A Survey of Clinicians' Views of the Utility of Large Language Models.

IF 2.1 2区 医学 Q4 MEDICAL INFORMATICS
Applied Clinical Informatics Pub Date : 2024-03-01 Epub Date: 2024-03-05 DOI:10.1055/a-2281-7092
Matthew Spotnitz, Betina Idnay, Emily R Gordon, Rebecca Shyu, Gongbo Zhang, Cong Liu, James J Cimino, Chunhua Weng
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引用次数: 0

Abstract

Objectives:  Large language models (LLMs) like Generative pre-trained transformer (ChatGPT) are powerful algorithms that have been shown to produce human-like text from input data. Several potential clinical applications of this technology have been proposed and evaluated by biomedical informatics experts. However, few have surveyed health care providers for their opinions about whether the technology is fit for use.

Methods:  We distributed a validated mixed-methods survey to gauge practicing clinicians' comfort with LLMs for a breadth of tasks in clinical practice, research, and education, which were selected from the literature.

Results:  A total of 30 clinicians fully completed the survey. Of the 23 tasks, 16 were rated positively by more than 50% of the respondents. Based on our qualitative analysis, health care providers considered LLMs to have excellent synthesis skills and efficiency. However, our respondents had concerns that LLMs could generate false information and propagate training data bias.Our survey respondents were most comfortable with scenarios that allow LLMs to function in an assistive role, like a physician extender or trainee.

Conclusion:  In a mixed-methods survey of clinicians about LLM use, health care providers were encouraging of having LLMs in health care for many tasks, and especially in assistive roles. There is a need for continued human-centered development of both LLMs and artificial intelligence in general.

临床医生对大型语言模型实用性的看法调查。
目的:像 ChatGPT 这样的大型语言模型(LLM)是一种功能强大的算法,已被证明能从输入数据中生成类人文本。生物医学信息学专家已经提出并评估了该技术的许多潜在临床应用。然而,很少有人调查过医疗服务提供者对该技术是否适合使用的看法:我们分发了一份经过验证的混合方法调查表,以评估临床医生在临床实践、研究和教育中使用 LLM 的舒适度,这些任务都是从文献中挑选出来的:共有 30 名临床医生完成了调查。在 23 项任务中,有 16 项任务得到了 50% 以上受访者的好评。根据我们的定性分析,医疗服务提供者认为法学硕士具有出色的综合技能和效率。但是,我们的受访者担心 LLM 可能会产生错误信息并传播训练数据偏差:讨论:我们的调查对象对允许 LLMs 以辅助角色(如医生临时工或实习生)发挥作用的情景最为满意:在对临床医生进行的关于使用 LLM 的独特、严格和全面的混合方法调查中,医疗服务提供者对在医疗服务中使用 LLM 执行多项任务,尤其是辅助性任务表示鼓励。有必要继续以人为本,开发 LLM 和人工智能(AI)。
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来源期刊
Applied Clinical Informatics
Applied Clinical Informatics MEDICAL INFORMATICS-
CiteScore
4.60
自引率
24.10%
发文量
132
期刊介绍: ACI is the third Schattauer journal dealing with biomedical and health informatics. It perfectly complements our other journals Öffnet internen Link im aktuellen FensterMethods of Information in Medicine and the Öffnet internen Link im aktuellen FensterYearbook of Medical Informatics. The Yearbook of Medical Informatics being the “Milestone” or state-of-the-art journal and Methods of Information in Medicine being the “Science and Research” journal of IMIA, ACI intends to be the “Practical” journal of IMIA.
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