Background Statistical analyses of whole genome expression data require functional information about genes in order to yield meaningful biological conclusions. The Gene Ontology (GO) and Kyoto Encyclopedia of Genes and Genomes (KEGG) are common sources of functionally grouped gene sets. For bacteria, the SEED and MicrobesOnline provide alternative, complementary sources of gene sets. To date, no comprehensive evaluation of the data obtained from these resources has been performed. Results We define a series of gene set consistency metrics directly related to the most common classes of statistical analyses for gene expression data, and then perform a comprehensive analysis of 3581 Affymetrix gene expression arrays across 17 diverse bacteria...
Genome-wide transcriptomics data captures the molecular state of microorganisms – the expression pat...
Motivation: Many statistical tests have been proposed in recent years for analyzing gene expression ...
Recent advances in the field of high throughput (meta-)transcriptomics and proteomics call for easy ...
Background Statistical analyses of whole genome expression data require functional information about...
Abstract Background Statistical analyses of whole gen...
Gene-set analysis of microarray data evaluates biological pathways, or gene sets, for their differen...
Background: Rapid growth in the availability of genome-wide transcript abundance levels through gene...
Identification of functional sets of genes associated with conditions of interest from omics data wa...
AbstractGene-set analysis (GSA) methods have been widely used in microarray data analysis. Owing to ...
Background Despite the widespread usage of DNA microarrays, questions remain about how best to inter...
Novelgene sets improve set-level classification of prokaryotic gene expression data Matěj Holec1, O...
Genome-wide expression study is a powerful genomic technology to quantify expression dynamics of gen...
Background: Rapid growth in the availability of genome-wide transcript abundance levels through gene...
Abstract Background Despite the widespread usage of DNA microarrays, questions remain about how best...
Gene set analysis (GSA) is used to elucidate genome-wide data, in particular transcriptome data. A m...
Genome-wide transcriptomics data captures the molecular state of microorganisms – the expression pat...
Motivation: Many statistical tests have been proposed in recent years for analyzing gene expression ...
Recent advances in the field of high throughput (meta-)transcriptomics and proteomics call for easy ...
Background Statistical analyses of whole genome expression data require functional information about...
Abstract Background Statistical analyses of whole gen...
Gene-set analysis of microarray data evaluates biological pathways, or gene sets, for their differen...
Background: Rapid growth in the availability of genome-wide transcript abundance levels through gene...
Identification of functional sets of genes associated with conditions of interest from omics data wa...
AbstractGene-set analysis (GSA) methods have been widely used in microarray data analysis. Owing to ...
Background Despite the widespread usage of DNA microarrays, questions remain about how best to inter...
Novelgene sets improve set-level classification of prokaryotic gene expression data Matěj Holec1, O...
Genome-wide expression study is a powerful genomic technology to quantify expression dynamics of gen...
Background: Rapid growth in the availability of genome-wide transcript abundance levels through gene...
Abstract Background Despite the widespread usage of DNA microarrays, questions remain about how best...
Gene set analysis (GSA) is used to elucidate genome-wide data, in particular transcriptome data. A m...
Genome-wide transcriptomics data captures the molecular state of microorganisms – the expression pat...
Motivation: Many statistical tests have been proposed in recent years for analyzing gene expression ...
Recent advances in the field of high throughput (meta-)transcriptomics and proteomics call for easy ...