Medical College, Guizhou University, Guiyang, 550025, Guizhou Province, China.
Information Department, The People's Hospital of Guizhou Province, Guiyang, 550002, Guizhou, China.
BMC Med Inform Decis Mak. 2023 Apr 6;23(1):55. doi: 10.1186/s12911-023-02161-z.
With the rapid development of the medical industry and the gradual increase in people's awareness of their health, the use of the Internet for medical question and answer, to obtain more accurate medical answers. It is necessary to first calculate the similarity of the questions asked by users, which further matches professional medical answers. Improving the efficiency of online medical question and answer sessions will not only reduce the burden on doctors, but also enhance the patient's experience of online medical diagnosis.
This paper focuses on building a bidirectional gated recurrent unit(BiGRU) deep learning model based on Siamese network for medical interrogative similarity matching, using Word2Vec word embedding tool for word vector processing of ethnic-medical corpus, and introducing an attention mechanism and convolutional neural network. Bidirectional gated recurrent unit extracts contextual semantic information and long-distance dependency features of interrogative sentences; Similar ethnic medicine interrogatives vary in length and structure, and the key information in the interrogative is crucial to similarity identification. By introducing an attention mechanism higher weight can be given to the keywords in the question, further improving the recognition of similar words in the question. Convolutional neural network takes into account the local information of interrogative sentences and can capture local position invariance, allowing feature extraction for words of different granularity through convolutional operations; By comparing the Euclidean distance, cosine distance and Manhattan distance to calculate the spatial distance of medical interrogatives, the Manhattan distance produced the best similarity result.
Based on the ethnic medical question dataset constructed in this paper, the accuracy and F1-score reached 97.24% and 97.98%, which is a significant improvement compared to several other models.
By comparing with other models, the model proposed in this paper has better performance and achieve accurate matching of similar semantic question data of ethnic medicine.
随着医疗行业的快速发展和人们健康意识的逐渐提高,互联网被用于医疗问答,以获取更准确的医学答案。首先需要计算用户提问的相似度,进一步匹配专业的医疗答案。提高在线医疗问答的效率,不仅可以减轻医生的负担,还可以提升患者在线医疗诊断的体验。
本文主要研究基于孪生网络的双向门控循环单元(BiGRU)深度学习模型在医学问句相似度匹配中的应用,使用 Word2Vec 词嵌入工具对民族医药语料进行词向量处理,并引入注意力机制和卷积神经网络。双向门控循环单元提取问句的上下文语义信息和长距离依赖特征;相似的民族医学问句长度和结构不同,问句中的关键信息对相似度识别至关重要。通过引入注意力机制,可以对问句中的关键词赋予更高的权重,进一步提高问句中相似词的识别能力。卷积神经网络考虑问句的局部信息,可以通过卷积操作捕捉问句的局部位置不变性,实现对不同粒度单词的特征提取;通过计算欧式距离、余弦距离和曼哈顿距离来比较医学问句的空间距离,曼哈顿距离产生了最佳的相似度结果。
基于本文构建的民族医学问句数据集,该模型的准确率和 F1 得分分别达到 97.24%和 97.98%,相较于其他几个模型有显著提升。
与其他模型相比,本文提出的模型具有更好的性能,可以实现民族医学相似语义问句数据的准确匹配。