BERT with Enhanced Layer for Assistant Diagnosis Based on Chinese Obstetric EMRs

Kunli Zhang, Chuang Liu, Xuemin Duan, Lijuan Zhou, Yueshu Zhao, Hongying Zan
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引用次数: 3

Abstract

This paper proposes a novel method based on the language representation model called BERT (Bidirectional Encoder Representations from Transformers) for Obstetric assistant diagnosis on Chinese obstetric EMRs (Electronic Medical Records). To aggregate more information for final output, an enhanced layer is augmented to the BERT model. In particular, the enhanced layer in this paper is constructed based on strategy 1(A strategy) and/or strategy 2(A-AP strategy). The proposed method is evaluated on two datasets including Chinese Obstetric EMRs dataset and Arxiv Academic Paper Dataset (AAPD). The experimental results show that the proposed method based on BERT improves the F1 value by 19.58% and 2.71% over the state-of-the-art methods, and the proposed method based on BERT and the enhanced layer by strategy 2 improves the F1 value by 0.7% and 0.3% (strategy 1 improves the F1 value by 0.68% and 0.1%) over the method without adding enhanced layer respectively on Obstetric EMRs dataset and AAPD dataset.
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基于中国产科电子病历的增强层BERT辅助诊断
本文提出了一种基于语言表示模型BERT (Bidirectional Encoder Representations from Transformers)的中国产科电子病历辅助诊断方法。为了为最终输出聚合更多信息,BERT模型中增加了一个增强层。特别地,本文的增强层是基于策略1(A策略)和/或策略2(A- ap策略)构建的。在中国产科EMRs数据集和Arxiv学术论文数据集(AAPD)上对该方法进行了评估。实验结果表明,基于BERT的方法在产科EMRs数据集和AAPD数据集上的F1值分别比现有方法提高了19.58%和2.71%,基于BERT和策略2的增强层的方法在产科EMRs数据集和AAPD数据集上的F1值分别比不添加增强层的方法提高了0.7%和0.3%(策略1的F1值分别提高了0.68%和0.1%)。
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