Automated redaction of names in adverse event reports using transformer-based neural networks.

Journal: BMC medical informatics and decision making
PMID:

Abstract

BACKGROUND: Automated recognition and redaction of personal identifiers in free text can enable organisations to share data while protecting privacy. This is important in the context of pharmacovigilance since relevant detailed information on the clinical course of events, differential diagnosis, and patient-reported reflections may often only be conveyed in narrative form. The aim of this study is to develop and evaluate a method for automated redaction of person names in English narrative text on adverse event reports. The target domain for this study was case narratives from the United Kingdom's Yellow Card scheme, which collects and monitors information on suspected side effects to medicines and vaccines.

Authors

  • Eva-Lisa Meldau
    Uppsala Monitoring Centre, Uppsala, Sweden. Eva-Lisa.Meldau@who-umc.org.
  • Shachi Bista
    Uppsala Monitoring Centre, Uppsala, Sweden.
  • Carlos Melgarejo-González
    Uppsala Monitoring Centre, Uppsala, Sweden.
  • G Niklas Norén
    Uppsala Monitoring Centre, Uppsala, Sweden.