提高大型语言模型在糖尿病教育中的性能:检索-增强生成法

IF 5.8 2区 医学 Q1 HEALTH CARE SCIENCES & SERVICES
Dingqiao Wang, Jiangbo Liang, Jinguo Ye, Jingni Li, Jingpeng Li, Qikai Zhang, Qiuling Hu, Caineng Pan, Dongliang Wang, Zhong Liu, Wen Shi, Danli Shi, Fei Li, Bo Qu, Yingfeng Zheng
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引用次数: 0

摘要

背景:大语言模型(LLMs)在处理临床信息方面表现出色。然而,市面上的大语言模型缺乏专业的医学知识,仍然容易产生不准确的信息。鉴于糖尿病患者需要自我管理,他们通常会在网上寻求信息。我们介绍了 RISE 框架,并评估了该框架在增强本地语言管理器以准确回答糖尿病相关咨询方面的性能:本研究旨在评估 RISE 框架(一种信息检索和增强工具)的潜力,以提高地方联络员准确、安全地回复糖尿病相关咨询的能力:RISE是一个创新的检索增强框架,由四个步骤组成:RISE是一个创新的检索增强框架,包括四个步骤:重写查询、信息检索、总结和执行。我们使用一组 43 个常见的糖尿病相关问题,对三个基本 LLM(GPT-4、Anthropic Claude 2 和 Google Bard)及其 RISE 增强版本进行了评估。由临床医生对准确性和全面性进行评估,由患者对可理解性进行评估:结果:RISE 的集成大大提高了所有三种基于 LLM 的回答的准确性和全面性。使用 RISE 后,准确回答的百分比平均提高了 12%(122 - 107/129)。具体来说,GPT-4 的准确率提高了 7% (42 - 39/43),Claude 2 提高了 19% (39 - 31/43),Google Bard 提高了 9% (41 - 37/43)。该框架还提高了回答的全面性,平均得分提高了 0.44。可理解性也平均提高了 0.19 分。数据收集时间为 2023 年 9 月 30 日至 2024 年 2 月 5 日:RISE明显改善了法律硕士在回答糖尿病相关咨询时的表现,提高了准确性、全面性和可理解性。这些改进对 RISE 未来在患者教育和慢性病自我管理方面的作用具有重要意义,有助于缓解医疗资源压力和提高公众对医学知识的认识:
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Enhancement of the Performance of Large Language Models in Diabetes Education through Retrieval-Augmented Generation: Comparative Study.

Background: Large language models (LLMs) demonstrated advanced performance in processing clinical information. However, commercially available LLMs lack specialized medical knowledge and remain susceptible to generating inaccurate information. Given the need for self-management in diabetes, patients commonly seek information online. We introduce the Retrieval-augmented Information System for Enhancement (RISE) framework and evaluate its performance in enhancing LLMs to provide accurate responses to diabetes-related inquiries.

Objective: This study aimed to evaluate the potential of the RISE framework, an information retrieval and augmentation tool, to improve the LLM's performance to accurately and safely respond to diabetes-related inquiries.

Methods: The RISE, an innovative retrieval augmentation framework, comprises 4 steps: rewriting query, information retrieval, summarization, and execution. Using a set of 43 common diabetes-related questions, we evaluated 3 base LLMs (GPT-4, Anthropic Claude 2, Google Bard) and their RISE-enhanced versions respectively. Assessments were conducted by clinicians for accuracy and comprehensiveness and by patients for understandability.

Results: The integration of RISE significantly improved the accuracy and comprehensiveness of responses from all 3 base LLMs. On average, the percentage of accurate responses increased by 12% (15/129) with RISE. Specifically, the rates of accurate responses increased by 7% (3/43) for GPT-4, 19% (8/43) for Claude 2, and 9% (4/43) for Google Bard. The framework also enhanced response comprehensiveness, with mean scores improving by 0.44 (SD 0.10). Understandability was also enhanced by 0.19 (SD 0.13) on average. Data collection was conducted from September 30, 2023 to February 5, 2024.

Conclusions: The RISE significantly improves LLMs' performance in responding to diabetes-related inquiries, enhancing accuracy, comprehensiveness, and understandability. These improvements have crucial implications for RISE's future role in patient education and chronic illness self-management, which contributes to relieving medical resource pressures and raising public awareness of medical knowledge.

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来源期刊
CiteScore
14.40
自引率
5.40%
发文量
654
审稿时长
1 months
期刊介绍: The Journal of Medical Internet Research (JMIR) is a highly respected publication in the field of health informatics and health services. With a founding date in 1999, JMIR has been a pioneer in the field for over two decades. As a leader in the industry, the journal focuses on digital health, data science, health informatics, and emerging technologies for health, medicine, and biomedical research. It is recognized as a top publication in these disciplines, ranking in the first quartile (Q1) by Impact Factor. Notably, JMIR holds the prestigious position of being ranked #1 on Google Scholar within the "Medical Informatics" discipline.
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