» Articles » PMID: 22195230

Using Medical Text Extraction, Reasoning and Mapping System (MTERMS) to Process Medication Information in Outpatient Clinical Notes

Overview
Date 2011 Dec 24
PMID 22195230
Citations 39
Authors
Affiliations
Soon will be listed here.
Abstract

Clinical information is often coded using different terminologies, and therefore is not interoperable. Our goal is to develop a general natural language processing (NLP) system, called Medical Text Extraction, Reasoning and Mapping System (MTERMS), which encodes clinical text using different terminologies and simultaneously establishes dynamic mappings between them. MTERMS applies a modular, pipeline approach flowing from a preprocessor, semantic tagger, terminology mapper, context analyzer, and parser to structure inputted clinical notes. Evaluators manually reviewed 30 free-text and 10 structured outpatient clinical notes compared to MTERMS output. MTERMS achieved an overall F-measure of 90.6 and 94.0 for free-text and structured notes respectively for medication and temporal information. The local medication terminology had 83.0% coverage compared to RxNorm's 98.0% coverage for free-text notes. 61.6% of mappings between the terminologies are exact match. Capture of duration was significantly improved (91.7% vs. 52.5%) from systems in the third i2b2 challenge.

Citing Articles

Natural language processing for scalable feature engineering and ultra-high-dimensional confounding adjustment in healthcare database studies.

Wyss R, Yang J, Schneeweiss S, Plasek J, Zhou L, Deramus T medRxiv. 2025; .

PMID: 39974094 PMC: 11838641. DOI: 10.1101/2025.01.30.25321403.


A Case Demonstration of the Open Health Natural Language Processing Toolkit From the National COVID-19 Cohort Collaborative and the Researching COVID to Enhance Recovery Programs for a Natural Language Processing System for COVID-19 or Postacute....

Wen A, Wang L, He H, Fu S, Liu S, Hanauer D JMIR Med Inform. 2024; 12:e49997.

PMID: 39250782 PMC: 11420592. DOI: 10.2196/49997.


Identification of an ANCA-Associated Vasculitis Cohort Using Deep Learning and Electronic Health Records.

Wang L, Novoa-Laurentiev J, Cook C, Srivatsan S, Hua Y, Yang J medRxiv. 2024; .

PMID: 38946986 PMC: 11213085. DOI: 10.1101/2024.06.09.24308603.


Social and Behavioral Determinants of Health in the Era of Artificial Intelligence with Electronic Health Records: A Scoping Review.

Bompelli A, Wang Y, Wan R, Singh E, Zhou Y, Xu L Health Data Sci. 2024; 2021:9759016.

PMID: 38487504 PMC: 10880156. DOI: 10.34133/2021/9759016.


Identifying Functional Status Impairment in People Living With Dementia Through Natural Language Processing of Clinical Documents: Cross-Sectional Study.

Laurentiev J, Kim D, Mahesri M, Wang K, Bessette L, York C J Med Internet Res. 2024; 26:e47739.

PMID: 38349732 PMC: 10900085. DOI: 10.2196/47739.


References
1.
Harkema H, Dowling J, Thornblade T, Chapman W . ConText: an algorithm for determining negation, experiencer, and temporal status from clinical reports. J Biomed Inform. 2009; 42(5):839-51. PMC: 2757457. DOI: 10.1016/j.jbi.2009.05.002. View

2.
Denny J, Spickard 3rd A, Johnson K, Peterson N, Peterson J, Miller R . Evaluation of a method to identify and categorize section headers in clinical documents. J Am Med Inform Assoc. 2009; 16(6):806-15. PMC: 3002123. DOI: 10.1197/jamia.M3037. View

3.
Aronson A . Effective mapping of biomedical text to the UMLS Metathesaurus: the MetaMap program. Proc AMIA Symp. 2002; :17-21. PMC: 2243666. View

4.
Chapman W, Bridewell W, Hanbury P, Cooper G, Buchanan B . A simple algorithm for identifying negated findings and diseases in discharge summaries. J Biomed Inform. 2002; 34(5):301-10. DOI: 10.1006/jbin.2001.1029. View

5.
Gold S, Elhadad N, Zhu X, Cimino J, Hripcsak G . Extracting structured medication event information from discharge summaries. AMIA Annu Symp Proc. 2008; :237-41. PMC: 2655993. View