A comparison study on algorithms of detecting long forms for short forms in biomedical text
Open Access
- 27 November 2007
- journal article
- Published by Springer Nature in BMC Bioinformatics
- Vol. 8 (S9) , S5
- https://doi.org/10.1186/1471-2105-8-s9-s5
Abstract
Motivation With more and more research dedicated to literature mining in the biomedical domain, more and more systems are available for people to choose from when building literature mining applications. In this study, we focus on one specific kind of literature mining task, i.e., detecting definitions of acronyms, abbreviations, and symbols in biomedical text. We denote acronyms, abbreviations, and symbols as short forms (SFs) and their corresponding definitions as long forms (LFs). The study was designed to answer the following questions; i) how well a system performs in detecting LFs from novel text, ii) what the coverage is for various terminological knowledge bases in including SFs as synonyms of their LFs, and iii) how to combine results from various SF knowledge bases. Method We evaluated the following three publicly available detection systems in detecting LFs for SFs: i) a handcrafted pattern/rule based system by Ao and Takagi, ALICE, ii) a machine learning system by Chang et al., and iii) a simple alignment-based program by Schwartz and Hearst. In addition, we investigated the conceptual coverage of two terminological knowledge bases: i) the UMLS (the Unified Medical Language System), and ii) the BioThesaurus (a thesaurus of names for all UniProt protein records). We also implemented a web interface that provides a virtual integration of various SF knowledge bases. Results We found that detection systems agree with each other on most cases, and the existing terminological knowledge bases have a good coverage of synonymous relationship for frequently defined LFs. The web interface allows people to detect SF definitions from text and to search several SF knowledge bases. Availability The web site is http://gauss.dbb.georgetown.edu/liblab/SFThesaurus.Keywords
This publication has 20 references indexed in Scilit:
- Building an abbreviation dictionary using a term recognition approachBioinformatics, 2006
- ADAM: another database of abbreviations in MEDLINEBioinformatics, 2006
- Biomedical Language Processing: What's Beyond PubMed?Molecular Cell, 2006
- The HUGO Gene Nomenclature Database, 2006 updatesNucleic Acids Research, 2006
- ALICE: An Algorithm to Extract Abbreviations from MEDLINEJournal of the American Medical Informatics Association, 2005
- The Universal Protein Resource (UniProt)Nucleic Acids Research, 2004
- SaRAD: a Simple and Robust Abbreviation DictionaryBioinformatics, 2004
- Creating an Online Dictionary of Abbreviations from MEDLINEJournal of the American Medical Informatics Association, 2002
- Acronyms, abbreviations and initialismsBJU International, 2000
- Recognizing acronyms and their definitionsInternational Journal on Document Analysis and Recognition (IJDAR), 1999