Hybrid Master Equation for Jump-Diffusion Approximation of Biomolecular Reaction Networks
Cellular reactions have multi-scale nature in the sense that the abundance of molecular species and the magnitude of reaction rates can vary in a wide range. This diversity leads to hybrid models that combine deterministic and stochastic modeling approaches. To reveal this multi-scale nature, we pro...
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Zusammenfassung: | Cellular reactions have multi-scale nature in the sense that the abundance of
molecular species and the magnitude of reaction rates can vary in a wide range.
This diversity leads to hybrid models that combine deterministic and stochastic
modeling approaches. To reveal this multi-scale nature, we proposed
jump-diffusion approximation in a previous study. The key idea behind the model
was to partition reactions into fast and slow groups, and then to combine
Markov chain updating scheme for the slow set with diffusion (Langevin)
approach updating scheme for the fast set. Then, the state vector of the model
was defined as the summation of the random time change model and the solution
of the Langevin equation. In this study, we have proved that the joint
probability density function of the jump-diffusion approximation over the
reaction counting process satisfies the hybrid master equation, which is the
summation of the chemical master equation and the Fokker-Planck equation. To
solve the hybrid master equation, we propose an algorithm using the moments of
reaction counters of fast reactions given the reaction counters of slow
reactions. Then, we solve a constrained optimization problem for each
conditional probability density at the time point of interest utilizing the
maximum entropy approach. Based on the multiplication rule for joint
probability density functions, we construct the solution of the hybrid master
equation. To show the efficiency of the method, we implement it to a canonical
model of gene regulation. |
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DOI: | 10.48550/arxiv.1809.01210 |