Armitage Richard C
Academic Unit of Population and Lifespan Sciences, School of Medicine, Clinical Sciences Building, University of Nottingham, Nottingham, Nottinghamshire, UK.
J Eval Clin Pract. 2025 Feb;31(1):e14250. doi: 10.1111/jep.14250.
The potential applications of large language models (LLMs)-a form of generative artificial intelligence (AI)-in medicine and health care are being increasingly explored by medical practitioners and health care researchers.
This paper considers the ethical implications of LLMs for medical practitioners in their delivery of clinical care through the ethical framework of principlism.
It finds that, regarding beneficence, LLMs can improve patient outcomes through supporting administrative tasks that surround patient care, and by directly informing clinical care. Simultaneously, LLMs can cause patient harm through various mechanisms, meaning non-maleficence would prevent their deployment in the absence of sufficient risk mitigation. Regarding autonomy, medical practitioners must inform patients if their medical care will be influenced by LLMs for their consent to be informed, and alternative care uninfluenced by LLMs must be available for patients who withhold such consent. Finally, regarding justice, LLMs could promote the standardisation of care within individual medical practitioners by mitigating any biases harboured by those practitioners and by protecting against human factors, while also up-skilling existing medical practitioners in low-resource settings to reduce global health disparities.
Accordingly, this paper finds a strong case for the incorporation of LLMs into clinical practice and, if their risk of patient harm is sufficiently mitigated, this incorporation might be ethically required, at least according to principlism.
医学从业者和医疗保健研究人员越来越多地探索大语言模型(LLMs)——一种生成式人工智能(AI)形式——在医学和医疗保健中的潜在应用。
本文通过原则主义的伦理框架,探讨了大语言模型在医学从业者提供临床护理过程中的伦理影响。
研究发现,就行善原则而言,大语言模型可以通过支持围绕患者护理的管理任务以及直接为临床护理提供信息来改善患者治疗效果。同时,大语言模型可能通过各种机制对患者造成伤害,这意味着在没有充分降低风险的情况下,不伤害原则将阻止其应用。就自主原则而言,医学从业者必须告知患者其医疗护理是否会受到大语言模型的影响,以便患者能够做出知情同意,并且对于拒绝此类同意的患者,必须提供不受大语言模型影响的替代护理。最后,就公正原则而言,大语言模型可以通过减轻个体医学从业者所存在的任何偏见以及防范人为因素,来促进个体医学从业者内部护理的标准化,同时还可以提升资源匮乏地区现有医学从业者的技能,以减少全球健康差距。
因此,本文发现有充分理由将大语言模型纳入临床实践,如果其对患者造成伤害的风险能够得到充分降低,那么至少根据原则主义,这种纳入在伦理上可能是必要的。