Bridging the gap: a practical step-by-step approach to warrant safe implementation of large language models in healthcare.

IF 4.7 Q2 COMPUTER SCIENCE, ARTIFICIAL INTELLIGENCE Frontiers in Artificial Intelligence Pub Date : 2025-01-27 eCollection Date: 2025-01-01 DOI:10.3389/frai.2025.1504805
Jessica D Workum, Davy van de Sande, Diederik Gommers, Michel E van Genderen
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Abstract

Large Language Models (LLMs) offer considerable potential to enhance various aspects of healthcare, from aiding with administrative tasks to clinical decision support. However, despite the growing use of LLMs in healthcare, a critical gap persists in clear, actionable guidelines available to healthcare organizations and providers to ensure their responsible and safe implementation. In this paper, we propose a practical step-by-step approach to bridge this gap and support healthcare organizations and providers in warranting the responsible and safe implementation of LLMs into healthcare. The recommendations in this manuscript include protecting patient privacy, adapting models to healthcare-specific needs, adjusting hyperparameters appropriately, ensuring proper medical prompt engineering, distinguishing between clinical decision support (CDS) and non-CDS applications, systematically evaluating LLM outputs using a structured approach, and implementing a solid model governance structure. We furthermore propose the ACUTE mnemonic; a structured approach for assessing LLM responses based on Accuracy, Consistency, semantically Unaltered outputs, Traceability, and Ethical considerations. Together, these recommendations aim to provide healthcare organizations and providers with a clear pathway for the responsible and safe implementation of LLMs into clinical practice.

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弥合差距:一种实用的循序渐进的方法,保证在医疗保健中安全实现大型语言模型。
大型语言模型(llm)为增强医疗保健的各个方面提供了巨大的潜力,从辅助管理任务到临床决策支持。然而,尽管在医疗保健领域越来越多地使用法学硕士,但医疗保健组织和提供者仍然缺乏明确、可操作的指导方针,以确保其负责任和安全的实施。在本文中,我们提出了一种实用的逐步方法来弥合这一差距,并支持医疗保健组织和提供商保证在医疗保健中负责任和安全地实施llm。本文中的建议包括保护患者隐私,使模型适应医疗保健特定需求,适当调整超参数,确保适当的医疗提示工程,区分临床决策支持(CDS)和非CDS应用,使用结构化方法系统地评估法学硕士输出,并实施坚实的模型治理结构。我们进一步提出了急性助记符;一种基于准确性、一致性、语义不变输出、可追溯性和道德考虑来评估法学硕士响应的结构化方法。总之,这些建议旨在为医疗保健组织和提供者提供明确的途径,以负责任和安全地将llm实施到临床实践中。
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来源期刊
CiteScore
6.10
自引率
2.50%
发文量
272
审稿时长
13 weeks
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