MDKG:基于图的医学知识引导对话生成

Usman Naseem, Surendrabikram Thapa, Qi Zhang, Liang Hu, Mehwish Nasim
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摘要

医学对话系统(MDS)已经显示出很有希望的能力,可以像人类医生一样通过与病人的对话进行诊断。然而,目前的系统大多基于序列建模,这并没有考虑到医学知识。这使得系统在信息有限的疾病情况下更容易误诊。为了克服这个问题,我们提出了MDKG,这是一个端到端对话系统,用于医学对话生成(MDG),专门设计用于通过快速学习和进化元知识图来适应新疾病,使其能够推理疾病-症状相关性。我们的方法依赖于医学知识图来提取疾病-症状关系,并使用基于动态图的元学习框架来学习如何进化给定的知识图来推断疾病-症状相关性。我们的方法结合了医学知识,因此减少了大量对话的需要。评估表明,当在基准数据集上测试时,我们的系统优于现有的方法。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
MDKG: Graph-Based Medical Knowledge-Guided Dialogue Generation
Medical dialogue systems (MDS) have shown promising abilities to diagnose through a conversation with a patient like a human doctor would. However, current systems are mostly based on sequence modeling, which does not account for medical knowledge. This makes the systems more prone to misdiagnosis in case of diseases with limited information. To overcome this issue, we present MDKG, an end-to-end dialogue system for medical dialogue generation (MDG) specifically designed to adapt to new diseases by quickly learning and evolving a meta-knowledge graph that allows it to reason about disease-symptom correlations. Our approach relies on a medical knowledge graph to extract disease-symptom relationships and uses a dynamic graph-based meta-learning framework to learn how to evolve the given knowledge graph to reason about disease-symptom correlations. Our approach incorporates medical knowledge and hence reduces the need for a large number of dialogues. Evaluations show that our system outperforms existing approaches when tested on benchmark datasets.
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