• Ann. Intern. Med. · Feb 2024

    Review

    Large Language Models in Medicine: The Potentials and Pitfalls : A Narrative Review.

    • Jesutofunmi A Omiye, Haiwen Gui, Shawheen J Rezaei, James Zou, and Roxana Daneshjou.
    • Department of Dermatology and Department of Biomedical Data Science, Stanford University, Stanford, California (J.A.O., R.D.).
    • Ann. Intern. Med. 2024 Feb 1; 177 (2): 210220210-220.

    AbstractLarge language models (LLMs) are artificial intelligence models trained on vast text data to generate humanlike outputs. They have been applied to various tasks in health care, ranging from answering medical examination questions to generating clinical reports. With increasing institutional partnerships between companies producing LLMs and health systems, the real-world clinical application of these models is nearing realization. As these models gain traction, health care practitioners must understand what LLMs are, their development, their current and potential applications, and the associated pitfalls in a medical setting. This review, coupled with a tutorial, provides a comprehensive yet accessible overview of these areas with the aim of familiarizing health care professionals with the rapidly changing landscape of LLMs in medicine. Furthermore, the authors highlight active research areas in the field that promise to improve LLMs' usability in health care contexts.

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