BMC Bioinformatics (Aug 2012)

A corpus of full-text journal articles is a robust evaluation tool for revealing differences in performance of biomedical natural language processing tools

  • Verspoor Karin,
  • Cohen Kevin,
  • Lanfranchi Arrick,
  • Warner Colin,
  • Johnson Helen L,
  • Roeder Christophe,
  • Choi Jinho D,
  • Funk Christopher,
  • Malenkiy Yuriy,
  • Eckert Miriam,
  • Xue Nianwen,
  • Baumgartner William A,
  • Bada Michael,
  • Palmer Martha,
  • Hunter Lawrence E

DOI
https://doi.org/10.1186/1471-2105-13-207
Journal volume & issue
Vol. 13, no. 1
p. 207

Abstract

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Abstract Background We introduce the linguistic annotation of a corpus of 97 full-text biomedical publications, known as the Colorado Richly Annotated Full Text (CRAFT) corpus. We further assess the performance of existing tools for performing sentence splitting, tokenization, syntactic parsing, and named entity recognition on this corpus. Results Many biomedical natural language processing systems demonstrated large differences between their previously published results and their performance on the CRAFT corpus when tested with the publicly available models or rule sets. Trainable systems differed widely with respect to their ability to build high-performing models based on this data. Conclusions The finding that some systems were able to train high-performing models based on this corpus is additional evidence, beyond high inter-annotator agreement, that the quality of the CRAFT corpus is high. The overall poor performance of various systems indicates that considerable work needs to be done to enable natural language processing systems to work well when the input is full-text journal articles. The CRAFT corpus provides a valuable resource to the biomedical natural language processing community for evaluation and training of new models for biomedical full text publications.