Negation Scope Detection in Clinical Notes and Scientific Abstracts: A Feature-enriched LSTM-based Approach.

2019 
: Electronic Health Records contain a wealth of clinical information that can potentially be used for a variety of clinical tasks. Clinical narratives contain information about the existence or absence of medical conditions as well as clinical findings. It is essential to be able to distinguish between the two since the negated events and the non-negated events often have very different prognostic value. In this paper, we present a feature-enriched neural network-based model for negation scope detection in biomedical texts. The system achieves a robust high performance on two different types of texts, scientific abstracts, and radiology reports, achieving the new state-of-the-art result without requiring the availability of gold cue information for negation scope detection task on the scientific abstracts part of BioScope1 corpus and competitive result on the radiology report corpus.
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