Literature DB >> 11604766

Automatic extraction of acronym-meaning pairs from MEDLINE databases.

J Pustejovsky1, J Castaño, B Cochran, M Kotecki, M Morrell.   

Abstract

Acronyms are widely used in biomedical and other technical texts. Understanding their meaning constitutes an important problem in the automatic extraction and mining of information from text. Here we present a system called ACROMED that is part of a set of Information Extraction tools designed for processing and extracting information from abstracts in the Medline database. In this paper, we present the results of two strategies for finding the long forms for acronyms in biomedical texts. These strategies differ from previous automated acronym extraction methods by being tuned to the complex phrase structures of the biomedical lexicon and by incorporating shallow parsing of the text into the acronym recognition algorithm. The performance of our system was tested with several data sets obtaining a performance of 72 % recall with 97 % precision. These results are found to be better for biomedical texts than the performance of other acronym extraction systems designed for unrestricted text.

Mesh:

Year:  2001        PMID: 11604766

Source DB:  PubMed          Journal:  Stud Health Technol Inform        ISSN: 0926-9630


  22 in total

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2.  Using co-occurrence network structure to extract synonymous gene and protein names from MEDLINE abstracts.

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4.  Enhancing acronym/abbreviation knowledge bases with semantic information.

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7.  Building a high-quality sense inventory for improved abbreviation disambiguation.

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8.  MBA: a literature mining system for extracting biomedical abbreviations.

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9.  Machine learning with naturally labeled data for identifying abbreviation definitions.

Authors:  Lana Yeganova; Donald C Comeau; W John Wilbur
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10.  Biomedical word sense disambiguation with ontologies and metadata: automation meets accuracy.

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