Evolutionary game theory for physical and biological scientists. I. Training and validating population dynamics equations
Author(s) -
David Liao,
Thea D. Tlsty
Publication year - 2014
Publication title -
interface focus
Language(s) - English
Resource type - Journals
SCImago Journal Rank - 1.1
H-Index - 49
eISSN - 2042-8901
pISSN - 2042-8898
DOI - 10.1098/rsfs.2014.0037
Subject(s) - computer science , evolutionary game theory , game theory , population , dynamics (music) , limiting , control (management) , management science , artificial intelligence , data science , mathematical economics , mathematics , psychology , medicine , mechanical engineering , engineering , economics , pedagogy , environmental health
Failure to understand evolutionary dynamics has been hypothesized as limiting our ability to control biological systems. An increasing awareness of similarities between macroscopic ecosystems and cellular tissues has inspired optimism that game theory will provide insights into the progression and control of cancer. To realize this potential, the ability to compare game theoretic models and experimental measurements of population dynamics should be broadly disseminated. In this tutorial, we present an analysis method that can be used to train parameters in game theoretic dynamics equations, used to validate the resulting equations, and used to make predictions to challenge these equations and to design treatment strategies. The data analysis techniques in this tutorial are adapted from the analysis of reaction kinetics using the method of initial rates taught in undergraduate general chemistry courses. Reliance on computer programming is avoided to encourage the adoption of these methods as routine bench activities.
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