为糖尿病护理和肢体保护构建可信的生成式人工智能:医学知识提取案例。

IF 3.7 Q2 ENDOCRINOLOGY & METABOLISM
Shayan Mashatian, David G Armstrong, Aaron Ritter, Jeffery Robbins, Shereen Aziz, Ilia Alenabi, Michelle Huo, Taneeka Anand, Kouhyar Tavakolian
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引用次数: 0

摘要

背景:大语言模型(LLM)在医学信息提取方面具有巨大潜力,但也存在生成错误信息的风险。本研究旨在开发并验证一个检索器增强生成(RAG)模型,该模型可为具有八年级文化水平的非专业人士提供有关糖尿病和糖尿病足护理的准确医学知识。通过患者教育提高健康素养对于解决糖尿病患者肢体缺失问题至关重要。除了通过改善治疗效果来影响患者的福祉外,改善医生的福祉也是患者健康教育自我管理模式的重要成果:方法:我们使用 RAG 架构并建立了一个问答式人工智能(AI)模型,以提取与糖尿病和糖尿病足护理相关的知识。我们使用了 OpenAI 的 GPT-4,并将 Pinecone 作为向量数据库。美国国立卫生研究院糖尿病自我管理教育国家标准是我们知识库的基础。该模型的输出结果通过专家评审与既定指南和文献进行了验证。我们使用 58 个关键词选择了 295 篇文章,并根据 175 个不同主题的问题对模型进行了测试:研究表明,通过适当的内容量和少量的学习提示,RAG 模型的准确率达到了 98%,证实了其提供用户友好、易于理解的医疗信息的能力:RAG模型是向公众提供可靠医学知识的一种有前途的工具,可用于糖尿病的自我教育和自我管理,这突出了人工智能应用中内容验证和创新提示工程的重要性。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Building Trustworthy Generative Artificial Intelligence for Diabetes Care and Limb Preservation: A Medical Knowledge Extraction Case.

Background: Large language models (LLMs) offer significant potential in medical information extraction but carry risks of generating incorrect information. This study aims to develop and validate a retriever-augmented generation (RAG) model that provides accurate medical knowledge about diabetes and diabetic foot care to laypersons with an eighth-grade literacy level. Improving health literacy through patient education is paramount to addressing the problem of limb loss in the diabetic population. In addition to affecting patient well-being through improved outcomes, improved physician well-being is an important outcome of a self-management model for patient health education.

Methods: We used an RAG architecture and built a question-and-answer artificial intelligence (AI) model to extract knowledge in response to questions pertaining to diabetes and diabetic foot care. We utilized GPT-4 by OpenAI, with Pinecone as a vector database. The NIH National Standards for Diabetes Self-Management Education served as the basis for our knowledge base. The model's outputs were validated through expert review against established guidelines and literature. Fifty-eight keywords were used to select 295 articles and the model was tested against 175 questions across topics.

Results: The study demonstrated that with appropriate content volume and few-shot learning prompts, the RAG model achieved 98% accuracy, confirming its capability to offer user-friendly and comprehensible medical information.

Conclusion: The RAG model represents a promising tool for delivering reliable medical knowledge to the public which can be used for self-education and self-management for diabetes, highlighting the importance of content validation and innovative prompt engineering in AI applications.

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来源期刊
Journal of Diabetes Science and Technology
Journal of Diabetes Science and Technology Medicine-Internal Medicine
CiteScore
7.50
自引率
12.00%
发文量
148
期刊介绍: The Journal of Diabetes Science and Technology (JDST) is a bi-monthly, peer-reviewed scientific journal published by the Diabetes Technology Society. JDST covers scientific and clinical aspects of diabetes technology including glucose monitoring, insulin and metabolic peptide delivery, the artificial pancreas, digital health, precision medicine, social media, cybersecurity, software for modeling, physiologic monitoring, technology for managing obesity, and diagnostic tests of glycation. The journal also covers the development and use of mobile applications and wireless communication, as well as bioengineered tools such as MEMS, new biomaterials, and nanotechnology to develop new sensors. Articles in JDST cover both basic research and clinical applications of technologies being developed to help people with diabetes.
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