Comparison of Word and Character Level Information for Medical Term Identification Using Convolutional Neural Networks and Transformers.

Journal: Studies in health technology and informatics
Published Date:

Abstract

Complexity and domain-specificity make medical text hard to understand for patients and their next of kin. To simplify such text, this paper explored how word and character level information can be leveraged to identify medical terms when training data is limited. We created a dataset of medical and general terms using the Human Disease Ontology from BioPortal and Wikipedia pages. Our results from 10-fold cross validation indicated that convolutional neural networks (CNNs) and transformers perform competitively. The best F score of 93.9% was achieved by a CNN trained on both word and character level embeddings. Statistical significance tests demonstrated that general word embeddings provide rich word representations for medical term identification. Consequently, focusing on words is favorable for medical term identification if using deep learning architectures.

Authors

  • Sandaru Seneviratne
    School of Computing, The Australian National University (ANU), Australia.
  • Artem Lenskiy
    School of Computing, The Australian National University (ANU), Australia.
  • Christopher Nolan
    ANU Medical School and John Curtin School of Medical Research, ANU, Australia.
  • Eleni Daskalaki
    School of Computing, The Australian National University (ANU), Australia.
  • Hanna Suominen
    NICTA, The Australian National University, and University of Canberra, Canberra, Australian Capital Territory, Australia.