The medical conversational system can relieve the burden of doctors and improve the efficiency of healthcare, especially during the pandemic. This paper presents a medical conversational question answering (CQA) system based on the multi-modal knowledge graph, namely "LingYi", which is designed as a pipeline framework to maintain high flexibility. Our system utilizes automated medical procedures including medical triage, consultation, image-text drug recommendation and record. To conduct knowledge-grounded dialogues with patients, we first construct a Chinese Medical Multi-Modal Knowledge Graph (CM3KG) and collect a large-scale Chinese Medical CQA (CMCQA) dataset. Compared with the other existing medical question-answering systems, our system adopts several state-of-the-art technologies including medical entity disambiguation and medical dialogue generation, which is more friendly to provide medical services to patients. In addition, we have open-sourced our codes which contain back-end models and front-end web pages at https://github.com/WENGSYX/LingYi. The datasets including CM3KG at https://github.com/WENGSYX/CM3KG and CMCQA at https://github.com/WENGSYX/CMCQA are also released to further promote future research.
翻译:医疗谈话系统可以减轻医生的负担,提高医疗效率,特别是在大流行病期间。本文件介绍了基于多模式知识图的医学谈话回答系统,即“Ling Yi”,该系统设计为保持高度灵活性的管道框架。我们的系统使用自动化医疗程序,包括医疗分类、咨询、图像文本药物建议和记录。为了与病人进行基于知识的对话,我们首先在http://github.com/WENGSYX/LingYi上建立中国医学多模式知识图(CMQA),并收集大规模中国医疗卡(CMCQA)数据集。与其他现有医疗问答系统相比,我们的系统采用了几种最先进的技术,包括医疗实体脱节和医疗对话生成,这更有利于向病人提供医疗服务。此外,我们还在https://github.com/WENGSYSYX/FismQ的研究中,包括CM3K/SIMBK/SIMGQ。