Clinical named entity recognition and relation extraction using natural language processing of medical free text: A systematic review.

International journal of medical informatics(2023)

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摘要
Machine learning-based methods have dominated the NLP field on information extraction tasks. More recently, Transformer-based language models are taking the lead and showing the strongest performance. However, these developments are mostly based on a few datasets and generic annotations, with very few real-world use cases. This may raise questions about the generalizability of findings, translation into practice and highlights the need for robust clinical evaluation.
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关键词
medical free text,relation extraction,entity recognition,natural language processing
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