International audienceBACKGROUND: Biological networks are highly dynamic in response to environmental and physiological cues. This variability is in contrast to conventional analyses of biological networks, which have overwhelmingly employed static graph models which stay constant over time to describe biological systems and their underlying molecular interactions. METHODS: To overcome these limitations, we propose here a new statistical modelling framework, the ARTIVA formalism (Auto Regressive TIme VArying models), and an associated inferential procedure that allows us to learn temporally varying gene-regulation networks from biological time-course expression data. ARTIVA simultaneously infers the topology of a regulatory network and how ...
Most existing methods used for gene regulatory network modeling are dedicated to inference of steady...
Motivation: Gene regulatory networks underlying temporal processes, such as the cell cycle or the li...
Dynamic modeling of regulatory networks that control gene expression requires temporal information o...
International audienceBACKGROUND: Biological networks are highly dynamic in response to environmenta...
BACKGROUND: Biological networks are highly dynamic in response to environmental and physiological cu...
International audienceBACKGROUND: Biological networks are highly dynamic in response to environmenta...
International audienceBACKGROUND: Biological networks are highly dynamic in response to environmenta...
Statistical inference of the time-varying structure of gene-regulation networks Sophie Lèbre1,2, Jen...
The inference of regulatory and biochemical networks from large-scale genomics data is a basic probl...
Most biological systems consist of several subcomponents which interact with each other. These inter...
This chapter presents a survey of recent methods for reconstruction of time-varying biological netwo...
Background: The modeling of Biological Regulatory Networks (BRNs) relies on background knowledge, de...
Background: The modeling of Biological Regulatory Networks (BRNs) relies on background knowledge, de...
The problem of modeling the dynamical regulation process within a gene network has been of great int...
International audienceBackgroundInference of gene regulatory networks from gene expression data has ...
Most existing methods used for gene regulatory network modeling are dedicated to inference of steady...
Motivation: Gene regulatory networks underlying temporal processes, such as the cell cycle or the li...
Dynamic modeling of regulatory networks that control gene expression requires temporal information o...
International audienceBACKGROUND: Biological networks are highly dynamic in response to environmenta...
BACKGROUND: Biological networks are highly dynamic in response to environmental and physiological cu...
International audienceBACKGROUND: Biological networks are highly dynamic in response to environmenta...
International audienceBACKGROUND: Biological networks are highly dynamic in response to environmenta...
Statistical inference of the time-varying structure of gene-regulation networks Sophie Lèbre1,2, Jen...
The inference of regulatory and biochemical networks from large-scale genomics data is a basic probl...
Most biological systems consist of several subcomponents which interact with each other. These inter...
This chapter presents a survey of recent methods for reconstruction of time-varying biological netwo...
Background: The modeling of Biological Regulatory Networks (BRNs) relies on background knowledge, de...
Background: The modeling of Biological Regulatory Networks (BRNs) relies on background knowledge, de...
The problem of modeling the dynamical regulation process within a gene network has been of great int...
International audienceBackgroundInference of gene regulatory networks from gene expression data has ...
Most existing methods used for gene regulatory network modeling are dedicated to inference of steady...
Motivation: Gene regulatory networks underlying temporal processes, such as the cell cycle or the li...
Dynamic modeling of regulatory networks that control gene expression requires temporal information o...