International audienceWe address state estimation for gene regulatory networks at the level of single cells. We consider models that include both intrinsic noise, in terms of stochastic dynamics, and extrinsic noise, in terms of random parameter values. We take the Chemical Master Equation (CME) with random parameters as a reference modeling approach, and investigate the use of stochastic differential model approximations for the construction of practical real-time filters. To this aim we consider a Square-Root Unscented Kalman Filter (SRUKF) built on a Chemical Langevin Equation (CLE) approximation of the CME. Using arabinose uptake regulation in Escherichia coli bacteria as a case study, we show that performance is comparable to that of a...
International audienceUnderstanding and characterising biochemical processes inside single cells req...
National audienceIdentifying biological networks requires to develop first, models able to capture t...
It is common when modelling biochemical networks to use qualitative information such as the general ...
International audienceWe address state estimation for gene regulatory networks at the level of singl...
estimation for gene networks with intrinsic and extrinsic noise: A case study on E.coli arabinose up...
Gene networks in biological systems are highly com-plicated because of their nonlinear and stochasti...
In this article, the state estimation problem is investigated for genetic regulatory networks (GRNs)...
Recent advances in high-throughput technologies for biological data acquisition have spurred a broad...
Living systems are inherently stochastic and operate in a noisy environment: in single cells, react...
Recent advances in high-throughput technologies for biological data acquisition have spurred a broad...
It is well known that the kinetics of an intracellular biochemical network is stochastic. This is du...
Stochasticity is well recognized to be of crucial importance in the analysis of gene regulatory prob...
Abstract — In order to capture important subcellular dy-namics, researchers in computational biology...
Motivation: In the noisy cellular environment, stochastic fluctuations at the molecular level manife...
Abstract This work predominantly labels the problem of approximation of state variables for discrete...
International audienceUnderstanding and characterising biochemical processes inside single cells req...
National audienceIdentifying biological networks requires to develop first, models able to capture t...
It is common when modelling biochemical networks to use qualitative information such as the general ...
International audienceWe address state estimation for gene regulatory networks at the level of singl...
estimation for gene networks with intrinsic and extrinsic noise: A case study on E.coli arabinose up...
Gene networks in biological systems are highly com-plicated because of their nonlinear and stochasti...
In this article, the state estimation problem is investigated for genetic regulatory networks (GRNs)...
Recent advances in high-throughput technologies for biological data acquisition have spurred a broad...
Living systems are inherently stochastic and operate in a noisy environment: in single cells, react...
Recent advances in high-throughput technologies for biological data acquisition have spurred a broad...
It is well known that the kinetics of an intracellular biochemical network is stochastic. This is du...
Stochasticity is well recognized to be of crucial importance in the analysis of gene regulatory prob...
Abstract — In order to capture important subcellular dy-namics, researchers in computational biology...
Motivation: In the noisy cellular environment, stochastic fluctuations at the molecular level manife...
Abstract This work predominantly labels the problem of approximation of state variables for discrete...
International audienceUnderstanding and characterising biochemical processes inside single cells req...
National audienceIdentifying biological networks requires to develop first, models able to capture t...
It is common when modelling biochemical networks to use qualitative information such as the general ...