Chinese medical knowledge mining and analysis based on syntactic dependency and named entity recognition

Jiayi You
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Abstract

In the hospital, when doctors get the patient's case analysis, they often need to spend a lot of time reading the text of the current case and then analyze it, in order to get the cause that affects the patient's disease, most of which are limited to the cause of the disease. In order to allow doctors to see the cause of the patient's condition more intuitively and clearly, combined with Python's powerful data processing, text training, data mining and other functions, firstly carry out text training on the hospital's case details in previous years, and perform named entity recognition on medical entities to achieve entity classification. Then, based on the Chinese text structure, through dependency syntax analysis, a keyword for a disease analysis is extracted, and finally a triple is formed. The ontology project is constructed through protege, and a knowledge map is formed, which not only serves as an intuitive analysis and display of this disease.
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基于句法依赖和命名实体识别的中医知识挖掘与分析
在医院里,医生在拿到病人的病例分析时,往往需要花费大量的时间阅读当前病例的文本,然后进行分析,才能得到影响病人病情的原因,其中大部分都局限于疾病的病因。为了让医生更直观、清晰地看到患者病情的原因,结合Python强大的数据处理、文本训练、数据挖掘等功能,首先对医院历年的病例细节进行文本训练,对医疗实体进行命名实体识别,实现实体分类。然后,在中文文本结构的基础上,通过依赖句法分析,提取出疾病分析的关键字,最后形成一个三元组。通过protege构建本体项目,形成知识地图,不仅可以直观地分析和展示该疾病。
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