Medical dialogue information extraction is becoming an increasingly significant problem in modern medical care. It is difficult to extract key information from electronic medical records (EMRs) due to their large numbers. Previously, researchers proposed attention-based models for retrieving features from EMRs, but their limitations were reflected in their inability to recognize different categories in medical dialogues. In this paper, we propose a novel model, Expert System and Attention for Labelling (ESAL). We use mixture of experts and pre-trained BERT to retrieve the semantics of different categories, enabling the model to fuse the differences between them. In our experiment, ESAL was applied to a public dataset and the experimental results indicated that ESAL significantly improved the performance of Medical Information Classification.
翻译:医学对话信息提取正在成为现代医疗护理中一个日益严重的问题,由于电子医疗记录数量众多,很难从电子医疗记录中提取关键信息,以前,研究人员提出了从电子医疗记录中提取特征的以关注为基础的模型,但其局限性反映在他们无法在医疗对话中识别不同类别。在本论文中,我们提出了一个新的模型,即专家系统和标签注意(ESAL)。我们使用专家与经过预先培训的BERT混合的方法检索不同类别的语义,使模型能够融合它们之间的差异。在我们的实验中,ESAL被用于公共数据集,实验结果表明,ESAL大大改进了医疗信息分类的绩效。