Abstract Background A widely used approach to reconstruct regulatory networks from time-series data is based on the first-order, linear ordinary differential equations. This approach is justified if it is applied to system relaxations after weak perturbations. However, weak perturbations may not be informative enough to reveal network structures. Other approaches are based on specific models of gene regulation and therefore are of limited applicability. Findings We have developed a generalized approach for the reconstruction of regulatory networks from time-series data. This approach uses elements of control theory and the state-space formalism to approximate interactions between two observable nodes (e.g. measured genes). This leads to a r...
Dynamic gene-regulatory networks are complex since the interaction patterns between its components m...
We propose a local search approach for learning dynamic systems from time-series data, using network...
MOTIVATION: Conventional identification methods for gene regulatory networks (GRNs) have overwhelmin...
<div><p>Comprehensive understanding of gene regulatory networks (GRNs) is a major challenge in the f...
We present a method for gene network inference and revision based on time-series data. Gene networks...
Modern experimental techniques for time-course measurement of gene expression enable the identifica...
Dynamic gene-regulatory networks are complex since the interaction patterns between their components...
This chapter presents a survey of recent methods for reconstruction of time-varying biological netwo...
In the past years, many computational methods have been developed to infer the structure of gene reg...
Motivation: Conventional identification methods for gene regulatory networks (GRNs) have overwhelmin...
Network representations of biological systems are widespread and reconstructing unknown networks fro...
Network representations of biological systems are widespread and reconstructing unknown networks fro...
Background Linear regression models are important tools for learning regulatory networks from gene e...
Due to the limitations of available gene expression data, (i.e. noise and size of time series), mode...
<div><p>Network representations of biological systems are widespread and reconstructing unknown netw...
Dynamic gene-regulatory networks are complex since the interaction patterns between its components m...
We propose a local search approach for learning dynamic systems from time-series data, using network...
MOTIVATION: Conventional identification methods for gene regulatory networks (GRNs) have overwhelmin...
<div><p>Comprehensive understanding of gene regulatory networks (GRNs) is a major challenge in the f...
We present a method for gene network inference and revision based on time-series data. Gene networks...
Modern experimental techniques for time-course measurement of gene expression enable the identifica...
Dynamic gene-regulatory networks are complex since the interaction patterns between their components...
This chapter presents a survey of recent methods for reconstruction of time-varying biological netwo...
In the past years, many computational methods have been developed to infer the structure of gene reg...
Motivation: Conventional identification methods for gene regulatory networks (GRNs) have overwhelmin...
Network representations of biological systems are widespread and reconstructing unknown networks fro...
Network representations of biological systems are widespread and reconstructing unknown networks fro...
Background Linear regression models are important tools for learning regulatory networks from gene e...
Due to the limitations of available gene expression data, (i.e. noise and size of time series), mode...
<div><p>Network representations of biological systems are widespread and reconstructing unknown netw...
Dynamic gene-regulatory networks are complex since the interaction patterns between its components m...
We propose a local search approach for learning dynamic systems from time-series data, using network...
MOTIVATION: Conventional identification methods for gene regulatory networks (GRNs) have overwhelmin...