首页 | 本学科首页   官方微博 | 高级检索  
     

基于多神经网络协作的电子病历命名实体识别方法
引用本文:张运中,纪斌,余杰,刘慧君.基于多神经网络协作的电子病历命名实体识别方法[J].计算机应用与软件,2021,38(2):179-184.
作者姓名:张运中  纪斌  余杰  刘慧君
作者单位:湖南省电子口岸服务中心 湖南 长沙 410001;国防科技大学计算机学院 湖南 长沙 410073;中国工程物理研究院计算机应用研究所 四川 绵阳 621999
摘    要:随着电子病历在医疗领域的推广应用,越来越多的研究者关注如何高效地从电子病历中抽取高价值科研信息。CHIP2018将中文电子病历临床医疗命名实体识别作为评测任务,即从中文电子病历中抽取三种恶性肿瘤相关的实体。结合三种实体的特点和实体间的依赖关系,提出基于多神经网络协作的复杂医疗命名实体识别方法,并实现了句子级别的模型迁移,解决了训练数据集数量和质量问题,最终获得了该评测任务的第二名。此外,该方法的改进方法取得了CCKS2019评测任务一的第一名,印证了其有效性和泛化能力。

关 键 词:神经网络  BiLSTM-CRF  中文电子病历  命名实体识别  模型迁移  泛化

NAMED ENTITY RECOGNITION METHOD OF ELECTRONIC MEDICAL RECORD BASED ON MULTI NEURAL NETWORK COOPERATION
Zhang Yunzhong,Ji Bin,Yu Jie,Liu Huijun.NAMED ENTITY RECOGNITION METHOD OF ELECTRONIC MEDICAL RECORD BASED ON MULTI NEURAL NETWORK COOPERATION[J].Computer Applications and Software,2021,38(2):179-184.
Authors:Zhang Yunzhong  Ji Bin  Yu Jie  Liu Huijun
Affiliation:(Hunan Electronic Port Service Center,Changsha 410001,Hunan,China;School of Computer,National University of Defense Technology,Changsha 410073,Hunan,China;Institute of Computer Application,China Academy of Engineering Physics,Mianyang 621999,Sichuan,China)
Abstract:With the application of electronic medical records in medical field,more and more researcher are paying attention to how to efficiently extract high-value scientific research information from electronic medical records.The CHIP2018 takes Chinese electronic medical record clinical medical named entity recognition as an open challenge,specifically,extracts three malignant tumor-related entities from Chinese electronic medical records.Combining the characteristics of three entities and entities dependencies,we propose a complex medical named entity recognition approach based on multi neural network cooperation.It realized sentence-level model transfer application to solve the quantity and quality problem of data set.And our approach got the second place in the evaluation task.In addition,our approach won the champion of the first evaluation task released by CCKS2019,which further validate the effectiveness and generalization ability.
Keywords:Neural network  BiLSTM-CRF  Chinese electronic medical record  Named entity recognition  Model transfer  Generalization
本文献已被 维普 万方数据 等数据库收录!
设为首页 | 免责声明 | 关于勤云 | 加入收藏

Copyright©北京勤云科技发展有限公司  京ICP备09084417号