Rule-based Computational Modeling of Modular Signaling Protein Interactions

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Date

2008-11-16

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Abstract

Intracellular signal transduction pathways are comprised of complex interactions among cellular proteins and other biomolecules. The structures of signaling proteins/enzymes are often modular, with conserved domains that carry out specific interactions or catalytic functions, and their core activities are dictated through coordinated intra- and inter-molecular interactions. In collaboration with Prof. James Faeder (Computational Biology, University of Pittsburgh), we have applied a computational algorithm for generating large networks of kinetic equations based on a much smaller set of mechanistic rules. Using this rule-based approach, we have formulated kinetic models that account for the modular domain structure of specific signaling proteins, including Shp2 (Src homology-2 domain containing protein tyrosine phosphatase 2), PI3K (phosphatidilinositol-3-kinase) regulatory subunit, and SH2-B (a Jak2 kinase activating adaptor protein). Analysis of these models reveals the combinatorial possibilities of reactions and interactions that might occur in living cells. We propose here to extend this rule-based approach for larger pathway models through systematic reduction and integration of small subsystem models.

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Keywords

BioNetGen, Cell Signal Transduction, SH2-B, Shp2, Protein domain, PI3K, Rule-based model

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Degree

PhD

Discipline

Chemical Engineering

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