Chapter XX: Computational and Mathematical Modelling of the EGF Receptor System

This chapter gives an overview of computational models and simulations of the EGF receptor system. It begins with a survey of motivations for producing such models and then describes the main approaches that are taken to carrying out such modeling, with respect to differential equations and individual-based modeling. Finally, a number of projects that apply modeling and simulation techniques to various aspects of the EGF receptor system are described.

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