Wei Li, Zhao Dechun, Qin Lu, Liu Yanghuazi, Shen Yuchen, Ye Changrong
School of Life Health Information Science and Engineering, Chongqing University of Posts and Telecommunications, Chongqing 400065, P. R. China.
Sheng Wu Yi Xue Gong Cheng Xue Za Zhi. 2025 Apr 25;42(2):326-333. doi: 10.7507/1001-5515.202408001.
Automatic classification of medical questions is of great significance in improving the quality and efficiency of online medical services, and belongs to the task of intent recognition. Joint entity recognition and intent recognition perform better than single task models. Currently, most publicly available medical text intent recognition datasets lack entity annotation, and manual annotation of these entities requires a lot of time and manpower. To solve this problem, this paper proposes a medical text classification model, bidirectional encoder representation based on transformer-recurrent convolutional neural network-entity-label-semantics (BRELS), which integrates medical entity label semantics. This model firstly utilizes an adaptive fusion mechanism to absorb prior knowledge of medical entity labels, achieving local feature enhancement. Then in global feature extraction, a lightweight recurrent convolutional neural network (LRCNN) is used to suppress parameter growth while preserving the original semantics of the text. The ablation and comparison experiments are conducted on three public medical text intent recognition datasets to validate the performance of the model. The results show that F1 score reaches 87.34%, 81.71%, and 77.74% on each dataset, respectively. The results show that the BRELS model can effectively identify and understand medical terminology, thereby effectively identifying users' intentions, which can improve the quality and efficiency of online medical services.
医学问题的自动分类对于提高在线医疗服务的质量和效率具有重要意义,属于意图识别任务。联合实体识别和意图识别比单任务模型表现更好。目前,大多数公开可用的医学文本意图识别数据集缺乏实体标注,而对这些实体进行人工标注需要大量时间和人力。为了解决这个问题,本文提出了一种医学文本分类模型,即基于变压器-循环卷积神经网络-实体-标签-语义的双向编码器表示(BRELS),该模型整合了医学实体标签语义。该模型首先利用自适应融合机制吸收医学实体标签的先验知识,实现局部特征增强。然后在全局特征提取中,使用轻量级循环卷积神经网络(LRCNN)在保留文本原始语义的同时抑制参数增长。在三个公共医学文本意图识别数据集上进行了消融和对比实验,以验证该模型的性能。结果表明,在每个数据集上F1分数分别达到87.34%、81.71%和77.74%。结果表明,BRELS模型能够有效地识别和理解医学术语,从而有效地识别用户意图,进而提高在线医疗服务的质量和效率。