Background With the growing abundance of microarray data, statistical methods are increasingly needed to integrate results across studies. Two common approaches for meta-analysis of microarrays include either combining gene expression measures across studies or combining summaries such as p-values, probabilities or ranks. Here, we compare two Bayesian meta-analysis models that are analogous to these methods. Results Two Bayesian meta-analysis models for microarray data have recently been introduced. The first model combines standardized gene expression measures across studies into an overall mean, accounting for inter-study variability, while the second combines probabilities of differential expression without combining expression values. B...
Metagenomics is the study of microbial communities on the genome level by direct sequencing of envir...
In this paper we define a hierarchical Bayesian model for microarray expression data collected fro...
Background: Biologists often conduct multiple but different cDNA microarray studies that all target ...
Background With the growing abundance of microarray data, statistical methods are increasingly neede...
The development of new technologies to measure gene expression has been calling for statistical meth...
Motivation: The proliferation of public data repositories creates a need for meta-analysis methods t...
The growing popularity of microarray technology for testing changes in gene expression has resulted ...
Meta-analysis of microarray studies to produce an overall gene list is relatively straightforward wh...
Background Biologists often conduct multiple but different cDNA microarray studies that all target t...
A major limitation of gene expression biomarker studies is that they are not reproducible as they si...
Background: With the explosion in data generated using microarray technology by different investigat...
Background\ud As high-throughput genomic technologies become accurate and affordable, an increasing ...
Abstract Background With the explosion in data genera...
With the availability of tons of expression profiles, the need for meta-analyses to integratediffere...
Random-effects meta-analysis models are commonly applied in combining effect sizes from individual g...
Metagenomics is the study of microbial communities on the genome level by direct sequencing of envir...
In this paper we define a hierarchical Bayesian model for microarray expression data collected fro...
Background: Biologists often conduct multiple but different cDNA microarray studies that all target ...
Background With the growing abundance of microarray data, statistical methods are increasingly neede...
The development of new technologies to measure gene expression has been calling for statistical meth...
Motivation: The proliferation of public data repositories creates a need for meta-analysis methods t...
The growing popularity of microarray technology for testing changes in gene expression has resulted ...
Meta-analysis of microarray studies to produce an overall gene list is relatively straightforward wh...
Background Biologists often conduct multiple but different cDNA microarray studies that all target t...
A major limitation of gene expression biomarker studies is that they are not reproducible as they si...
Background: With the explosion in data generated using microarray technology by different investigat...
Background\ud As high-throughput genomic technologies become accurate and affordable, an increasing ...
Abstract Background With the explosion in data genera...
With the availability of tons of expression profiles, the need for meta-analyses to integratediffere...
Random-effects meta-analysis models are commonly applied in combining effect sizes from individual g...
Metagenomics is the study of microbial communities on the genome level by direct sequencing of envir...
In this paper we define a hierarchical Bayesian model for microarray expression data collected fro...
Background: Biologists often conduct multiple but different cDNA microarray studies that all target ...