Published September 25, 2014 | Version v1
Journal article Open

Quantifying the Impact and Extent of Undocumented Biomedical Synonymy

Description

Synonymous relationships among biomedical terms are extensively annotated within specialized terminologies, implying that synonymy is important for practical computational applications within this field. It remains unclear, however, whether text mining actually benefits from documented synonymy and whether existing biomedical thesauri provide adequate coverage of these linguistic relationships. In this study, we examine the impact and extent of undocumented synonymy within a very large compendium of biomedical thesauri. First, we demonstrate that missing synonymy has a significant negative impact on named entity normalization, an important problem within the field of biomedical text mining. To estimate the amount synonymy currently missing from thesauri, we develop a probabilistic model for the construction of synonym terminologies that is capable of handling a wide range of potential biases, and we evaluate its performance using the broader domain of near-synonymy among general English words. Our model predicts that over 90% of these relationships are currently undocumented, a result that we support experimentally through "crowd-sourcing." Finally, we apply our model to biomedical terminologies and predict that they are missing the vast majority (>90%) of the synonymous relationships they intend to document. Overall, our results expose the dramatic incompleteness of current biomedical thesauri and suggest the need for "next-generation," high-coverage lexical terminologies.

Files

journal.pcbi.1003799.pdf

Files (16.7 MB)

Name Size Download all
Article
md5:be8b56114580b35018f2e9997d564921
3.4 MB Preview Download
Supporting information
md5:abdc45a7fcbf7b883711c5720d22187e
13.3 MB Preview Download

Additional details

Identifiers

DOI
10.1371/journal.pcbi.1003799
Other
oai:uchicago.tind.io:10285

Funding

National Institutes of Health
1P50MH094267
National Institutes of Health
U01HL108634-01
National Institutes of Health
GM007281

UChicago Information

Division(s)
Biological Sciences Division, Social Sciences Division
Department(s)
Genetics, Genomics, and Systems Biology, Sociology
Center(s) or Institute(s)
Institute for Genomics and Systems Biology