Transforming Healthcare Education: Harnessing Large Language Models for Frontline Health Worker Capacity Building using Retrieval-Augmented Generation

Yasmina Al Ghadban, Huiqi (Yvonne) Lu, Uday Adavi, Ankita Sharma, Sridevi Gara, Neelanjana Das, Bhaskar Kumar, Renu John, Praveen Devarsetty, Jane E. Hirst
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Abstract

In recent years, large language models (LLMs) have emerged as a transformative force in several domains, including medical education and healthcare. This paper presents a case study on the practical application of using retrieval-augmented generation (RAG) based models for enhancing healthcare education in low- and middle-income countries. The model described in this paper, SMARThealth GPT, stems from the necessity for accessible and locally relevant medical information to aid community health workers in delivering high-quality maternal care. We describe the development process of the complete RAG pipeline, including the creation of a knowledge base of Indian pregnancy-related guidelines, knowledge embedding retrieval, parameter selection and optimization, and answer generation. This case study highlights the potential of LLMs in building frontline healthcare worker capacity and enhancing guideline-based health education; and offers insights for similar applications in resource-limited settings. It serves as a reference for machine learning scientists, educators, healthcare professionals, and policymakers aiming to harness the power of LLMs for substantial educational improvement.
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改革医疗保健教育:利用检索增强生成技术,利用大型语言模型促进一线卫生工作者的能力建设
近年来,大型语言模型(LLMs)已成为医学教育和医疗保健等多个领域的变革力量。本文介绍了基于检索增强生成(RAG)模型的实际应用案例研究,以加强中低收入国家的医疗保健教育。本文所述的 SMARThealth GPT 模型源于获取与当地相关的医疗信息以帮助社区卫生工作者提供高质量孕产妇护理的必要性。我们描述了完整的 RAG 管道的开发过程,包括创建印度妊娠相关指南的知识库、知识嵌入检索、参数选择和优化以及答案生成。本案例研究强调了 LLM 在建设一线医护人员能力和加强基于指南的健康教育方面的潜力,并为资源有限环境中的类似应用提供了启示。它为机器学习科学家、教育工作者、医疗保健专业人员和决策者提供了参考,这些人都希望利用 LLMs 的力量来大幅改善教育。
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