Identifying smokers with a medical extraction system

C Clark, K Good, L Jezierny… - Journal of the …, 2008 - academic.oup.com
C Clark, K Good, L Jezierny, M Macpherson, B Wilson, U Chajewska
Journal of the American Medical Informatics Association, 2008academic.oup.com
Abstract The Clinical Language Understanding group at Nuance Communications has
developed a medical information extraction system that combines a rule-based extraction
engine with machine learning algorithms to identify and categorize references to patient
smoking in clinical reports. The extraction engine identifies smoking references; documents
that contain no smoking references are classified as UNKNOWN. For the remaining
documents, the extraction engine uses linguistic analysis to associate features such as …
Abstract
The Clinical Language Understanding group at Nuance Communications has developed a medical information extraction system that combines a rule-based extraction engine with machine learning algorithms to identify and categorize references to patient smoking in clinical reports. The extraction engine identifies smoking references; documents that contain no smoking references are classified as UNKNOWN. For the remaining documents, the extraction engine uses linguistic analysis to associate features such as status and time to smoking mentions. Machine learning is used to classify the documents based on these features. This approach shows overall accuracy in the 90s on all data sets used. Classification using engine-generated and word-based features outperforms classification using only word-based features for all data sets, although the difference gets smaller as the data set size increases. These techniques could be applied to identify other risk factors, such as drug and alcohol use, or a family history of a disease.
Oxford University Press
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