DOAJ Open Access 2024

ChatGPT-4 Omni Performance in USMLE Disciplines and Clinical Skills: Comparative Analysis

Brenton T Bicknell Danner Butler Sydney Whalen James Ricks Cory J Dixon +9 lainnya

Abstrak

Abstract BackgroundRecent studies, including those by the National Board of Medical Examiners, have highlighted the remarkable capabilities of recent large language models (LLMs) such as ChatGPT in passing the United States Medical Licensing Examination (USMLE). However, there is a gap in detailed analysis of LLM performance in specific medical content areas, thus limiting an assessment of their potential utility in medical education. ObjectiveThis study aimed to assess and compare the accuracy of successive ChatGPT versions (GPT-3.5, GPT-4, and GPT-4 Omni) in USMLE disciplines, clinical clerkships, and the clinical skills of diagnostics and management. MethodsThis study used 750 clinical vignette-based multiple-choice questions to characterize the performance of successive ChatGPT versions (ChatGPT 3.5 [GPT-3.5], ChatGPT 4 [GPT-4], and ChatGPT 4 Omni [GPT-4o]) across USMLE disciplines, clinical clerkships, and in clinical skills (diagnostics and management). Accuracy was assessed using a standardized protocol, with statistical analyses conducted to compare the models’ performances. ResultsGPT-4o achieved the highest accuracy across 750 multiple-choice questions at 90.4%, outperforming GPT-4 and GPT-3.5, which scored 81.1% and 60.0%, respectively. GPT-4o’s highest performances were in social sciences (95.5%), behavioral and neuroscience (94.2%), and pharmacology (93.2%). In clinical skills, GPT-4o’s diagnostic accuracy was 92.7% and management accuracy was 88.8%, significantly higher than its predecessors. Notably, both GPT-4o and GPT-4 significantly outperformed the medical student average accuracy of 59.3% (95% CI 58.3‐60.3). ConclusionsGPT-4o’s performance in USMLE disciplines, clinical clerkships, and clinical skills indicates substantial improvements over its predecessors, suggesting significant potential for the use of this technology as an educational aid for medical students. These findings underscore the need for careful consideration when integrating LLMs into medical education, emphasizing the importance of structured curricula to guide their appropriate use and the need for ongoing critical analyses to ensure their reliability and effectiveness.

Penulis (14)

B

Brenton T Bicknell

D

Danner Butler

S

Sydney Whalen

J

James Ricks

C

Cory J Dixon

A

Abigail B Clark

O

Olivia Spaedy

A

Adam Skelton

N

Neel Edupuganti

L

Lance Dzubinski

H

Hudson Tate

G

Garrett Dyess

B

Brenessa Lindeman

L

Lisa Soleymani Lehmann

Format Sitasi

Bicknell, B.T., Butler, D., Whalen, S., Ricks, J., Dixon, C.J., Clark, A.B. et al. (2024). ChatGPT-4 Omni Performance in USMLE Disciplines and Clinical Skills: Comparative Analysis. https://doi.org/10.2196/63430

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Informasi Jurnal
Tahun Terbit
2024
Sumber Database
DOAJ
DOI
10.2196/63430
Akses
Open Access ✓