Authors
Cheryl Clark, John Aberdeen, Matt Coarr, David Tresner-Kirsch, Ben Wellner, Alexander Yeh, Lynette Hirschman
Publication date
2011/9/1
Journal
Journal of the American Medical Informatics Association
Volume
18
Issue
5
Pages
563-567
Publisher
BMJ Group
Description
Objective To describe a system for determining the assertion status of medical problems mentioned in clinical reports, which was entered in the 2010 i2b2/VA community evaluation ‘Challenges in natural language processing for clinical data’ for the task of classifying assertions associated with problem concepts extracted from patient records.
Materials and methods A combination of machine learning (conditional random field and maximum entropy) and rule-based (pattern matching) techniques was used to detect negation, speculation, and hypothetical and conditional information, as well as information associated with persons other than the patient.
Results The best submission obtained an overall micro-averaged F-score of 0.9343.
Conclusions Using semantic attributes of concepts and information about document structure as features for statistical classification of …
Total citations
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Scholar articles
C Clark, J Aberdeen, M Coarr, D Tresner-Kirsch… - Journal of the American Medical Informatics …, 2011