Document Type
Article
Publication Date
11-30-2024
Publication Title
Academic Radiology
Abstract
Generative artificial intelligence, including large language models (LLMs), holds immense potential to enhance healthcare, medical education, and health research. Recognizing the transformative opportunities and potential risks afforded by LLMs, the Association of Academic Radiology-Radiology Research Alliance convened a task force to explore the promise and pitfalls of using LLMs such as ChatGPT in radiology. This white paper explores the impact of LLMs on radiology education, highlighting their potential to enrich curriculum development, teaching and learning, and learner assessment. Despite these advantages, the implementation of LLMs presents challenges, including limits on accuracy and transparency, the risk of misinformation, data privacy issues, and potential biases, which must be carefully considered. We provide recommendations for the successful integration of LLMs and LLM-based educational tools into radiology education programs, emphasizing assessment of the technological readiness of LLMs for specific use cases, structured planning, regular evaluation, faculty development, increased training opportunities, academic-industry collaboration, and research on best practices for employing LLMs in education.
PubMed ID
39616097
Creative Commons License
This work is licensed under a Creative Commons Attribution-NonCommercial-No Derivative Works 4.0 International License.
Recommended Citation
Ballard, David H.; Antigua-Made, Alexander; Barre, Emily; Edney, Elizabeth; Gordon, Emile B.; Kelahan, Linda; Lodhi, Taha; Martin, Jonathan G.; Ozkan, Melis; Serdynski, Kevin; Spieler, Bradley; Zhu, Daphne; and Adams, Scott J., "Impact of ChatGPT and Large Language Models on Radiology Education: Association of Academic Radiology-Radiology Research Alliance Task Force White Paper" (2024). School of Medicine Faculty Publications. 3242.
https://digitalscholar.lsuhsc.edu/som_facpubs/3242
10.1016/j.acra.2024.10.023