An objective of microarray data analysis is to identify gene expressions that are associated with a disease related outcome. For each gene, a test statistic is computed to determine if an association exists, and this statistic generates a marginal p-value. In an effort to pool this information across genes, a p-value density function is derived. The p-value density is modeled as a mixture of a uniform (0,1) density and a scaled ratio of normal densities derived from the asymptotic normality of the test statistic. The p-values are assumed to be weakly dependent and a quasi-likelihood is used to estimate the parameters in the mixture density. The quasi-likelihood and the weak dependence assumption enables estimation and asymptotic inference o...
Given a set of microarray data, the problem is to detect differentially expressed genes, using a fal...
Abstract Background Functional analysis of data from genome-scale experiments, such as microarrays, ...
Description In a typical microarray setting with gene expression data observed under two conditions,...
The goal of many microarray studies is to identify genes that are differentially expressed between t...
Abstract: The recent development of DNA microarray technology allows us to measure simultaneously th...
Motivation: The false discovery rate (FDR) provides a key statistical assessment formicroarray studi...
MOTIVATION: The most used criterion in microarray data analysis is nowadays the false discovery rate...
MOTIVATION: The most used criterion in microarray data analysis is nowadays the false discovery rate...
MOTIVATION: The most used criterion in microarray data analysis is nowadays the false discovery rate...
Given a set of microarray data, the problem is to detect differentially expressed genes, using a fal...
Given a set of microarray data, the problem is to detect differentially expressed genes, using a fal...
Given a set of microarray data, the problem is to detect differentially expressed genes, using a fal...
Given a set of microarray data, the problem is to detect differentially expressed genes, using a fal...
Given a set of microarray data, the problem is to detect differentially expressed genes, using a fal...
MOTIVATION: Microarray data typically have small numbers of observations per gene, which can result ...
Given a set of microarray data, the problem is to detect differentially expressed genes, using a fal...
Abstract Background Functional analysis of data from genome-scale experiments, such as microarrays, ...
Description In a typical microarray setting with gene expression data observed under two conditions,...
The goal of many microarray studies is to identify genes that are differentially expressed between t...
Abstract: The recent development of DNA microarray technology allows us to measure simultaneously th...
Motivation: The false discovery rate (FDR) provides a key statistical assessment formicroarray studi...
MOTIVATION: The most used criterion in microarray data analysis is nowadays the false discovery rate...
MOTIVATION: The most used criterion in microarray data analysis is nowadays the false discovery rate...
MOTIVATION: The most used criterion in microarray data analysis is nowadays the false discovery rate...
Given a set of microarray data, the problem is to detect differentially expressed genes, using a fal...
Given a set of microarray data, the problem is to detect differentially expressed genes, using a fal...
Given a set of microarray data, the problem is to detect differentially expressed genes, using a fal...
Given a set of microarray data, the problem is to detect differentially expressed genes, using a fal...
Given a set of microarray data, the problem is to detect differentially expressed genes, using a fal...
MOTIVATION: Microarray data typically have small numbers of observations per gene, which can result ...
Given a set of microarray data, the problem is to detect differentially expressed genes, using a fal...
Abstract Background Functional analysis of data from genome-scale experiments, such as microarrays, ...
Description In a typical microarray setting with gene expression data observed under two conditions,...