Abstract Background Gene-set analysis evaluates the expression of biological pathways, or a priori defined gene sets, rather than that of individual genes, in association with a binary phenotype, and is of great biologic interest in many DNA microarray studies. Gene Set Enrichment Analysis (GSEA) has been applied widely as a tool for gene-set analyses. We describe here some critical problems with GSEA and propose an alternative method by extending the individual-gene analysis method, Significance Analysis of Microarray (SAM), to gene-set analyses (SAM-GS). Results Using a mouse microarray dataset with simulated gene sets, we illustrate that GSEA gives statistical significance to gene sets that have no gene associated with the phenotype (nul...
This paper discusses the problem of identifying dierentially ex-pressed groups of genes from a micro...
The DNA microarray biotechnology simultaneously monitors the expression of thousands of genes and ai...
Background: Sets of genes that are known to be associated with each other can be used to interpret m...
Gene-set analysis evaluates the expression of biological pathways, or a priori defined gene sets, ra...
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...
Among themanyapplicationsofmicroarray technology, oneof themost popular is the identificationof gene...
This paper discusses the problem of identifying differentially expressed groups of genes from a micr...
Among the many applications of microarray technology, one of the most popular is the identification ...
Abstract: Gene set enrichment analysis (GSEA) is a statistical method to determine if predefined set...
An increasing challenge in analysis of microarray data is how to interpret and gain biological insig...
Microarray technology allows measurement of the expression levels of thousand of genes simultaneousl...
AbstractGene-set analysis (GSA) methods have been widely used in microarray data analysis. Owing to ...
The DNA microarray biotechnology simultaneously monitors the expression of thousands of genes and ai...
The DNA microarray biotechnology simultaneously monitors the expression of thousands of genes and ai...
This paper discusses the problem of identifying dierentially ex-pressed groups of genes from a micro...
The DNA microarray biotechnology simultaneously monitors the expression of thousands of genes and ai...
Background: Sets of genes that are known to be associated with each other can be used to interpret m...
Gene-set analysis evaluates the expression of biological pathways, or a priori defined gene sets, ra...
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...
Among themanyapplicationsofmicroarray technology, oneof themost popular is the identificationof gene...
This paper discusses the problem of identifying differentially expressed groups of genes from a micr...
Among the many applications of microarray technology, one of the most popular is the identification ...
Abstract: Gene set enrichment analysis (GSEA) is a statistical method to determine if predefined set...
An increasing challenge in analysis of microarray data is how to interpret and gain biological insig...
Microarray technology allows measurement of the expression levels of thousand of genes simultaneousl...
AbstractGene-set analysis (GSA) methods have been widely used in microarray data analysis. Owing to ...
The DNA microarray biotechnology simultaneously monitors the expression of thousands of genes and ai...
The DNA microarray biotechnology simultaneously monitors the expression of thousands of genes and ai...
This paper discusses the problem of identifying dierentially ex-pressed groups of genes from a micro...
The DNA microarray biotechnology simultaneously monitors the expression of thousands of genes and ai...
Background: Sets of genes that are known to be associated with each other can be used to interpret m...