MC-DRE: Multi-Aspect Cross Integration for Drug Event/Entity Extraction
- URL: http://arxiv.org/abs/2308.06546v2
- Date: Tue, 15 Aug 2023 07:28:15 GMT
- Title: MC-DRE: Multi-Aspect Cross Integration for Drug Event/Entity Extraction
- Authors: Jie Yang and Soyeon Caren Han and Siqu Long and Josiah Poon and Goran
Nenadic
- Abstract summary: We propose a new multi-aspect cross-integration framework for drug entity/event detection.
Our model outperforms all SOTA on two widely used tasks, flat entity detection and discontinuous event extraction.
- Score: 19.4567740328955
- License: http://creativecommons.org/licenses/by/4.0/
- Abstract: Extracting meaningful drug-related information chunks, such as adverse drug
events (ADE), is crucial for preventing morbidity and saving many lives. Most
ADEs are reported via an unstructured conversation with the medical context, so
applying a general entity recognition approach is not sufficient enough. In
this paper, we propose a new multi-aspect cross-integration framework for drug
entity/event detection by capturing and aligning different
context/language/knowledge properties from drug-related documents. We first
construct multi-aspect encoders to describe semantic, syntactic, and medical
document contextual information by conducting those slot tagging tasks, main
drug entity/event detection, part-of-speech tagging, and general medical named
entity recognition. Then, each encoder conducts cross-integration with other
contextual information in three ways: the key-value cross, attention cross, and
feedforward cross, so the multi-encoders are integrated in depth. Our model
outperforms all SOTA on two widely used tasks, flat entity detection and
discontinuous event extraction.
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