The problem of reconstructing large-scale, gene regulatory networks from gene expression data has garnered considerable attention in bioinformatics over the past decade with the graphical modeling paradigm having emerged as a popular framework for inference. Analysis in a full Bayesian setting is contingent upon the assignment of a so-called structure prior—a probability distribution on networks, encoding a priori biological knowledge either in the form of supplemental data or high-level topological features. A key topological consideration is that a wide range of cellular networks are approximately scale-free, meaning that the fraction, , of nodes in a network with degree is roughly described by a power-law with exponent between and . ...
<p>Gaussian graphical models represent the underlying graph structure of conditional dependence betw...
It is well known that incorporating prior knowledge improves gene regulatory network reconstruction ...
The use of biological networks such as protein–protein interaction and transcriptional regulatory ne...
The problem of reconstructing large-scale, gene regulatory networks from gene expression data has ga...
This paper concerns the specification, and performance, of scale-free prior distributions with a vie...
MOTIVATION: Identifying the network structure through which genes and their products interact can he...
BACKGROUND: Reconstructing gene regulatory networks (GRNs) from expression data is a challenging tas...
Regulatory network reconstruction is an ongoing field of research that biologists have been pressing...
Motivation: Genetic networks are often described statistically using graphical models (e.g. Bayesian...
Gene regulatory networks are a visual representation of genes and their interactions. In this visual...
Inferring regulatory networks from experimental data via probabilistic graphical models is a popular...
<div><p>Inferring regulatory networks from experimental data via probabilistic graphical models is a...
In this work, we propose approaches for the inference of graphical models in the Bayesian framework....
AbstractObjectiveModelling the associations from high-throughput experimental molecular data has pro...
AbstractThis paper introduces two new probabilistic graphical models for reconstruction of genetic r...
<p>Gaussian graphical models represent the underlying graph structure of conditional dependence betw...
It is well known that incorporating prior knowledge improves gene regulatory network reconstruction ...
The use of biological networks such as protein–protein interaction and transcriptional regulatory ne...
The problem of reconstructing large-scale, gene regulatory networks from gene expression data has ga...
This paper concerns the specification, and performance, of scale-free prior distributions with a vie...
MOTIVATION: Identifying the network structure through which genes and their products interact can he...
BACKGROUND: Reconstructing gene regulatory networks (GRNs) from expression data is a challenging tas...
Regulatory network reconstruction is an ongoing field of research that biologists have been pressing...
Motivation: Genetic networks are often described statistically using graphical models (e.g. Bayesian...
Gene regulatory networks are a visual representation of genes and their interactions. In this visual...
Inferring regulatory networks from experimental data via probabilistic graphical models is a popular...
<div><p>Inferring regulatory networks from experimental data via probabilistic graphical models is a...
In this work, we propose approaches for the inference of graphical models in the Bayesian framework....
AbstractObjectiveModelling the associations from high-throughput experimental molecular data has pro...
AbstractThis paper introduces two new probabilistic graphical models for reconstruction of genetic r...
<p>Gaussian graphical models represent the underlying graph structure of conditional dependence betw...
It is well known that incorporating prior knowledge improves gene regulatory network reconstruction ...
The use of biological networks such as protein–protein interaction and transcriptional regulatory ne...