In this paper, we explore the impact of different forms of model abstraction and the role of discreteness on the dynamical behaviour of a simple model of gene regulation where a transcriptional repressor negatively regulates its own expression. We first investigate the relation between a minimal set of parameters and the system dynamics in a purely discrete stochastic framework, with the twofold purpose of providing an intuitive explanation of the different behavioural patterns exhibited and of identifying the main sources of noise. Then, we explore the effect of combining hybrid approaches and quasi-steady state approximations on model behaviour (and simulation time), to understand to what extent dynamics and quantitative features s...
Gene expression is subject to stochastic variation which leads to fluctuations in the rate of protei...
Abstract Gene networks arise due to the interaction of genes through their protein products. Modelin...
Gene expression is subject to stochastic variation which leads to fluctuations in the rate of protei...
In this paper, we explore the impact of different forms of model abstraction and the role of discret...
In this paper, we explore the impact of different forms of model abstraction and the role of discret...
Modeling stochasticity in gene regulatory networks is an important and complex problem in molecular ...
AbstractTranscriptional regulation is an inherently noisy process. The origins of this stochastic be...
We compare a hierarchy of three stochastic models in gene regulation. In each case, genes produce mR...
Molecular noise in gene regulatory networks has two intrinsic components, one part being due to fluc...
This manuscript presents a comparison of noise properties exhibited by two stochastic binary models ...
14 pages, 12 figures. Conferences: "2010 Annual Meeting of The Society of Mathematical Biology", Rio...
14 pages, 12 figures. Conferences: "2010 Annual Meeting of The Society of Mathematical Biology", Rio...
14 pages, 12 figures. Conferences: "2010 Annual Meeting of The Society of Mathematical Biology", Rio...
AbstractIt has often been taken for granted that negative feedback loops in gene regulation work as ...
Gene expression is subject to stochastic variation which leads to fluctuations in the rate of protei...
Gene expression is subject to stochastic variation which leads to fluctuations in the rate of protei...
Abstract Gene networks arise due to the interaction of genes through their protein products. Modelin...
Gene expression is subject to stochastic variation which leads to fluctuations in the rate of protei...
In this paper, we explore the impact of different forms of model abstraction and the role of discret...
In this paper, we explore the impact of different forms of model abstraction and the role of discret...
Modeling stochasticity in gene regulatory networks is an important and complex problem in molecular ...
AbstractTranscriptional regulation is an inherently noisy process. The origins of this stochastic be...
We compare a hierarchy of three stochastic models in gene regulation. In each case, genes produce mR...
Molecular noise in gene regulatory networks has two intrinsic components, one part being due to fluc...
This manuscript presents a comparison of noise properties exhibited by two stochastic binary models ...
14 pages, 12 figures. Conferences: "2010 Annual Meeting of The Society of Mathematical Biology", Rio...
14 pages, 12 figures. Conferences: "2010 Annual Meeting of The Society of Mathematical Biology", Rio...
14 pages, 12 figures. Conferences: "2010 Annual Meeting of The Society of Mathematical Biology", Rio...
AbstractIt has often been taken for granted that negative feedback loops in gene regulation work as ...
Gene expression is subject to stochastic variation which leads to fluctuations in the rate of protei...
Gene expression is subject to stochastic variation which leads to fluctuations in the rate of protei...
Abstract Gene networks arise due to the interaction of genes through their protein products. Modelin...
Gene expression is subject to stochastic variation which leads to fluctuations in the rate of protei...