2024
DOI: 10.1055/a-2281-7092
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A Survey of Clinicians' Views of the Utility of Large Language Models

Matthew Spotnitz,
Betina Idnay,
Emily R. Gordon
et al.

Abstract: Objective: Large language models (LLMs) like ChatGPT are powerful algorithms that have been shown to produce human-like text from input data. A number of potential clinical applications of this technology have been proposed and evaluated by biomedical informatics experts. However, few have surveyed healthcare providers for their opinions about whether the technology is fit for use. Materials and Methods: We distributed a validated mixed-methods survey to gauge practicing clinicians’ comfort with LLMs for a… Show more

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Cited by 5 publications
(1 citation statement)
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“…Furthermore, integration of generative AI into healthcare is a complex endeavor, requiring stakeholders such as researchers, vendors, health systems, and frontline clinicians to make strategic choices amidst time, resource, and expertise constraints. Prior studies have focused on the use of a generative AI tool to address a specific clinical task, such as answering patient questions or generating discharge summaries, but there has been limited exploration into systematically explore clinicians' views on which specific types of clinical tasks would be most suitable for a generative AI intervention 14 . Additionally, given that the performance of many generative AI models rely on prompt quality, if clinicians are expected to design these inputs, there is a need to assess clinicians' understanding and ability to generate prompts that would yield useful, accurate and relevant outputs 15 .…”
Section: Introductionmentioning
confidence: 99%
“…Furthermore, integration of generative AI into healthcare is a complex endeavor, requiring stakeholders such as researchers, vendors, health systems, and frontline clinicians to make strategic choices amidst time, resource, and expertise constraints. Prior studies have focused on the use of a generative AI tool to address a specific clinical task, such as answering patient questions or generating discharge summaries, but there has been limited exploration into systematically explore clinicians' views on which specific types of clinical tasks would be most suitable for a generative AI intervention 14 . Additionally, given that the performance of many generative AI models rely on prompt quality, if clinicians are expected to design these inputs, there is a need to assess clinicians' understanding and ability to generate prompts that would yield useful, accurate and relevant outputs 15 .…”
Section: Introductionmentioning
confidence: 99%