Medical concept normalization in social media posts with recurrent neural networks.

Journal: Journal of biomedical informatics
Published Date:

Abstract

Text mining of scientific libraries and social media has already proven itself as a reliable tool for drug repurposing and hypothesis generation. The task of mapping a disease mention to a concept in a controlled vocabulary, typically to the standard thesaurus in the Unified Medical Language System (UMLS), is known as medical concept normalization. This task is challenging due to the differences in the use of medical terminology between health care professionals and social media texts coming from the lay public. To bridge this gap, we use sequence learning with recurrent neural networks and semantic representation of one- or multi-word expressions: we develop end-to-end architectures directly tailored to the task, including bidirectional Long Short-Term Memory, Gated Recurrent Units with an attention mechanism, and additional semantic similarity features based on UMLS. Our evaluation against a standard benchmark shows that recurrent neural networks improve results over an effective baseline for classification based on convolutional neural networks. A qualitative examination of mentions discovered in a dataset of user reviews collected from popular online health information platforms as well as a quantitative evaluation both show improvements in the semantic representation of health-related expressions in social media.

Authors

  • Elena Tutubalina
    Kazan (Volga Region) Federal University, Kazan, Russia.
  • Zulfat Miftahutdinov
    Kazan Federal University, 18 Kremlyovskaya street, Kazan 420008, Russian Federation. Electronic address: zulfatmi@gmail.com.
  • Sergey Nikolenko
    Kazan (Volga Region) Federal University, Kazan, Russia.
  • Valentin Malykh
    Neural Systems and Deep Learning Laboratory, Moscow Institute of Physics and Technology, 9 bld. 7 Instituski per., Dolgoprudny 141700, Russian Federation; St. Petersburg Department of the Steklov Mathematical Institute, 27 Fontanka, St. Petersburg 191023, Russian Federation. Electronic address: valentin.malykh@phystech.edu.