figshare
Browse
jessen-2012-mmtc-poster.pdf (5.32 MB)

Mining PubMed for Biomarker-Disease Associations to Guide Discovery

Download (0 kB)
poster
posted on 2012-02-26, 17:59 authored by Walter JessenWalter Jessen, Katherine Landschulz, Thomas Turi, Rachel Reams

Biomedical knowledge is growing exponentially; however, meta-knowledge around the data is often lacking. PubMed is a database comprising more than 21 million citations for biomedical literature from MEDLINE and additional life science journals dating back to the 1950s. To explore the use and frequency of biomarkers across human disease, we mined PubMed for biomarker-disease associations. We then ranked the top 100 linked diseases by relevance and mapped them to medical subject headings (MeSH) and, subsequently, to the Disease Ontology. To identify biomarkers for each disease, we queried Covance BioPathways, an online data resource that maps commercial biomarker assays to biological and disease pathways. We then integrated pathways-based information to describe both known and potential biomarkers as well as disease-associated genes/proteins for select diseases. This approach identifies therapeutic areas with candidate or validated biomarkers, and highlights those areas where a paucity of biomarkers exists.

Presented at the Molecular Med Tri-Con 2012, 21 February 2012

History