| Literature DB >> 12463798 |
John S Carter1, Steven H Brown, Mark S Erlbaum, William Gregg, Peter L Elkin, Ted Speroff, Mark S Tuttle.
Abstract
We developed and evaluated a UMLS Metathesaurus Co-occurrence mining algorithm to connect medications and diseases they may treat. Based on 16 years of co-occurrence data, we created 977 candidate drug-disease pairs for a sample of 100 ingredients (50 commonly prescribed and 50 selected at random). Our evaluation showed that more than 80% of the candidate drug-disease pairs were rated "APPROPRIATE" by physician raters. Additionally, there was a highly significant correlation between the overall frequency of citation and the likelihood that the connection was rated "APPROPRIATE." The drug-disease pairs were used to initialize term definitions in an ongoing effort to build a medication reference terminology for the Veterans Health Administration. Co-occurrence mining is a valuable technique for initializing term definitions in a large-scale reference terminology creation project.Mesh:
Substances:
Year: 2002 PMID: 12463798 PMCID: PMC2244264
Source DB: PubMed Journal: Proc AMIA Symp ISSN: 1531-605X