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DeTEXT: A Database for Evaluating Text Extraction from Biomedical Literature Figures

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  • Xu-Cheng Yin
  • Chun Yang
  • Wei-Yi Pei
  • Haixia Man
  • Jun Zhang
  • Erik Learned-Miller
  • Hong Yu

Abstract

Hundreds of millions of figures are available in biomedical literature, representing important biomedical experimental evidence. Since text is a rich source of information in figures, automatically extracting such text may assist in the task of mining figure information. A high-quality ground truth standard can greatly facilitate the development of an automated system. This article describes DeTEXT: A database for evaluating text extraction from biomedical literature figures. It is the first publicly available, human-annotated, high quality, and large-scale figure-text dataset with 288 full-text articles, 500 biomedical figures, and 9308 text regions. This article describes how figures were selected from open-access full-text biomedical articles and how annotation guidelines and annotation tools were developed. We also discuss the inter-annotator agreement and the reliability of the annotations. We summarize the statistics of the DeTEXT data and make available evaluation protocols for DeTEXT. Finally we lay out challenges we observed in the automated detection and recognition of figure text and discuss research directions in this area. DeTEXT is publicly available for downloading at http://prir.ustb.edu.cn/DeTEXT/.

Suggested Citation

  • Xu-Cheng Yin & Chun Yang & Wei-Yi Pei & Haixia Man & Jun Zhang & Erik Learned-Miller & Hong Yu, 2015. "DeTEXT: A Database for Evaluating Text Extraction from Biomedical Literature Figures," PLOS ONE, Public Library of Science, vol. 10(5), pages 1-19, May.
  • Handle: RePEc:plo:pone00:0126200
    DOI: 10.1371/journal.pone.0126200
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