RT Journal Article SR Electronic T1 Application of Global Transcriptome Data in Gene Ontology Classification and Construction of a Gene Ontology Interaction Network JF bioRxiv FD Cold Spring Harbor Laboratory SP 004911 DO 10.1101/004911 A1 Mario Fruzangohar A1 Esmaeil Ebrahimie A1 David L. Adelson YR 2014 UL http://biorxiv.org/content/early/2014/05/14/004911.abstract AB Gene Ontology (GO) classification of statistically significant over/under expressed genes is a commonly used to interpret transcriptomics data in functional genomic analysis. In this approach, all significant genes contribute equally to the final GO classification regardless of their actual expression levels. However, the original level of gene expression can significantly affect protein production and consequently GO term enrichment, and genes with low expression levels can participate in the final GO enrichment through cumulative effects. In addition, GO terms have regulatory relationships that allow the construction of a regulatory network that incorporates gene expression levels to better study biological mechanisms. In this report, we have used gene expression levels in bacteria to determine GO term enrichments. This approach provided the opportunity to enrich GO terms across the entire transcriptome (instead of a subset of differentially expressed genes). In the second part, we show a dynamically developed enriched interaction network between Biological Process GO terms for any gene samples. This type of network presents regulatory relationships between GO terms and their genes. We then demonstrate the efficiency of these methods using public data from two important bacterial pathogens as models. We also explain how these methods help us understand potential pathogenesis mechanisms employed by these bacteria.