Screening for differential gene expression in microarray studies leads to difficult large-scale multiple testing problems. The local false discovery rate is a statistical concept for quantifying uncertainty in multiple testing. In this paper, we introduce a novel estimator for the local false discovery rate that is based on an algorithm which splits all genes into two groups, representing induced and noninduced genes, respectively. Starting from the full set of genes, we successively exclude genes until the gene-wise p{\hbox{-}}{\rm values} of the remaining genes look like a typical sample from a uniform distribution. In comparison to other methods, our algorithm performs compatibly in detecting the shape of the local false discovery rate a...
The simultaneous testing of a large number of hypotheses in a genome scan, using individual threshol...
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...
Screening for differential gene expression in microarray studies leads to difficult large-scale mult...
Description In a typical microarray setting with gene expression data observed under two conditions,...
Motivation: The false discovery rate (fdr) is a key tool for statistical assessment of differential ...
Background: Thousands of genes in a genomewide data set are tested against some null hypothesis, for...
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...
Microarray is an important technology which enables people to investigate the expression levels of t...
Microarray is an important technology which enables people to investigate the expression levels of t...
Microarray is an important technology which enables people to investigate the expression levels of t...
Description In a typical microarray setting with gene expression data observed under two condi-tions...
Given a set of microarray data, the problem is to detect differentially expressed genes, using a fal...
The simultaneous testing of a large number of hypotheses in a genome scan, using individual threshol...
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...
Screening for differential gene expression in microarray studies leads to difficult large-scale mult...
Description In a typical microarray setting with gene expression data observed under two conditions,...
Motivation: The false discovery rate (fdr) is a key tool for statistical assessment of differential ...
Background: Thousands of genes in a genomewide data set are tested against some null hypothesis, for...
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...
Microarray is an important technology which enables people to investigate the expression levels of t...
Microarray is an important technology which enables people to investigate the expression levels of t...
Microarray is an important technology which enables people to investigate the expression levels of t...
Description In a typical microarray setting with gene expression data observed under two condi-tions...
Given a set of microarray data, the problem is to detect differentially expressed genes, using a fal...
The simultaneous testing of a large number of hypotheses in a genome scan, using individual threshol...
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...