The explosion of genomic data provides new opportunities to improve the task of gene regulatory network reconstruction. Because of its inherent probability character, the Bayesian network is one of the most promising methods. However, excessive computation time and the requirements of a large number of biological samples reduce its effectiveness and application to gene regulatory network reconstruction. In this paper, Flooding-Pruning Hill-Climbing algorithm (FPHC) is proposed as a novel hybrid method based on Bayesian networks for gene regulatory networks reconstruction. On the basis of our previous work, we propose the concept of DPI Level based on data processing inequality (DPI) to better identify neighbors of each gene on the lack of e...
We present a variant of the Fast Greedy Equivalence Search algorithm that can be used to learn a Bay...
National audienceIn this work, we reconstruct the gene regulation networks from the microarray exper...
The importance of 'big data' in biology is increasing as vast quantities of data are being produced ...
The explosion of genomic data provides new opportunities to improve the task of gene regulatory netw...
Inferring the gene regulatory network (GRN) structure from data is an important problem in computati...
Using Dynamic Bayesian Networks (DBN) to model genetic regulatory networks from gene expression data...
International audienceBACKGROUND: Inferring gene regulatory networks from data requires the developm...
Inferring gene regulatory networks from data requires the development of algorithms devoted to struc...
Modern technologies and especially next generation sequencing facilities are giving a cheaper access...
Recent advances in high-throughput molecular biology has motivated in the field of bioinformatics th...
Modern technologies and especially next generation sequencing facilities are giving a cheaper access...
International audienceReverse engineering of gene regulatory networks is a key issue for functional ...
AbstractBayesian Networks have been used for the inference of transcriptional regulatory relationshi...
Gene regulatory network is a model of a network that describes the relationships among genes in a gi...
In this paper, we apply Bayesian networks (BN) to infer gene regulatory network (GRN) model from gen...
We present a variant of the Fast Greedy Equivalence Search algorithm that can be used to learn a Bay...
National audienceIn this work, we reconstruct the gene regulation networks from the microarray exper...
The importance of 'big data' in biology is increasing as vast quantities of data are being produced ...
The explosion of genomic data provides new opportunities to improve the task of gene regulatory netw...
Inferring the gene regulatory network (GRN) structure from data is an important problem in computati...
Using Dynamic Bayesian Networks (DBN) to model genetic regulatory networks from gene expression data...
International audienceBACKGROUND: Inferring gene regulatory networks from data requires the developm...
Inferring gene regulatory networks from data requires the development of algorithms devoted to struc...
Modern technologies and especially next generation sequencing facilities are giving a cheaper access...
Recent advances in high-throughput molecular biology has motivated in the field of bioinformatics th...
Modern technologies and especially next generation sequencing facilities are giving a cheaper access...
International audienceReverse engineering of gene regulatory networks is a key issue for functional ...
AbstractBayesian Networks have been used for the inference of transcriptional regulatory relationshi...
Gene regulatory network is a model of a network that describes the relationships among genes in a gi...
In this paper, we apply Bayesian networks (BN) to infer gene regulatory network (GRN) model from gen...
We present a variant of the Fast Greedy Equivalence Search algorithm that can be used to learn a Bay...
National audienceIn this work, we reconstruct the gene regulation networks from the microarray exper...
The importance of 'big data' in biology is increasing as vast quantities of data are being produced ...