TITLE:
Reducing Stochastic Discrete Models of Biochemical Networks
AUTHORS:
Samaneh Gholami, Silvana Ilie
KEYWORDS:
Stochastic Simulation Algorithm, Stochastic Biochemical Kinetics, Sensitivity Analysis, Model Reduction Methods
JOURNAL NAME:
Applied Mathematics,
Vol.12 No.5,
May
31,
2021
ABSTRACT: Biochemical systems have numerous practical applications, in particular to the study of critical intracellular processes. Frequently, biochemical kinetic models depict cellular processes as systems of chemical reactions. Many biological processes in a cell are inherently stochastic, due to the existence of some low molecular amounts. These stochastic fluctuations may have a great effect on the biochemical system’s behaviour. In such cases, stochastic models are necessary to accurately describe the system’s dynamics. Biochemical systems at the cellular level may entail many species or reactions and their mathematical models may be non-linear and with multiple scales in time. In this work, we provide a numerical technique for simplifying stochastic discrete models of well-stirred biochemical systems, which ensures that the main properties of the original system are preserved. The proposed technique employs sensitivity analysis and requires solving an optimization problem. The numerical tests on several models of practical interest show that our model reduction strategy performs very well.