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- Title
A flexible framework for recognizing events, temporal expressions, and temporal relations in clinical text.
- Authors
Roberts, Kirk; Rink, Bryan; Harabagiu, Sanda M.
- Abstract
Objective To provide a natural language processing method for the automatic recognition of events, temporal expressions, and temporal relations in clinical records. Materials and Methods A combination of supervised, unsupervised, and rule-based methods were used. Supervised methods include conditional random fields and support vector machines. A flexible automated feature selection technique was used to select the best subset of features for each supervised task. Unsupervised methods include Brown clustering on several corpora, which result in our method being considered semisupervised. Results On the 2012 Informatics for Integrating Biology and the Bedside (i2b2) shared task data, we achieved an overall event F1-measure of 0.8045, an overall temporal expression F1-measure of 0.6154, an overall temporal link detection F1-measure of 0.5594, and an end-to-end temporal link detection F1-measure of 0.5258. The most competitive system was our event recognition method, which ranked third out of the 14 participants in the event task. Discussion Analysis reveals the event recognition method has difficulty determining which modifiers to include/exclude in the event span. The temporal expression recognition method requires significantly more normalization rules, although many of these rules apply only to a small number of cases. Finally, the temporal relation recognition method requires more advanced medical knowledge and could be improved by separating the single discourse relation classifier into multiple, more targeted component classifiers. Conclusions Recognizing events and temporal expressions can be achieved accurately by combining supervised and unsupervised methods, even when only minimal medical knowledge is available. Temporal normalization and temporal relation recognition, however, are far more dependent on the modeling of medical knowledge.
- Subjects
NATURAL language processing; SUPPORT vector machines; MANAGEMENT of electronic health records; CLINICAL medicine software; MEDICAL informatics
- Publication
Journal of the American Medical Informatics Association, 2013, Vol 20, Issue 5, p867
- ISSN
1067-5027
- Publication type
Article
- DOI
10.1136/amiajnl-2013-001619