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Automatic de-identification of electronic medical records using token-level and character-level conditional random fields

  • Zengjian Liu
  • , Yangxin Chen
  • , Buzhou Tang*
  • , Xiaolong Wang
  • , Qingcai Chen
  • , Haodi Li
  • , Jingfeng Wang
  • , Qiwen Deng
  • , Suisong Zhu
  • *Corresponding author for this work
  • Harbin Institute of Technology Shenzhen
  • Sun Yat-sen Memorial Hospital of Sun Yat-sen University
  • Shenzhen University

Research output: Contribution to journalArticlepeer-review

Abstract

De-identification, identifying and removing all protected health information (PHI) present in clinical data including electronic medical records (EMRs), is a critical step in making clinical data publicly available. The 2014 i2b2 (Center of Informatics for Integrating Biology and Bedside) clinical natural language processing (NLP) challenge sets up a track for de-identification (track 1). In this study, we propose a hybrid system based on both machine learning and rule approaches for the de-identification track. In our system, PHI instances are first identified by two (token-level and character-level) conditional random fields (CRFs) and a rule-based classifier, and then are merged by some rules. Experiments conducted on the i2b2 corpus show that our system submitted for the challenge achieves the highest micro F-scores of 94.64%, 91.24% and 91.63% under the "token", "strict" and "relaxed" criteria respectively, which is among top-ranked systems of the 2014 i2b2 challenge. After integrating some refined localization dictionaries, our system is further improved with F-scores of 94.83%, 91.57% and 91.95% under the "token", "strict" and "relaxed" criteria respectively.

Original languageEnglish
Pages (from-to)S47-S52
JournalJournal of Biomedical Informatics
Volume58
DOIs
StatePublished - 1 Dec 2015
Externally publishedYes

Keywords

  • De-identification
  • Electronic medical records
  • Hybrid method
  • I2b2
  • Natural language processing
  • Protected health information

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