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Design and Evaluation of a Prescription Drug Monitoring Program for Chinese Patent Medicine based on Knowledge Graph

机译:基于知识图的中药处方药监测计划的设计与评价

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Background . Chinese patent medicines are increasingly used clinically, and the prescription drug monitoring program is an effective tool to promote drug safety and maintain health. Methods . We constructed a prescription drug monitoring program for Chinese patent medicines based on knowledge graphs. First, we extracted the key information of Chinese patent medicines, diseases, and symptoms from the domain-specific corpus by the information extraction. Second, based on the extracted entities and relationships, a knowledge graph was constructed to form a rule base for the monitoring of data. Then, the named entity recognition model extracted the key information from the electronic medical record to be monitored and matched the knowledge graph to realize the monitoring of the Chinese patent medicines in the prescription. Results . Named entity recognition based on the pretrained model achieved an F1 value of 83.3% on the Chinese patent medicines dataset. On the basis of entity recognition technology and knowledge graph, we implemented a prescription drug monitoring program for Chinese patent medicines. The accuracy rate of combined medication monitoring of three or more drugs of the program increased from 68% to 86.4%. The accuracy rate of drug control monitoring increased from 70% to 97%. The response time for conflicting prescriptions with two drugs was shortened from 1.3S to 0.8S. The response time for conflicting prescriptions with three or more drugs was shortened from 5.2S to 1.4S. Conclusions . The program constructed in this study can respond quickly and improve the efficiency of monitoring prescriptions. It is of great significance to ensure the safety of patients’ medication.
机译:背景 。临床上,中国专利药物越来越多地使用,处方药监测计划是促进药物安全和维持健康的有效工具。方法 。基于知识图形,我们为中国专利药物构建了处方药监测计划。首先,我们通过信息提取提取了从域特定语料库中提取了中国专利药物,疾病和症状的关键信息。其次,基于提取的实体和关系,构建知识图形以形成用于监控数据的规则基础。然后,命名实体识别模型从电子医疗记录中提取密钥信息被监视并匹配知识图以实现在处方中的中药的监测。结果 。基于预磨料模型的命名实体识别在中国专利药物数据集中实现了83.3%的F1值。在实体识别技术和知识图的基础上,我们为中国专利药物实施了处方药监测计划。组合药物监测的准确率为三种或更多种程序的药物增加率从68%增加到86.4%。药物管制监测的准确率从70%增加到97%。用两种药物的处方互换的响应时间从1.3s缩短到0.8s。用三种或更多种药物冲突的响应时间从5.2s缩短到1.4s。结论。本研究中构建的程序可以快速响应并提高监测处方的效率。确保患者用药的安全性具有重要意义。

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