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The Development of Personalized Writing Assistant for Electronic Discharge Summaries Based on Named Entity Recognition

机译:基于命名实体识别的电子放电总结个性化写作助手的开发

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摘要

Named entity recognition (NER) is one of the fundamental tasks in natural language processing, with a high utilization value in the medical domain. The electronic discharge summary is a comprehensive clinical document, with the important legal effect especially in medical disputes, which contains patients' relevant information during hospitalization. Current main writing mode of electronic discharge summary in China is typing along with copying/pasting or modifying on some existing template files with fixed forms, which inevitably leads to writing inefficiency and transcription errors. In order to solve this problem, this paper intelligently analyses some potential writing style using NER and designs a personalized writing assistant scheme to improve efficiency and reduce errors. The NER model trained by Chinese discharge summaries and rich features set has a good performance. The writing assistant monitors some key words typed in the writing process and timely extracts structural information from electronic medical record database as candidate inputs for the writer.
机译:命名实体识别(NER)是自然语言处理中的基本任务之一,在医学领域具有很高的利用价值。电子出院摘要是一份全面的临床文件,具有重要的法律效力,尤其是在医疗纠纷中,其中包含患者住院期间的相关信息。中国目前电子放电摘要的主要书写方式是打字,然后以固定形式复制/粘贴或修改一些现有的模板文件,这不可避免地导致书写效率低下和抄写错误。为了解决这个问题,本文使用NER智能地分析了一些潜在的写作风格,并设计了个性化的写作助手方案以提高效率并减少错误。通过中文放电摘要和丰富的特征集训练的NER模型具有良好的性能。写作助手监视在写作过程中键入的一些关键词,并及时从电子病历数据库中提取结构信息,作为作家的候选输入。

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