Differential networks allow us to better understand the changes in cellular processes that are exhibited in conditions of interest, identifying variations in gene regulation or protein interaction between, for example, cases and controls, or in response to external stimuli. Here we present a novel methodology for the inference of differential gene regulatory networks from gene expression microarray data. Specifically we apply a Bayesian model selection approach to compare models of conserved and varying network structure, and use Gaussian graphical models to represent the network structures. We apply a variational inference approach to the learning of Gaussian graphical models of gene regulatory networks, that enables us to perform Bayesian...
Through their transcript products genes regulate the rates at which an immense variety of transcript...
Introduction A central goal of molecular biology is to understand the regulatory interactions of ge...
One of the most important and challenging ``knowledge extraction' tasks in bioinformatics is the rev...
Differential networks allow us to better understand the changes in cellular processes that are exhib...
Differential equations have been established to model the dynamic behavior of gene regulatory networ...
Gene regulatory networks are a visual representation of genes and their interactions. In this visual...
Motivation: Bayesian networks have been applied to infer genetic regulatory interactions from microa...
Recent advances in high-throughput molecular biology has motivated in the field of bioinformatics th...
Motivation: There is currently much interest in reverse-engineering regulatory relationships between...
Gene regulatory networks are collections of genes that interact, whether directly or indirectly, wit...
Reconstruction of gene regulatory networks (GRNs) from experimental data is a fundamental challenge ...
Enabled by recent advances in bioinformatics, the inference of gene regulatory networks (GRNs) from ...
Background: In microarray data analysis, factors such as data quality, biological variation, and the...
Motivation: There is currently much interest in reverse-engineering regulatory relationships between...
Reconstruction of gene regulatory networks (GRNs) from experimental data is a fundamental challenge ...
Through their transcript products genes regulate the rates at which an immense variety of transcript...
Introduction A central goal of molecular biology is to understand the regulatory interactions of ge...
One of the most important and challenging ``knowledge extraction' tasks in bioinformatics is the rev...
Differential networks allow us to better understand the changes in cellular processes that are exhib...
Differential equations have been established to model the dynamic behavior of gene regulatory networ...
Gene regulatory networks are a visual representation of genes and their interactions. In this visual...
Motivation: Bayesian networks have been applied to infer genetic regulatory interactions from microa...
Recent advances in high-throughput molecular biology has motivated in the field of bioinformatics th...
Motivation: There is currently much interest in reverse-engineering regulatory relationships between...
Gene regulatory networks are collections of genes that interact, whether directly or indirectly, wit...
Reconstruction of gene regulatory networks (GRNs) from experimental data is a fundamental challenge ...
Enabled by recent advances in bioinformatics, the inference of gene regulatory networks (GRNs) from ...
Background: In microarray data analysis, factors such as data quality, biological variation, and the...
Motivation: There is currently much interest in reverse-engineering regulatory relationships between...
Reconstruction of gene regulatory networks (GRNs) from experimental data is a fundamental challenge ...
Through their transcript products genes regulate the rates at which an immense variety of transcript...
Introduction A central goal of molecular biology is to understand the regulatory interactions of ge...
One of the most important and challenging ``knowledge extraction' tasks in bioinformatics is the rev...