Comparing NER Approaches on French Clinical Text, with Easy-to-Reuse Pipelines.

Journal: Studies in health technology and informatics
Published Date:

Abstract

The task of Named Entity Recognition (NER) is central for leveraging the content of clinical texts in observational studies. Indeed, texts contain a large part of the information available in Electronic Health Records (EHRs). However, clinical texts are highly heterogeneous between healthcare services and institutions, between countries and languages, making it hard to predict how existing tools may perform on a particular corpus. We compared four NER approaches on three French corpora and share our benchmarking pipeline in an open and easy-to-reuse manner, using the medkit Python library. We include in our pipelines fine-tuning operations with either one or several of the considered corpora. Our results illustrate the expected superiority of language models over a dictionary-based approach, and question the necessity of refining models already trained on biomedical texts. Beyond benchmarking, we believe sharing reusable and customizable pipelines for comparing fast-evolving Natural Language Processing (NLP) tools is a valuable contribution, since clinical texts themselves can hardly be shared for privacy concerns.

Authors

  • Thibault Hubert
    Inria, HeKA, PariSanté Campus, Paris, France.
  • Ghislain Vaillant
    Biomedical Image Analysis Group, Department of Computing, Imperial College London, London, UK.
  • Olivier Birot
    Inria, HeKA, PariSanté Campus, Paris, France.
  • Camila Arias
    Inria, HeKA, PariSanté Campus, Paris, France.
  • Antoine Neuraz
    Institut National de la Santé et de la Recherche Médicale (INSERM), Centre de Recherche des Cordeliers, UMR 1138 Equipe 22, Paris Descartes, Sorbonne Paris Cité University, Paris, France.
  • Adrien Coulet
    LORIA (CNRS, Inria Nancy-Grand Est, University of Lorraine), Campus Scientifique, Nancy, France. adrien.coulet@loria.fr.