Journal Article

Automatically classifying sentences in full-text biomedical articles into Introduction, Methods, Results and Discussion

Shashank Agarwal and Hong Yu

in Bioinformatics

Volume 25, issue 23, pages 3174-3180
Published in print December 2009 | ISSN: 1367-4803
Published online September 2009 | e-ISSN: 1460-2059 | DOI: http://dx.doi.org/10.1093/bioinformatics/btp548
Automatically classifying sentences in full-text biomedical articles into Introduction, Methods, Results and Discussion

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Biomedical texts can be typically represented by four rhetorical categories: Introduction, Methods, Results and Discussion (IMRAD). Classifying sentences into these categories can benefit many other text-mining tasks. Although many studies have applied different approaches for automatically classifying sentences in MEDLINE abstracts into the IMRAD categories, few have explored the classification of sentences that appear in full-text biomedical articles. We first evaluated whether sentences in full-text biomedical articles could be reliably annotated into the IMRAD format and then explored different approaches for automatically classifying these sentences into the IMRAD categories. Our results show an overall annotation agreement of 82.14% with a Kappa score of 0.756. The best classification system is a multinomial naïve Bayes classifier trained on manually annotated data that achieved 91.95% accuracy and an average F-score of 91.55%, which is significantly higher than baseline systems. A web version of this system is available online at—http://wood.ims.uwm.edu/full_text_classifier/.

Contact: hongyu@uwm.edu

Journal Article.  6097 words.  Illustrated.

Subjects: Bioinformatics and Computational Biology

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