Integration of Multi-Source Medical Data for Medical Diagnosis Question Answering

Qi Peng;Yi Cai;Jiankun Liu;Quan Zou;Xing Chen;Zheng Zhong;Zefeng Wang;Jiayuan Xie;Qing Li
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Abstract

Medical question answering aims to enhance diagnostic support, improve patient education, and assist in clinical decision-making by automatically answering medical-related queries, which is an important foundation for realizing intelligent healthcare. Existing methods predominantly focus on extracting key information from a single data source, e.g., CT image, for answering. However, these methods are not enough to promote the development of intelligent healthcare, because they lack comprehensive medical diagnosis capabilities, which usually require the integration of multi-source data (e.g., laboratory tests, radiology images, pathology images, etc.) for processing. To address these limitations, our paper introduces the extended task of medical question answering, named medical diagnosis question answering MedDQA. MedDQA task aims to answer questions related to medical diagnosis based on multi-source data. Specifically, we introduce a corresponding dataset that incorporates multi-source diagnostic information from 250,917 patients in clinical data from hospital records, and utilize a large-scale model for constructing Q&A pairs. We propose a novel system based on large language models, named medical multi-agent (MMA) system, which includes a mechanism of multiple agents to handle different medical tasks. Each agent is specifically tailored to process various modalities of data and provide outputs in a uniform textual modality. Experimental results demonstrate that the MMA system’s architecture significantly enhances the handling of multi-source data, thereby improving medical diagnosis, establishing a robust baseline for future research.
整合多源医疗数据用于医疗诊断问题解答
医疗问答通过自动回答医疗相关问题,增强诊断支持,提高患者教育水平,辅助临床决策,是实现智能医疗的重要基础。现有的方法主要集中于从单个数据源(如CT图像)中提取关键信息进行回答。然而,这些方法不足以推动智能医疗的发展,因为它们缺乏全面的医疗诊断能力,通常需要整合多源数据(如实验室检查、放射图像、病理图像等)进行处理。为了解决这些局限性,本文引入了医学问答的扩展任务,称为医学诊断问答MedDQA。MedDQA任务旨在回答基于多源数据的医疗诊断相关问题。具体而言,我们引入了一个相应的数据集,该数据集包含来自医院记录的临床数据中来自250,917名患者的多源诊断信息,并利用大规模模型构建问答对。本文提出了一种基于大型语言模型的医疗多智能体(MMA)系统,该系统包含多个智能体处理不同医疗任务的机制。每个代理都是专门为处理各种数据模式而定制的,并以统一的文本模式提供输出。实验结果表明,MMA系统的架构显著增强了对多源数据的处理能力,从而提高了医疗诊断水平,为未来的研究奠定了稳健的基础。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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