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Rich Text Formatted EHR Narratives: A Hidden and Ignored Trove.
Author(s) -
Zexian Zeng,
Yuan Zhao,
Mengxin Sun,
Andy H. Vo,
Justin Starren,
Yuan Luo
Publication year - 2019
Publication title -
world congress on medical and health informatics, medinfo
Language(s) - English
Resource type - Conference proceedings
ISSN - 1879-8365
DOI - 10.3233/shti190266
Subject(s) - narrative , context (archaeology) , computer science , focus (optics) , electronic health record , parsing , information retrieval , medical record , health records , health care , data science , world wide web , natural language processing , medicine , history , linguistics , political science , philosophy , physics , archaeology , radiology , law , optics
This study presents an approach for mining structured information from clinical narratives in Electronic Health Records (EHRs) by using Rich Text Formatted (RTF) records. RTF is adopted by many medical information management systems. There is rich structural information in these files which can be extracted and interpreted, yet such information is largely ignored. We investigate multiple types of EHR narratives in the Enterprise Data Warehouse from a multisite large healthcare chain consisting of both, an academic medical center and community hospitals. We focus on the RTF constructs related to tables and sections that are not available in plain text EHR narratives. We show how to parse these RTF constructs, analyze their prevalence and characteristics in the context of multiple types of EHR narratives. Our case study demonstrates the additional utility of the features derived from RTF constructs over plain text oriented NLP.

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