Accepted for/Published in: JMIR Medical Education
Date Submitted: Jul 14, 2024
Date Accepted: Dec 3, 2024
Comparative Study of Large Language Models in Radiology Board Exams: Performance Evaluation and Implications
ABSTRACT
Background:
Artificial Intelligence advancements have enabled Large Language Models to significantly impact radiology education and diagnostic accuracy.
Objective:
This study evaluates the performance of mainstream Large Language Models, including GPT-4, Claude, Bard, Tongyi Qianwen, and Gemini Pro, in radiology board exams.
Methods:
A comparative analysis of 150 multiple-choice questions from radiology board exams without images was conducted. Models were assessed on accuracy in text-based questions categorized by cognitive levels and medical specialties using chi-square tests and ANOVA.
Results:
GPT-4 achieved the highest accuracy (83.3%), significantly outperforming others. Tongyi Qianwen also performed well (70.7%). Performance varied across question types and specialties, with GPT-4 excelling in both lower-order and higher-order questions, while Claude and Bard struggled with complex diagnostic questions.
Conclusions:
GPT-4 and Tongyi Qianwen show promise in medical education and training. The study emphasizes the need for domain-specific training datasets to enhance large models' effectiveness in specialized fields like radiology.
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Copyright
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