Using uncertainty to link and rank evidence from biomedical literature for model curation.

Journal: Bioinformatics (Oxford, England)
Published Date:

Abstract

MOTIVATION: In recent years, there has been great progress in the field of automated curation of biomedical networks and models, aided by text mining methods that provide evidence from literature. Such methods must not only extract snippets of text that relate to model interactions, but also be able to contextualize the evidence and provide additional confidence scores for the interaction in question. Although various approaches calculating confidence scores have focused primarily on the quality of the extracted information, there has been little work on exploring the textual uncertainty conveyed by the author. Despite textual uncertainty being acknowledged in biomedical text mining as an attribute of text mined interactions (events), it is significantly understudied as a means of providing a confidence measure for interactions in pathways or other biomedical models. In this work, we focus on improving identification of textual uncertainty for events and explore how it can be used as an additional measure of confidence for biomedical models.

Authors

  • Chrysoula Zerva
    National Centre for Text Mining, School of Computer Science.
  • Riza Batista-Navarro
  • Philip Day
    Manchester Institute of Biotechnology, The University of Manchester, Manchester, UK.
  • Sophia Ananiadou