Method: The objective of the present article is to propose and evaluate a probabilistic approach based on Bayesian networks for modelling non-homogeneous and non-linear gene regulatory processes. The method is based on a mixture model, using latent variables to assign individual measurements to different classes. The practical inference follows the Bayesian paradigm and samples the network structure, the number of classes and the assignment of latent variables from the posterior distribution with Markov Chain Monte Carlo (MCMC), using the recently proposed allocation sampler as an alternative to RJMCMC.Results: We have evaluated the method using three criteria: network reconstruction, statistical significance and biological plausibility. In...
In this paper, we apply Bayesian networks (BN) to infer gene regulatory network (GRN) model from gen...
Gene regulatory networks are a visual representation of genes and their interactions. In this visual...
Method: Dynamic Bayesian networks (DBNs) have been applied widely to reconstruct the structure of re...
Method: The objective of the present article is to propose and evaluate a probabilistic approach bas...
Method: The objective of the present article is to propose and evaluate a probabilistic approach bas...
Recently, a Bayesian network model for inferring non-stationary regulatory processes from gene expre...
Gene regulatory networks are collections of genes that interact, whether directly or indirectly, wit...
There have been various attempts to improve the reconstruction of gene regulatory networks from micr...
Abstract Gene regulatory networks are collections of genes that interact with one other and with oth...
Since the regulatory relationship between genes is usually non-stationary, the homogeneity assumptio...
Abstract Background The reconstruction of gene regulatory networks from time series gene expression ...
There have been various attempts to improve the reconstruction of gene regulatory networks from micr...
We develop a method for reconstructing regulatory interconnection networks between variables evolvin...
Differential equations have been established to model the dynamic behavior of gene regulatory networ...
In the topical field of systems biology there is considerable interest in learning regulatory networ...
In this paper, we apply Bayesian networks (BN) to infer gene regulatory network (GRN) model from gen...
Gene regulatory networks are a visual representation of genes and their interactions. In this visual...
Method: Dynamic Bayesian networks (DBNs) have been applied widely to reconstruct the structure of re...
Method: The objective of the present article is to propose and evaluate a probabilistic approach bas...
Method: The objective of the present article is to propose and evaluate a probabilistic approach bas...
Recently, a Bayesian network model for inferring non-stationary regulatory processes from gene expre...
Gene regulatory networks are collections of genes that interact, whether directly or indirectly, wit...
There have been various attempts to improve the reconstruction of gene regulatory networks from micr...
Abstract Gene regulatory networks are collections of genes that interact with one other and with oth...
Since the regulatory relationship between genes is usually non-stationary, the homogeneity assumptio...
Abstract Background The reconstruction of gene regulatory networks from time series gene expression ...
There have been various attempts to improve the reconstruction of gene regulatory networks from micr...
We develop a method for reconstructing regulatory interconnection networks between variables evolvin...
Differential equations have been established to model the dynamic behavior of gene regulatory networ...
In the topical field of systems biology there is considerable interest in learning regulatory networ...
In this paper, we apply Bayesian networks (BN) to infer gene regulatory network (GRN) model from gen...
Gene regulatory networks are a visual representation of genes and their interactions. In this visual...
Method: Dynamic Bayesian networks (DBNs) have been applied widely to reconstruct the structure of re...