作者
Yonghui Wu, Min Jiang, Jianbo Lei, Hua Xu
发表日期
2015
期刊
Studies in health technology and informatics
卷号
216
页码范围
624
出版商
NIH Public Access
简介
Rapid growth in electronic health records (EHRs) use has led to an unprecedented expansion of available clinical data in electronic formats. However, much of the important healthcare information is locked in the narrative documents. Therefore Natural Language Processing (NLP) technologies, eg, Named Entity Recognition that identifies boundaries and types of entities, have been extensively studied to unlock important clinical information in free text. In this study, we investigated a novel deep learning method to recognize clinical entities in Chinese clinical documents using the minimal feature engineering approach. We developed a deep neural network (DNN) to generate word embeddings from a large unlabeled corpus through unsupervised learning and another DNN for the NER task. The experiment results showed that the DNN with word embeddings trained from the large unlabeled corpus outperformed …
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