AbstractThough genome-wide technologies, such as microarrays, are widely used, data from these methods are considered noisy; there is still varied success in downstream biological validation. We report a method that increases the likelihood of successfully validating microarray findings using real time RT-PCR, including genes at low expression levels and with small differences. We use a Bayesian network to identify the most relevant sources of noise based on the successes and failures in validation for an initial set of selected genes, and then improve our subsequent selection of genes for validation based on eliminating these sources of noise. The network displays the significant sources of noise in an experiment, and scores the likelihood...
DNA hybridization arrays simultaneously measure the expression level for thousands of genes. These m...
We propose Bayesian Neural Networks (BNN) with structural learning for exploring microarray data in ...
We propose Bayesian Neural Networks (BNN) with structural learning for exploring microarray data in ...
AbstractThough genome-wide technologies, such as microarrays, are widely used, data from these metho...
Background: In high density arrays, the identification of relevant genes for disease classification ...
Motivation: Bayesian networks have been applied to infer genetic regulatory interactions from microa...
Motivation: High-throughput microarray technologies enable measurements of the expression levels of ...
Motivation: Bayesian networks have been applied to infer genetic regulatory interactions from microa...
Motivation: High-throughput microarray technologies enable measurements of the expression levels of ...
The main purpose of a gene interaction network is to map the relationships of the genes that are out...
The main purpose of a gene interaction network is to map the relationships of the genes that are out...
Co-expression networks have long been used as a tool for investigating the molecular circuitry gover...
Background: The reconstruction of gene regulatory network from time course microarray data can help ...
Background: Reconstructing regulatory networks from gene expression profiles is a challenging probl...
Background: Reconstructing regulatory networks from gene expression profiles is a challenging probl...
DNA hybridization arrays simultaneously measure the expression level for thousands of genes. These m...
We propose Bayesian Neural Networks (BNN) with structural learning for exploring microarray data in ...
We propose Bayesian Neural Networks (BNN) with structural learning for exploring microarray data in ...
AbstractThough genome-wide technologies, such as microarrays, are widely used, data from these metho...
Background: In high density arrays, the identification of relevant genes for disease classification ...
Motivation: Bayesian networks have been applied to infer genetic regulatory interactions from microa...
Motivation: High-throughput microarray technologies enable measurements of the expression levels of ...
Motivation: Bayesian networks have been applied to infer genetic regulatory interactions from microa...
Motivation: High-throughput microarray technologies enable measurements of the expression levels of ...
The main purpose of a gene interaction network is to map the relationships of the genes that are out...
The main purpose of a gene interaction network is to map the relationships of the genes that are out...
Co-expression networks have long been used as a tool for investigating the molecular circuitry gover...
Background: The reconstruction of gene regulatory network from time course microarray data can help ...
Background: Reconstructing regulatory networks from gene expression profiles is a challenging probl...
Background: Reconstructing regulatory networks from gene expression profiles is a challenging probl...
DNA hybridization arrays simultaneously measure the expression level for thousands of genes. These m...
We propose Bayesian Neural Networks (BNN) with structural learning for exploring microarray data in ...
We propose Bayesian Neural Networks (BNN) with structural learning for exploring microarray data in ...