MTDiag:一个有效的多任务自动诊断框架

Zhenyu Hou, Yukuo Cen, Ziding Liu, Dongxue Wu, Baoyan Wang, Xuanhe Li, Lei Hong, Jie Tang
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引用次数: 0

摘要

自动诊断系统旨在通过与患者的多回合对话来探测症状(即症状检查)并诊断疾病。大多数先前的工作将其表述为一个顺序决策过程,并使用强化学习(RL)来决定是询问症状还是做出诊断。然而,这些基于强化学习的方法严重依赖于复杂的奖励函数,并且通常存在训练过程不稳定和数据效率低的问题。在这项工作中,我们提出了一个有效的多任务自动诊断框架,称为MTDiag。我们首先通过直接监督将症状检查重新定义为多标签分类任务。将每个医学对话等价地转换成多个样本进行分类,也有助于缓解数据稀缺问题。此外,我们设计了一个多任务学习策略来指导疾病信息的症状检查过程,并进一步利用对比学习来更好地区分疾病之间的症状。大量的实验结果表明,我们的方法在四个公共数据集上达到了最先进的性能,疾病诊断提高了1.7%~3.1%,证明了所提出方法的优越性。此外,我们的模型现在被部署在一个在线医疗咨询系统中,作为现实生活中医生的辅助工具。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
MTDiag: An Effective Multi-Task Framework for Automatic Diagnosis
Automatic diagnosis systems aim to probe for symptoms (i.e., symptom checking) and diagnose disease through multi-turn conversations with patients. Most previous works formulate it as a sequential decision process and use reinforcement learning (RL) to decide whether to inquire about symptoms or make a diagnosis. However, these RL-based methods heavily rely on the elaborate reward function and usually suffer from an unstable training process and low data efficiency. In this work, we propose an effective multi-task framework for automatic diagnosis called MTDiag. We first reformulate symptom checking as a multi-label classification task by direct supervision. Each medical dialogue is equivalently converted into multiple samples for classification, which can also help alleviate the data scarcity problem. Furthermore, we design a multi-task learning strategy to guide the symptom checking procedure with disease information and further utilize contrastive learning to better distinguish symptoms between diseases. Extensive experimental results show that our method achieves state-of-the-art performance on four public datasets with 1.7%~3.1% improvement in disease diagnosis, demonstrating the superiority of the proposed method. Additionally, our model is now deployed in an online medical consultant system as an assistant tool for real-life doctors.
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