We found a match
Your institution may have rights to this item. Sign in to continue.
- Title
Dynamic data-driven meta-analysis for prioritisation of host genes implicated in COVID-19.
- Authors
Parkinson, Nicholas; Rodgers, Natasha; Head Fourman, Max; Wang, Bo; Zechner, Marie; Swets, Maaike C.; Millar, Jonathan E.; Law, Andy; Russell, Clark D.; Baillie, J. Kenneth; Clohisey, Sara
- Abstract
The increasing body of literature describing the role of host factors in COVID-19 pathogenesis demonstrates the need to combine diverse, multi-omic data to evaluate and substantiate the most robust evidence and inform development of therapies. Here we present a dynamic ranking of host genes implicated in human betacoronavirus infection (SARS-CoV-2, SARS-CoV, MERS-CoV, seasonal coronaviruses). We conducted an extensive systematic review of experiments identifying potential host factors. Gene lists from diverse sources were integrated using Meta-Analysis by Information Content (MAIC). This previously described algorithm uses data-driven gene list weightings to produce a comprehensive ranked list of implicated host genes. From 32 datasets, the top ranked gene was PPIA, encoding cyclophilin A, a druggable target using cyclosporine. Other highly-ranked genes included proposed prognostic factors (CXCL10, CD4, CD3E) and investigational therapeutic targets (IL1A) for COVID-19. Gene rankings also inform the interpretation of COVID-19 GWAS results, implicating FYCO1 over other nearby genes in a disease-associated locus on chromosome 3. Researchers can search and review the gene rankings and the contribution of different experimental methods to gene rank at . As new data are published we will regularly update the list of genes as a resource to inform and prioritise future studies.
- Subjects
BETACORONAVIRUS
- Publication
Scientific Reports, 2020, Vol 10, Issue 1, p1
- ISSN
2045-2322
- Publication type
Article
- DOI
10.1038/s41598-020-79033-3