Microarrays are a powerful tool for studying differential gene expression. However, lists of many differentially expressed genes are often generated, and unraveling meaningful biological processes from the lists can be challenging. For this reason, investigators have sought to quantify the statistical probability of compiled gene sets rather than individual genes. The gene sets typically are organized around a biological theme or pathway. We compute correlations between different gene set tests and elect to use Fisher's self-contained method for gene set analysis. We improve Fisher's differential expression analysis of a gene set by limiting the p-value of an individual gene within the gene set to prevent a small percentage of genes from de...
Abstract Background Gene set analysis (GSA) has become a successful tool to interpret gene expressio...
The power of a microarray experiment derives from the identification of genes differentially regulat...
Motivation: Standard analysis routines for microarray data aim at differentially expressed genes. In...
Motivation: The power of a microarray experiment derives from the identification of genes differenti...
Introduction: Gene-set analysis of microarray data determines biological pathways or gene setswith d...
An increasing challenge in analysis of microarray data is how to interpret and gain biological insig...
Gene-set analysis of microarray data evaluates biological pathways, or gene sets, for their differen...
Gene-set analysis of microarray data evaluates biological pathways, or gene sets, for their differen...
Gene set methods aim to assess the overall evidence of association of a set of genes with a phenotyp...
Gene set testing problem has become the focus of microarray data analysis. A gene set is a group of ...
With the development of DNA microarray technology, scientists can now measure the expression levels ...
With the development of DNA microarray technology, scientists can now measure the expression levels ...
This paper discusses the problem of identifying differentially expressed groups of genes from a micr...
Motivation: Standard analysis routines for microarray data aim at differentially expressed genes. I...
MOTIVATION: Standard analysis routines for microarray data aim at differentially expressed genes. In...
Abstract Background Gene set analysis (GSA) has become a successful tool to interpret gene expressio...
The power of a microarray experiment derives from the identification of genes differentially regulat...
Motivation: Standard analysis routines for microarray data aim at differentially expressed genes. In...
Motivation: The power of a microarray experiment derives from the identification of genes differenti...
Introduction: Gene-set analysis of microarray data determines biological pathways or gene setswith d...
An increasing challenge in analysis of microarray data is how to interpret and gain biological insig...
Gene-set analysis of microarray data evaluates biological pathways, or gene sets, for their differen...
Gene-set analysis of microarray data evaluates biological pathways, or gene sets, for their differen...
Gene set methods aim to assess the overall evidence of association of a set of genes with a phenotyp...
Gene set testing problem has become the focus of microarray data analysis. A gene set is a group of ...
With the development of DNA microarray technology, scientists can now measure the expression levels ...
With the development of DNA microarray technology, scientists can now measure the expression levels ...
This paper discusses the problem of identifying differentially expressed groups of genes from a micr...
Motivation: Standard analysis routines for microarray data aim at differentially expressed genes. I...
MOTIVATION: Standard analysis routines for microarray data aim at differentially expressed genes. In...
Abstract Background Gene set analysis (GSA) has become a successful tool to interpret gene expressio...
The power of a microarray experiment derives from the identification of genes differentially regulat...
Motivation: Standard analysis routines for microarray data aim at differentially expressed genes. In...