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Coreference resolution on entities and events for hospital discharge summaries

机译:关于出院摘要的实体和事件的共同决议

摘要

The wealth of medical information contained in electronic medical records (EMRs) and Natural Language Processing (NLP) technologies that can automatically extract information from them have opened the doors to automatic patient-care quality monitoring and medical- assist question answering systems. This thesis studies coreference resolution, an information extraction (IE) subtask that links together specific mentions to each entity. Coreference resolution enables us to find changes in the state of entities and makes it possible to answer questions regarding the information thus obtained. We perform coreference resolution on a specific type of EMR, the hospital discharge summary. We treat coreference resolution as a binary classification problem. Our approach yields insights into the critical features for coreference resolution for entities that fall into five medical semantic categories that commonly appear in discharge summaries.
机译:电子病历(EMR)和自然语言处理(NLP)技术中包含的大量医学信息可以自动从中提取信息,这为自动患者护理质量监控和医疗辅助问答系统打开了大门。本文研究共参考分辨率,即将特定提及与每个实体链接在一起的信息提取(IE)子任务。共指解析使我们能够发现实体状态的变化,并有可能回答有关由此获得的信息的问题。我们对特定类型的EMR(医院出院摘要)执行共参考解析。我们将共指分辨率视为二进制分类问题。我们的方法可洞悉共同归类解析的关键特征,这些特征可归为五种通常在出院摘要中出现的医学语义类别。

著录项

  • 作者

    He Tian Ye;

  • 作者单位
  • 年度 2007
  • 总页数
  • 原文格式 PDF
  • 正文语种 eng
  • 中图分类

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