Extracting Relations Between Diseases, Treatments, And Tests From Clinical Data

Canadian AI'11: Proceedings of the 24th Canadian conference on Advances in artificial intelligence(2011)

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摘要
This paper describes research methodologies and experimental settings for the task of relation identification and classification between pairs of medical entities, using clinical data. The models that we use represent a combination of lexical and syntactic features, medical semantic information, terms extracted from a vector-space model created using a random projection algorithm, and additional contextual information extracted at sentence-level. The best results are obtained using an SVM classification algorithm with a combination of the above mentioned features, plus a set of additional features that capture the distributional semantic correlation between the concepts and each relation of interest.
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关键词
clinical data-mining,relation classification
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