| Literature DB >> 29881461 |
Enrico Ferrero1,2, Pankaj Agarwal3.
Abstract
Developing new drugs continues to be a highly inefficient and costly business. By repurposing an existing compound for a different indication, drug repositioning offers an attractive alternative to traditional drug discovery. Most of these approaches work by matching transcriptional disease signatures to anti-correlated gene expression profiles of drug perturbations. Genome-wide association studies (GWASs) are of great interest to researchers in the pharmaceutical industry because drug programmes with supporting genetic evidence are more likely to successfully progress through the drug discovery pipeline. Here, we present a systematic approach to generate drug repositioning hypothesis based on disease genetics by mining public repositories of GWAS data and drug transcriptomic profiles. We find that genes genetically associated with a certain disease are more likely to be differentially expressed in the same disease (p-value = 1.54e-17 and AUC = 0.75) and that, in existing drug - disease combinations, genes significantly up- or down-regulated after drug treatment are enriched for genes genetically associated with that disease (p-value = 1.1e-79 and AUC = 0.64). Finally, we use this framework to generate and rank novel GWAS-driven drug repositioning predictions.Entities:
Keywords: Drug discovery; Drug repositioning; Genomics; Transcriptomics
Year: 2018 PMID: 29881461 PMCID: PMC5984374 DOI: 10.1186/s13040-018-0171-y
Source DB: PubMed Journal: BioData Min ISSN: 1756-0381 Impact factor: 2.522
Fig. 1Genes differentially expressed in disease are enriched for genes genetically associated with the same disease. a Boxplots showing distributions of Fisher’s exact test p-values for genetic and transcriptomic gene sets overlaps from the same or different diseases. b ROC curve with 95% confidence intervals obtained using same or different disease as labels and significance of enrichment between genetic and transcriptomic gene sets as the ranking metric. c Barplot showing breakdown of diseases by therapeutic area for which there is a significant overlap between GWAS associations and genes differentially expressed
Fig. 2Genes differentially expressed after treatment with drug approved for a disease are enriched for genes genetically associated with the same disease. a Boxplots showing distributions of Fisher’s exact test p-values between GWAS disease associations and DEGs after drug treatment for current and other indications. b ROC curve with 95% confidence interval obtained using current indications as positive labels and significance of enrichment between genetic hits in disease and drug transcriptomic profiles as the ranking metric. c Barplot showing breakdown of current drug indications by therapeutic area where there is a significant overlap between GWAS associations and DEGs after drug treatment
Fig. 3GWAS-driven drug repositioning hypotheses by therapeutic area. Sankey diagram showing all significant drug repurposing trajectories across different therapeutic areas