Due to various complexities, as well as noise and high dimensionality, reconstructing a gene regulatory network (GRN) from a high-throughput microarray data becomes computationally intensive.In our earlier work on causal model approach for GRN reconstruction, we had shown the superiority of Markov blanket (MB) algorithm compared to the algorithm using the existing Y and V causal models. In this paper, we show the MB algorithm can be enhanced further by application of the proposed constraint logic minimization (CLM) technique. We describe a framework for minimizing the constraint logic involved (condition independent tests) by exploiting the Markov blanket learning methods developed for a Bayesian network (BN). The constraint relationships a...
AbstractThis paper introduces two new probabilistic graphical models for reconstruction of genetic r...
Abstract — In this article, we propose a formal method to analyse gene regulatory networks (GRN). Th...
The great amount of gene expression data has brought a big challenge for the discovery of Gene Regul...
Understanding the interactions of genes plays a vital role in the analysis of complex biological sys...
An efficient two-step Markov blanket method for modeling and inferring complex regulatory networks f...
In this paper, we apply Bayesian networks (BN) to infer gene regulatory network (GRN) model from gen...
Inferring Genetic Regulatory Networks (GRN) from multiple data sources is a fundamental problem in c...
The construction and control of genetic regulatory networks using gene expression data is an importa...
Constraint-based structure learning algorithms generally perform well on sparse graphs. Although spa...
The inference of Gene Regulatory Networks (GRNs) from time series gene expression data is an effecti...
Gene Regulatory Network (GRN) inference is a major objective of Systems Biology. The complexity of b...
International audienceGene regulatory network inference remains a challenging problem in systems bio...
Abstract Background ...
International audienceBackgroundGene regulatory network inference remains a challenging problem in s...
The inference of gene regulatory networks (GRN) from microarrray data suffers from the low accuracy ...
AbstractThis paper introduces two new probabilistic graphical models for reconstruction of genetic r...
Abstract — In this article, we propose a formal method to analyse gene regulatory networks (GRN). Th...
The great amount of gene expression data has brought a big challenge for the discovery of Gene Regul...
Understanding the interactions of genes plays a vital role in the analysis of complex biological sys...
An efficient two-step Markov blanket method for modeling and inferring complex regulatory networks f...
In this paper, we apply Bayesian networks (BN) to infer gene regulatory network (GRN) model from gen...
Inferring Genetic Regulatory Networks (GRN) from multiple data sources is a fundamental problem in c...
The construction and control of genetic regulatory networks using gene expression data is an importa...
Constraint-based structure learning algorithms generally perform well on sparse graphs. Although spa...
The inference of Gene Regulatory Networks (GRNs) from time series gene expression data is an effecti...
Gene Regulatory Network (GRN) inference is a major objective of Systems Biology. The complexity of b...
International audienceGene regulatory network inference remains a challenging problem in systems bio...
Abstract Background ...
International audienceBackgroundGene regulatory network inference remains a challenging problem in s...
The inference of gene regulatory networks (GRN) from microarrray data suffers from the low accuracy ...
AbstractThis paper introduces two new probabilistic graphical models for reconstruction of genetic r...
Abstract — In this article, we propose a formal method to analyse gene regulatory networks (GRN). Th...
The great amount of gene expression data has brought a big challenge for the discovery of Gene Regul...