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A deep learning model incorporating part of speech and self-matching attention for named entity recognition of Chinese electronic medical records

机译:结合语音和自我匹配注意力的深度学习模型用于中国电子病历的命名实体识别

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摘要

BackgroundThe Named Entity Recognition (NER) task as a key step in the extraction of health information, has encountered many challenges in Chinese Electronic Medical Records (EMRs). Firstly, the casual use of Chinese abbreviations and doctors’ personal style may result in multiple expressions of the same entity, and we lack a common Chinese medical dictionary to perform accurate entity extraction. Secondly, the electronic medical record contains entities from a variety of categories of entities, and the length of those entities in different categories varies greatly, which increases the difficult in the extraction for the Chinese NER. Therefore, the entity boundary detection becomes the key to perform accurate entity extraction of Chinese EMRs, and we need to develop a model that supports multiple length entity recognition without relying on any medical dictionary.
机译:背景技术命名实体识别(NER)任务是提取健康信息的关键步骤,在中国电子病历(EMR)中遇到了许多挑战。首先,随意使用中文缩写和医生的个人风格可能会导致同一实体的多种表达,而且我们缺乏通用的中文医学词典来进行准确的实体提取。其次,电子病历中包含来自各种类别实体的实体,并且这些实体在不同类别中的长度差异很大,这增加了提取中国NER的难度。因此,实体边界检测成为准确进行中文EMR实体提取的关键,我们需要开发一种不依赖任何医学词典即可支持多长度实体识别的模型。

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