Gene Ontology (GO) classification of statistically significantly differentially expressed genes is commonly used to interpret transcriptomics data as a part of functional genomic analysis. In this approach, all significantly expressed genes contribute equally to the final GO classification regardless of their actual expression levels. Gene expression levels can significantly affect protein production and hence should be reflected in GO term enrichment. Genes with low expression levels can also participate in GO term enrichment through cumulative effects. In this report, we have introduced a new GO enrichment method that is suitable for multiple samples and time series experiments that uses a statistical outlier test to detect GO categories ...
Advanced statistical methods used to analyze high-throughput data (e.g. gene-expression assays) resu...
Gene Ontology (GO) has been widely used to infer functional significance associated with sets of gen...
AbstractAdvanced statistical methods used to analyze high-throughput data such as gene-expression as...
Gene Ontology (GO) classification of statistically significantly differentially expressed genes is c...
Gene Ontology (GO) classification of statistically significantly differentially expressed genes is c...
BACKGROUND: Gene Ontology (GO) terms are often used to assess the results of microarray experiments....
The analysis and interpretation of high-throughput datasets relies on access to high-quality bioinfo...
Background: Identification of gene expression profiles that differentiate experimental groups is cri...
<p>GO analysis provides a controlled vocabulary to describe differentially expressed transcript attr...
AbstractGene Ontology (GO) terms are often used to interpret the results of microarray experiments. ...
Background: The Gene Ontology (GO) is an ontology representing molecular biology concepts related to...
The Gene Ontology (GO) is a set of uniquely identified biological processes defined by a set of gene...
<p>Differentially expressed genes in BA and PPA groups (t-test compared to control group p<0.01) wer...
Gene Ontology (GO) analysis is a powerful tool in systems biology, which uses a defined nomenclature...
A persistent challenge in genetics and genomics is the interpretation of “hit lists” of genes, leadi...
Advanced statistical methods used to analyze high-throughput data (e.g. gene-expression assays) resu...
Gene Ontology (GO) has been widely used to infer functional significance associated with sets of gen...
AbstractAdvanced statistical methods used to analyze high-throughput data such as gene-expression as...
Gene Ontology (GO) classification of statistically significantly differentially expressed genes is c...
Gene Ontology (GO) classification of statistically significantly differentially expressed genes is c...
BACKGROUND: Gene Ontology (GO) terms are often used to assess the results of microarray experiments....
The analysis and interpretation of high-throughput datasets relies on access to high-quality bioinfo...
Background: Identification of gene expression profiles that differentiate experimental groups is cri...
<p>GO analysis provides a controlled vocabulary to describe differentially expressed transcript attr...
AbstractGene Ontology (GO) terms are often used to interpret the results of microarray experiments. ...
Background: The Gene Ontology (GO) is an ontology representing molecular biology concepts related to...
The Gene Ontology (GO) is a set of uniquely identified biological processes defined by a set of gene...
<p>Differentially expressed genes in BA and PPA groups (t-test compared to control group p<0.01) wer...
Gene Ontology (GO) analysis is a powerful tool in systems biology, which uses a defined nomenclature...
A persistent challenge in genetics and genomics is the interpretation of “hit lists” of genes, leadi...
Advanced statistical methods used to analyze high-throughput data (e.g. gene-expression assays) resu...
Gene Ontology (GO) has been widely used to infer functional significance associated with sets of gen...
AbstractAdvanced statistical methods used to analyze high-throughput data such as gene-expression as...