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A BERT-BiGRU-CRF Model for Entity Recognition of Chinese Electronic Medical Records

机译:中国电子医疗记录实体识别的BERT-BIGRU-CRF模型

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Because of difficulty processing the electronic medical record data of patients with cerebrovascular disease, there is little mature recognition technology capable of identifying the named entity of cerebrovascular disease. Excellent research results have been achieved in the field of named entity recognition (NER), but there are several problems in the pre processing of Chinese named entities that have multiple meanings, of which neglecting the combination of contextual information is one. Therefore, to extract five categories of key entity information for diseases, symptoms, body parts, medical examinations, and treatment in electronic medical records, this paper proposes the use of a BERT-BiGRU-CRF named entity recognition method, which is applied to the field of cerebrovascular diseases. The BERT layer first converts the electronic medical record text into a low-dimensional vector, then uses this vector as the input to the BiGRU layer to capture contextual features, and finally uses conditional random fields (CRFs) to capture the dependency between adjacent tags. The experimental results show that the F1 score of the model reaches 90.38%.
机译:由于难以处理脑血管病患者的电子医疗记录数据,因此能够识别脑血管病的命名实体的成熟识别技术。在命名实体识别(NER)领域已经实现了优秀的研究结果,但是在具有多种含义的中文命名实体的预处理中存在几个问题,其中忽略了上下文信息的组合是一个。因此,为了提取疾病,症状,身体部位,体检和在电子医疗记录中的疾病,症状,身体部位,医学检查的五类关键实体信息,提出使用伯特-BigRu-CRF命名实体识别方法,该方法应用于脑血管疾病领域。 BERT层首先将电子医疗记录文本转换为低维向量,然后将此向量用作Bigru层的输入来捕获上下文特征,最后使用条件随机字段(CRF)来捕获相邻标签之间的依赖性。实验结果表明,该模型的F1得分达到90.38%。

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