Recently, a Bayesian network model for inferring non-stationary regulatory processes from gene expression time series has been proposed. The Bayesian Gaussian Mixture (BGM) Bayesian network model divides the data into disjunct compartments (data subsets) by a free allocation model, and infers network structures, which are kept fixed for all compartments. Fixing the network structure allows for some information sharing among compartments, and each compartment is modelled separately and independently with the Gaussian BGe scoring metric for Bayesian networks. The BGM model can equally be applied to both static (steady-state) and dynamic (time series) gene expression data. However, it is this flexibility that renders its application to time se...
MOTIVATION: When analysing gene expression time series data, an often overlooked but crucial aspect ...
Method: Dynamic Bayesian networks (DBNs) have been applied widely to reconstruct the structure of re...
Exploring gene regulatory network is a key topic in molecular biology. In this paper, we present a n...
Recently, a Bayesian network model for inferring non-stationary regulatory processes from gene expre...
Method: The objective of the present article is to propose and evaluate a probabilistic approach bas...
<p>Method: The objective of the present article is to propose and evaluate a probabilistic app...
An important and challenging problem in systems biology is the inference of gene regulatory networks...
An important and challenging problem in systems biology is the inference of gene regulatory networks...
Differential equations have been established to model the dynamic behavior of gene regulatory networ...
Gene regulatory networks are collections of genes that interact, whether directly or indirectly, wit...
In statistical genomics and systems biology non-homogeneous dynamic Bayesian networks (NH-DBNs) have...
Inferring gene regulatory networks from expression data is difficult, but it is common and often use...
When analysing gene expression time series data an often overlooked but crucial aspect of the model ...
Enabled by recent advances in bioinformatics, the inference of gene regulatory networks (GRNs) from ...
MOTIVATION: When analysing gene expression time series data, an often overlooked but crucial aspect ...
Method: Dynamic Bayesian networks (DBNs) have been applied widely to reconstruct the structure of re...
Exploring gene regulatory network is a key topic in molecular biology. In this paper, we present a n...
Recently, a Bayesian network model for inferring non-stationary regulatory processes from gene expre...
Method: The objective of the present article is to propose and evaluate a probabilistic approach bas...
<p>Method: The objective of the present article is to propose and evaluate a probabilistic app...
An important and challenging problem in systems biology is the inference of gene regulatory networks...
An important and challenging problem in systems biology is the inference of gene regulatory networks...
Differential equations have been established to model the dynamic behavior of gene regulatory networ...
Gene regulatory networks are collections of genes that interact, whether directly or indirectly, wit...
In statistical genomics and systems biology non-homogeneous dynamic Bayesian networks (NH-DBNs) have...
Inferring gene regulatory networks from expression data is difficult, but it is common and often use...
When analysing gene expression time series data an often overlooked but crucial aspect of the model ...
Enabled by recent advances in bioinformatics, the inference of gene regulatory networks (GRNs) from ...
MOTIVATION: When analysing gene expression time series data, an often overlooked but crucial aspect ...
Method: Dynamic Bayesian networks (DBNs) have been applied widely to reconstruct the structure of re...
Exploring gene regulatory network is a key topic in molecular biology. In this paper, we present a n...