Modern experimental techniques for time-course measurement of gene expression enable the identification of dynamical models of genetic regulatory networks. In general, identification involves fitting appropriate network structures and parameters to the data. For a given set of genes, exploring all possible network structures is clearly prohibitive. Modelling and identification methods for the a priori selection of network structures compatible with biological knowledge and experimental data are necessary to make the identification problem tractable. We propose a differential equation modelling framework where the regulatory interactions among genes are expressed in terms of unate functions, a class of gene activation rules common...
Motivation: Identification of regulatory networks is typically based on deterministic models of gene...
We present a method for the structural identification of genetic regulatory networks (GRNs), based o...
We discuss the identification of genetic networks based on a class of boolean gene activation rules ...
Motivation: Modern experimental techniques for time-course measurement of gene expression enable the...
International audienceWe consider the problem of learning dynamical models of genetic regulatory net...
Abstract Currently, several different types of models are stud-In this paper, the regulatory interac...
BackgroundReverse engineering gene networks and identifying regulatory interactions are integral to ...
In this paper we consider piecewise affine models of genetic regulatory networks proposed by Glass a...
Abstract Background A widely used approach to reconstruct regulatory networks from time-series data ...
This chapter presents a survey of recent methods for reconstruction of time-varying biological netwo...
<div><p>One great challenge of genomic research is to efficiently and accurately identify complex ge...
Mathematical modelling opens the door to a rich pathway to study the dynamic properties of biologica...
Identification of the regulatory structures in genetic networks and the formulation of mechanistic m...
One great challenge of genomic research is to efficiently and accurately identify complex gene regul...
Background\ud Reverse engineering gene networks and identifying regulatory interactions are integral...
Motivation: Identification of regulatory networks is typically based on deterministic models of gene...
We present a method for the structural identification of genetic regulatory networks (GRNs), based o...
We discuss the identification of genetic networks based on a class of boolean gene activation rules ...
Motivation: Modern experimental techniques for time-course measurement of gene expression enable the...
International audienceWe consider the problem of learning dynamical models of genetic regulatory net...
Abstract Currently, several different types of models are stud-In this paper, the regulatory interac...
BackgroundReverse engineering gene networks and identifying regulatory interactions are integral to ...
In this paper we consider piecewise affine models of genetic regulatory networks proposed by Glass a...
Abstract Background A widely used approach to reconstruct regulatory networks from time-series data ...
This chapter presents a survey of recent methods for reconstruction of time-varying biological netwo...
<div><p>One great challenge of genomic research is to efficiently and accurately identify complex ge...
Mathematical modelling opens the door to a rich pathway to study the dynamic properties of biologica...
Identification of the regulatory structures in genetic networks and the formulation of mechanistic m...
One great challenge of genomic research is to efficiently and accurately identify complex gene regul...
Background\ud Reverse engineering gene networks and identifying regulatory interactions are integral...
Motivation: Identification of regulatory networks is typically based on deterministic models of gene...
We present a method for the structural identification of genetic regulatory networks (GRNs), based o...
We discuss the identification of genetic networks based on a class of boolean gene activation rules ...