Bayesian hierarchical graph-structured model for pathway analysis using gene expression data Abstract: In genomic analysis, there is growing interest in network structures that represent biochemistry interactions. Graph structured or constrained inference takes advantage of a known relational structure among variables to introduce smoothness and reduce complexity in modeling, especially for high-dimen-sional genomic data. There has been a lot of interest in its application in model regularization and selection. However, prior knowledge on the graphical structure among the variables can be limited and partial. Empiri-cal data may suggest variations and modifications to such a graph, which could lead to new and interesting biological findings...
Up to date, many biological pathways related to cancer have been extensively applied thanks to outpu...
High Throughput Biological Data (HTBD) requires detailed analysis methods and from a life science pe...
UnrestrictedThe etiology of complex diseases may involve a network of biological interactions, genet...
In genomic analysis, there is growing interest in network structures that represent biochemistry int...
Graphs and networks are common ways of depicting information. In biology, many different biological ...
Gene regulatory networks are a visual representation of genes and their interactions. In this visual...
Recent advances in high-throughput molecular biology has motivated in the field of bioinformatics th...
In this work, we propose approaches for the inference of graphical models in the Bayesian framework....
We propose a model-driven approach for analyzing genomic expression data that permits genetic regula...
The wide application of the genomic microarray technology triggers a tremendous need in the developm...
Motivation: Graphs or networks are common ways of depicting information. In biology in particular, m...
In a microarray experiment, it is expected that there will be correlations between the expression le...
After many years of biomedical research, biologists have accumulated much knowledge about genes\u27 ...
Graphical modeling represents an established methodology for identifying complex dependencies in bio...
In this paper, we apply Bayesian networks (BN) to infer gene regulatory network (GRN) model from gen...
Up to date, many biological pathways related to cancer have been extensively applied thanks to outpu...
High Throughput Biological Data (HTBD) requires detailed analysis methods and from a life science pe...
UnrestrictedThe etiology of complex diseases may involve a network of biological interactions, genet...
In genomic analysis, there is growing interest in network structures that represent biochemistry int...
Graphs and networks are common ways of depicting information. In biology, many different biological ...
Gene regulatory networks are a visual representation of genes and their interactions. In this visual...
Recent advances in high-throughput molecular biology has motivated in the field of bioinformatics th...
In this work, we propose approaches for the inference of graphical models in the Bayesian framework....
We propose a model-driven approach for analyzing genomic expression data that permits genetic regula...
The wide application of the genomic microarray technology triggers a tremendous need in the developm...
Motivation: Graphs or networks are common ways of depicting information. In biology in particular, m...
In a microarray experiment, it is expected that there will be correlations between the expression le...
After many years of biomedical research, biologists have accumulated much knowledge about genes\u27 ...
Graphical modeling represents an established methodology for identifying complex dependencies in bio...
In this paper, we apply Bayesian networks (BN) to infer gene regulatory network (GRN) model from gen...
Up to date, many biological pathways related to cancer have been extensively applied thanks to outpu...
High Throughput Biological Data (HTBD) requires detailed analysis methods and from a life science pe...
UnrestrictedThe etiology of complex diseases may involve a network of biological interactions, genet...