We developed a new formulation and derived a set of equations for two-time correlation functions in discrete state space for general Markov chains. Numerical solutions of these equations lead to exact results of correlation functions, which is more efficient and accurate for complex systems than normal Gillespie simulations. The formalism is applied to two simple systems as examples: a two state system and self-regulators with results compared with Monte Carlo simulations and mean-field theory. For self-regulators, from non-adiabatic to adiabatic regimes, we observed both monotonic and turnover kinetic behavior of response time, which can be can tested by experiments. (C) 2010 Elsevier B.V. All rights reserved
We discuss piecewise-deterministic approximations of gene networks dynamics. These approximations ca...
A method is presented for the systematic derivation of a hierarchy of coupled equations for the comp...
<p>We discuss piecewise-deterministic approximations of gene networks dynamics. These approximations...
For general Markov chains, especially non-equilibrium biological systems, we proposed a new formalis...
Regulatory gene networks contain generic modules, like those involving feedback loops, which are ess...
BackgroundGene regulatory networks with dynamics characterized by multiple stable states underlie ce...
We analyze a hierarchy of three regimes for modeling gene regulation. The most complete model is a c...
We study a stochastic lattice model describing the dynamics of coexistence of two interacting biolog...
In this paper we present the concept of description of random processes in complex systems with disc...
Most existing methods used for gene regulatory network modeling are dedicated to inference of steady...
We developed a new method for quantifying the paths and the associated weights for complex systems i...
A stochastic genetic toggle switch model that consists of two identical, mutually repressive genes i...
We study the stochastic dynamics of a system of interacting species in a stochastic environment by m...
Phenotypical variability in the absence of genetic variation often reflects complex energetic landsc...
A theory of systems with long-range correlations based on the consideration of binary N-step Markov ...
We discuss piecewise-deterministic approximations of gene networks dynamics. These approximations ca...
A method is presented for the systematic derivation of a hierarchy of coupled equations for the comp...
<p>We discuss piecewise-deterministic approximations of gene networks dynamics. These approximations...
For general Markov chains, especially non-equilibrium biological systems, we proposed a new formalis...
Regulatory gene networks contain generic modules, like those involving feedback loops, which are ess...
BackgroundGene regulatory networks with dynamics characterized by multiple stable states underlie ce...
We analyze a hierarchy of three regimes for modeling gene regulation. The most complete model is a c...
We study a stochastic lattice model describing the dynamics of coexistence of two interacting biolog...
In this paper we present the concept of description of random processes in complex systems with disc...
Most existing methods used for gene regulatory network modeling are dedicated to inference of steady...
We developed a new method for quantifying the paths and the associated weights for complex systems i...
A stochastic genetic toggle switch model that consists of two identical, mutually repressive genes i...
We study the stochastic dynamics of a system of interacting species in a stochastic environment by m...
Phenotypical variability in the absence of genetic variation often reflects complex energetic landsc...
A theory of systems with long-range correlations based on the consideration of binary N-step Markov ...
We discuss piecewise-deterministic approximations of gene networks dynamics. These approximations ca...
A method is presented for the systematic derivation of a hierarchy of coupled equations for the comp...
<p>We discuss piecewise-deterministic approximations of gene networks dynamics. These approximations...