Largely due to the technological advances in bioinformatics, researchers are now garnering interests in inferring gene regulatory networks (GRNs) from gene expression data which is otherwise unfeasible in the past. This is because of the need of researchers to uncover the potentially vast information and understand the dynamic behavior of the GRNs. In this regard, dynamic Bayesian network (DBN) has been broadly utilized for the inference of GRNs thanks to its ability to handle time-series microarray data and modeling feedback loops. Unfortunately, the commonly found missing values in gene expression data, and excessive computation time owing to the large search space whereby all genes are treated as potential regulators for a target gene, o...
Abstract Background The regulation of gene expression is achieved through gene regulatory networks (...
Using Dynamic Bayesian Networks (DBN) to model genetic regulatory networks from gene expression data...
Gene regulatory networks are collections of genes that interact, whether directly or indirectly, wit...
Enabled by recent advances in bioinformatics, the inference of gene regulatory networks (GRNs) from ...
This article deals with the identification of gene regula-tory networks from experimental data using...
Background: Gene expression data often contain missing expression values. Therefore, several imputat...
Recent advances in high-throughput molecular biology has motivated in the field of bioinformatics th...
Inferring gene regulatory networks (GRNs) is a challenging inverse problem. Most existing approaches...
Two major challenges in inferring the sparse topological architecture of Gene Regulatory Networks us...
The inference of gene regulatory networks (GRN) from microarrray data suffers from the low accuracy ...
Microarray experiments generate vast amounts of data that evidently reflect many aspects of the unde...
Dynamic Bayesian networks (DBNs) can be used for the discovery of gene regulatory networks (GRNs) fr...
Background: The reconstruction of gene regulatory network from time course microarray data can help ...
The innovations and improvements in high-throughput genomic technologies, such as DNA microarray, ma...
Motivation: Bayesian networks have been applied to infer genetic regulatory interactions from microa...
Abstract Background The regulation of gene expression is achieved through gene regulatory networks (...
Using Dynamic Bayesian Networks (DBN) to model genetic regulatory networks from gene expression data...
Gene regulatory networks are collections of genes that interact, whether directly or indirectly, wit...
Enabled by recent advances in bioinformatics, the inference of gene regulatory networks (GRNs) from ...
This article deals with the identification of gene regula-tory networks from experimental data using...
Background: Gene expression data often contain missing expression values. Therefore, several imputat...
Recent advances in high-throughput molecular biology has motivated in the field of bioinformatics th...
Inferring gene regulatory networks (GRNs) is a challenging inverse problem. Most existing approaches...
Two major challenges in inferring the sparse topological architecture of Gene Regulatory Networks us...
The inference of gene regulatory networks (GRN) from microarrray data suffers from the low accuracy ...
Microarray experiments generate vast amounts of data that evidently reflect many aspects of the unde...
Dynamic Bayesian networks (DBNs) can be used for the discovery of gene regulatory networks (GRNs) fr...
Background: The reconstruction of gene regulatory network from time course microarray data can help ...
The innovations and improvements in high-throughput genomic technologies, such as DNA microarray, ma...
Motivation: Bayesian networks have been applied to infer genetic regulatory interactions from microa...
Abstract Background The regulation of gene expression is achieved through gene regulatory networks (...
Using Dynamic Bayesian Networks (DBN) to model genetic regulatory networks from gene expression data...
Gene regulatory networks are collections of genes that interact, whether directly or indirectly, wit...