<div><p>It is widely accepted that gene expression regulation is a stochastic event. The common approach for its computer simulation requires detailed information on the interactions of individual molecules, which is often not available for the analyses of biological experiments. As an alternative approach, we employed a more intuitive model to simulate the experimental result, the Markov-chain model, in which a gene is regulated by activators and repressors, which bind the same site in a mutually exclusive manner. Our stochastic simulation in the presence of both activators and repressors predicted a Hill-coefficient of the dose-response curve closer to the experimentally observed value than the calculated value based on the simple additiv...
The activation of genes is one of the most prominent yet most stochastic processes in the cell. Gene...
Motivation: Stochastic promoter switching between transcriptionally active (ON) and inactive (OFF) s...
<p>(A) Gene On/Off states; (B) mRNA numbers; (C) protein numbers. Two simulations when the lengths o...
It is widely accepted that gene expression regulation is a stochastic event. The common approach for...
Intrinsic stochasticity plays an essential role in gene regulation because of the small number of in...
AbstractDeterministic thermodynamic models of the complex systems, which control gene expression in ...
The transcription factors, such as activators and repressors, can interact with the promoter of gene...
Motivation: Regulatory gene networks contain generic modules such as feedback loops that are essenti...
Over the past few years, it has been increasingly recognized that stochastic mechanisms play a key r...
Cells are governed by complex and multi-layered gene regulatory networks, which orchestrate the deve...
International audienceThe recent development of single-cell transcriptomics has enabled gene express...
Stochasticity (that is, randomness) is an inherent property of many biological systems. For example,...
International audienceThe stochastic nature of gene expression has been widely demonstrated over the...
Motivation: Identification of regulatory networks is typically based on deterministic models of gene...
We present an algorithm for the stochastic simulation of gene expression and heterogeneous populatio...
The activation of genes is one of the most prominent yet most stochastic processes in the cell. Gene...
Motivation: Stochastic promoter switching between transcriptionally active (ON) and inactive (OFF) s...
<p>(A) Gene On/Off states; (B) mRNA numbers; (C) protein numbers. Two simulations when the lengths o...
It is widely accepted that gene expression regulation is a stochastic event. The common approach for...
Intrinsic stochasticity plays an essential role in gene regulation because of the small number of in...
AbstractDeterministic thermodynamic models of the complex systems, which control gene expression in ...
The transcription factors, such as activators and repressors, can interact with the promoter of gene...
Motivation: Regulatory gene networks contain generic modules such as feedback loops that are essenti...
Over the past few years, it has been increasingly recognized that stochastic mechanisms play a key r...
Cells are governed by complex and multi-layered gene regulatory networks, which orchestrate the deve...
International audienceThe recent development of single-cell transcriptomics has enabled gene express...
Stochasticity (that is, randomness) is an inherent property of many biological systems. For example,...
International audienceThe stochastic nature of gene expression has been widely demonstrated over the...
Motivation: Identification of regulatory networks is typically based on deterministic models of gene...
We present an algorithm for the stochastic simulation of gene expression and heterogeneous populatio...
The activation of genes is one of the most prominent yet most stochastic processes in the cell. Gene...
Motivation: Stochastic promoter switching between transcriptionally active (ON) and inactive (OFF) s...
<p>(A) Gene On/Off states; (B) mRNA numbers; (C) protein numbers. Two simulations when the lengths o...