Background: The modeling of Biological Regulatory Networks (BRNs) relies on background knowledge, deriving either from literature and/or the analysis of biological observations. However, with the development of high-throughput data, there is a growing need for methods that automatically generate admissible models. Methods: Our research aim is to provide a logical approach to infer BRNs based on given time series data and known influences among genes. Results: We propose a new methodology for models expressed through a timed extension of the automata networks (well suited for biological systems). The main purpose is to have a resulting network as consistent as possible with the observed datasets. Conclusion: The originality of our work is th...
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...
Background: The modeling of Biological Regulatory Networks (BRNs) relies on background knowledge, de...
International audienceThe modeling of Biological Regulatory Networks (BRNs) relies on background kno...
Abstract. In this article, we propose a refinement of the modeling of genetic regulatory networks ba...
Over the last few decades, the emergence of a wide range of new technologies has produced a massive ...
Abstract. Based on the logical description of gene regulatory networks developed by R. Thomas, we in...
This chapter presents a survey of recent methods for reconstruction of time-varying biological netwo...
International audienceBoolean networks are widely used model to represent gene interactions and glob...
Background: Gene regulatory network (GRN) is a fundamental topic in systems biology. The dynamics of...
Background: Gene regulatory network (GRN) is a fundamental topic in systems biology. The dynamics of...
Background: Gene regulatory network (GRN) is a fundamental topic in systems biology. The dynamics of...
Dynamic gene-regulatory networks are complex since the interaction patterns between their components...
Abstract Background The modeling of genetic interactions within a cell is crucial for a basic unders...
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...
Background: The modeling of Biological Regulatory Networks (BRNs) relies on background knowledge, de...
International audienceThe modeling of Biological Regulatory Networks (BRNs) relies on background kno...
Abstract. In this article, we propose a refinement of the modeling of genetic regulatory networks ba...
Over the last few decades, the emergence of a wide range of new technologies has produced a massive ...
Abstract. Based on the logical description of gene regulatory networks developed by R. Thomas, we in...
This chapter presents a survey of recent methods for reconstruction of time-varying biological netwo...
International audienceBoolean networks are widely used model to represent gene interactions and glob...
Background: Gene regulatory network (GRN) is a fundamental topic in systems biology. The dynamics of...
Background: Gene regulatory network (GRN) is a fundamental topic in systems biology. The dynamics of...
Background: Gene regulatory network (GRN) is a fundamental topic in systems biology. The dynamics of...
Dynamic gene-regulatory networks are complex since the interaction patterns between their components...
Abstract Background The modeling of genetic interactions within a cell is crucial for a basic unders...
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...