Conzelmann H 

PROVIDER: S-EPMC2570670 | biostudies-literature | 2008

REPOSITORIES: biostudies-literature

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Exact model reduction of combinatorial reaction networks.

Conzelmann Holger H   Fey Dirk D   Fey Dirk D   Gilles Ernst D ED  

BMC systems biology 20080828


<h4>Background</h4>Receptors and scaffold proteins usually possess a high number of distinct binding domains inducing the formation of large multiprotein signaling complexes. Due to combinatorial reasons the number of distinguishable species grows exponentially with the number of binding domains and can easily reach several millions. Even by including only a limited number of components and binding domains the resulting models are very large and hardly manageable. A novel model reduction techniq  ...[more]

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