The simultaneous testing of a large number of hypotheses in a genome scan, using individual thresholds for significance, inherently leads to inflated genome-wide false positive rates. There exist various approaches to approximating the correct genomewide p-values under various assumptions, either by way of asymptotics or simulations. We explore a philosophically different criterion, recently proposed in the literature, which controls the false discovery rate. The test statistics are assumed to arise from a mixture of distributions under the null and non-null hypotheses. We fit the mixture distribution using both a nonparametric approach and commingling analysis, and then apply the local false discovery rate to select cut-off points for regi...
SummaryIn this paper, we address some of the statistical issues concerning false-positive rates that...
Background/Aims: We consider the situation that multiple genetic variants are underlying a heritable...
Stability Selection, which combines penalized regression with subsampling, is a promising algorithm ...
Background: The use of current high-throughput genetic, genomic and post-genomic data leads to the s...
We define a statistic, called the matching statistic, for locating regions of the genome that exhibi...
Screening for differential gene expression in microarray studies leads to difficult large-scale mult...
Abstract Background When many (up to millions) of statistical tests are conducted in discovery set a...
Abstract Background In the context of genomic association studies, for which a large number of stati...
The distribution of scores for differential gene expression observed in microarray experiments give ...
Background: Thousands of genes in a genomewide data set are tested against some null hypothesis, for...
There is great current interest in using linkage disequilibrium (LD)-based genome screens to localiz...
In genome-wide genetic studies with a large number of markers, balancing the type I error rate and p...
The goal of many microarray studies is to identify genes that are differentially expressed between t...
In cancer research at the molecular level, it is critical to understand which somatic mutations play...
An objective of microarray data analysis is to identify gene expressions that are associated with a ...
SummaryIn this paper, we address some of the statistical issues concerning false-positive rates that...
Background/Aims: We consider the situation that multiple genetic variants are underlying a heritable...
Stability Selection, which combines penalized regression with subsampling, is a promising algorithm ...
Background: The use of current high-throughput genetic, genomic and post-genomic data leads to the s...
We define a statistic, called the matching statistic, for locating regions of the genome that exhibi...
Screening for differential gene expression in microarray studies leads to difficult large-scale mult...
Abstract Background When many (up to millions) of statistical tests are conducted in discovery set a...
Abstract Background In the context of genomic association studies, for which a large number of stati...
The distribution of scores for differential gene expression observed in microarray experiments give ...
Background: Thousands of genes in a genomewide data set are tested against some null hypothesis, for...
There is great current interest in using linkage disequilibrium (LD)-based genome screens to localiz...
In genome-wide genetic studies with a large number of markers, balancing the type I error rate and p...
The goal of many microarray studies is to identify genes that are differentially expressed between t...
In cancer research at the molecular level, it is critical to understand which somatic mutations play...
An objective of microarray data analysis is to identify gene expressions that are associated with a ...
SummaryIn this paper, we address some of the statistical issues concerning false-positive rates that...
Background/Aims: We consider the situation that multiple genetic variants are underlying a heritable...
Stability Selection, which combines penalized regression with subsampling, is a promising algorithm ...