OpenAlex · Aktualisierung stündlich · Letzte Aktualisierung: 12.03.2026, 09:21

Dies ist eine Übersichtsseite mit Metadaten zu dieser wissenschaftlichen Arbeit. Der vollständige Artikel ist beim Verlag verfügbar.

How Does ChatGPT Perform on the Medical Licensing Exams? The Implications of Large Language Models for Medical Education and Knowledge Assessment

2022·167 ZitationenOpen Access
Volltext beim Verlag öffnen

167

Zitationen

7

Autoren

2022

Jahr

Abstract

ABSTRACT Background ChatGPT is a 175 billion parameter natural language processing model which can generate conversation style responses to user input. Objective To evaluate the performance of ChatGPT on questions within the scope of United States Medical Licensing Examination (USMLE) Step 1 and Step 2 exams, as well as analyze responses for user interpretability. Methods We used two novel sets of multiple choice questions to evaluate ChatGPT’s performance, each with questions pertaining to Step 1 and Step 2. The first was derived from AMBOSS, a commonly used question bank for medical students, which also provides statistics on question difficulty and the performance on an exam relative to the userbase. The second, was the National Board of Medical Examiners (NBME) Free 120-question exams. After prompting ChatGPT with each question, ChatGPT’s selected answer was recorded, and the text output evaluated across three qualitative metrics: logical justification of the answer selected, presence of information internal to the question, and presence of information external to the question. Results On the four datasets, AMBOSS-Step1, AMBOSS-Step2, NBME-Free-Step1, and NBMEFree-Step2, ChatGPT achieved accuracies of 44%, 42%, 64.4%, and 57.8%. The model demonstrated a significant decrease in performance as question difficulty increased (P=.012) within the AMBOSSStep1 dataset. We found logical justification for ChatGPT’s answer selection was present in 100% of outputs. Internal information to the question was present in > 90% of all questions. The presence of information external to the question was respectively 54.5% and 27% lower for incorrect relative to correct answers on the NBME-Free-Step1 and NBME-Free-Step2 datasets (P<=.001). Conclusion ChatGPT marks a significant improvement in natural language processing models on the tasks of medical question answering. By performing at greater than 60% threshold on the NBME-FreeStep-1 dataset we show that the model is comparable to a third year medical student. Additionally, due to the dialogic nature of the response to questions, we demonstrate ChatGPT’s ability to provide reasoning and informational context across the majority of answers. These facts taken together make a compelling case for the potential applications of ChatGPT as a medical education tool.

Ähnliche Arbeiten