Gene set analysis, which translates gene lists into enriched functions, is among the most common bioinformatic methods. Yet few would advocate taking the results at face value. Not only is there no agreement on the algorithms themselves, there is no agreement on how to benchmark them. In this paper, we evaluate the robustness and uniqueness of enrichment results as a means of assessing methods even where correctness is unknown. We show that heavily annotated ('multifunctional') genes are likely to appear in genomics study results and drive the generation of biologically non-specific enrichment results as well as highly fragile significances. By providing a means of determining where enrichment analyses report non-specific and non-robust fin...
MOTIVATION: The Gene Ontology (GO) is heavily used in systems biology, but the potential for redunda...
International audienceABSTRACT: BACKGROUND: The search for enriched features has become widely used ...
Gene set enrichment tests (a.k.a. functional enrichment analysis) are among the most frequently used...
The purpose of gene set enrichment analysis (GSEA) is to find general trends in the huge lists of ge...
High-throughput technologies are widely used for understanding biological processes. Gene set analy...
Among the many applications of microarray technology, one of the most popular is the identification ...
Motivation: Gene set enrichment (GSE) analysis allows researchers to efficiently extract biological ...
Translating the overwhelming amount of data generated in high-throughput genomics experiments into b...
Abstract Background The analysis of high-throughput gene expression data with respect to sets of gen...
Abstract Background Gene set enrichment testing has h...
The interpretation of data-driven experiments in genomics often involves a search for biological cat...
The advent of the era of high-throughput sequencing has brought a wealth of biological data to rese...
Gene set analysis, a popular approach for analyzing high-throughput gene expression data, aims to id...
Identification of functional sets of genes associated with conditions of interest from omics data wa...
Among themanyapplicationsofmicroarray technology, oneof themost popular is the identificationof gene...
MOTIVATION: The Gene Ontology (GO) is heavily used in systems biology, but the potential for redunda...
International audienceABSTRACT: BACKGROUND: The search for enriched features has become widely used ...
Gene set enrichment tests (a.k.a. functional enrichment analysis) are among the most frequently used...
The purpose of gene set enrichment analysis (GSEA) is to find general trends in the huge lists of ge...
High-throughput technologies are widely used for understanding biological processes. Gene set analy...
Among the many applications of microarray technology, one of the most popular is the identification ...
Motivation: Gene set enrichment (GSE) analysis allows researchers to efficiently extract biological ...
Translating the overwhelming amount of data generated in high-throughput genomics experiments into b...
Abstract Background The analysis of high-throughput gene expression data with respect to sets of gen...
Abstract Background Gene set enrichment testing has h...
The interpretation of data-driven experiments in genomics often involves a search for biological cat...
The advent of the era of high-throughput sequencing has brought a wealth of biological data to rese...
Gene set analysis, a popular approach for analyzing high-throughput gene expression data, aims to id...
Identification of functional sets of genes associated with conditions of interest from omics data wa...
Among themanyapplicationsofmicroarray technology, oneof themost popular is the identificationof gene...
MOTIVATION: The Gene Ontology (GO) is heavily used in systems biology, but the potential for redunda...
International audienceABSTRACT: BACKGROUND: The search for enriched features has become widely used ...
Gene set enrichment tests (a.k.a. functional enrichment analysis) are among the most frequently used...