Corpus ID: 211677472

Clinical Text Summarization with Syntax-Based Negation and Semantic Concept Identification

@article{Weng2020ClinicalTS,
  title={Clinical Text Summarization with Syntax-Based Negation and Semantic Concept Identification},
  author={W. Weng and Yu-An Chung and S. Tong},
  journal={ArXiv},
  year={2020},
  volume={abs/2003.00353}
}
In the era of clinical information explosion, a good strategy for clinical text summarization is helpful to improve the clinical workflow. The ideal summarization strategy can preserve important information in the informative but less organized, ill-structured clinical narrative texts. Instead of using pure statistical learning approaches, which are difficult to interpret and explain, we utilized knowledge of computational linguistics with human experts-curated biomedical knowledge base to… Expand
1 Citations

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