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Diagnostic Performance of ChatGPT-4o in Analyzing Oral Mucosal Lesions: A Comparative Study with Experts

Academic Article
Publication Date:
2025
abstract:
Background and Objectives: this pilot study aimed to evaluate the diagnostic accuracy of ChatGPT-4o in analyzing oral mucosal lesions from clinical images. Materials and Methods: a total of 110 clinical images, including 100 pathological lesions and 10 healthy mucosal images, were retrieved from Google Images and analyzed by ChatGPT-4o using a standardized prompt. An expert panel of five clinicians established a reference diagnosis, categorizing lesions as benign or malignant. The AI-generated diagnoses were classified as correct or incorrect and further categorized as plausible or not plausible. The accuracy, sensitivity, specificity, and agreement with the expert panel were analyzed. The Artificial Intelligence Performance Instrument (AIPI) was used to assess the quality of AI-generated recommendations. Results: ChatGPT-4o correctly diagnosed 85% of cases. Among the 15 incorrect diagnoses, 10 were deemed plausible by the expert panel. The AI misclassified three malignant lesions as benign but did not categorize any benign lesions as malignant. Sensitivity and specificity were 91.7% and 100%, respectively. The AIPI score averaged 17.6 ± 1.73, indicating strong diagnostic reasoning. The McNemar test showed no significant differences between AI and expert diagnoses (p = 0.084). Conclusions: In this proof-of-concept pilot study, ChatGPT-4o demonstrated high diagnostic accuracy and strong descriptive capabilities in oral mucosal lesion analysis. A residual 8.3% false-negative rate for malignant lesions underscores the need for specialist oversight; however, the model shows promise as an AI-powered triage aid in settings with limited access to specialized care.
Iris type:
1.1 Articolo in rivista
Keywords:
AI; AI-assisted diagnosis; artificial intelligence; ChatGPT; clinical decision support; large language models; maxillofacial surgery; medical image analysis; oral mucosal lesions; otorhinolaryngology
List of contributors:
Vaira, L. A.; Lechien, J. R.; Maniaci, A.; De Vito, A.; Mayo-Yanez, M.; Troise, S.; Consorti, G.; Chiesa-Estomba, C. M.; Cammaroto, G.; Radulesco, T.; Di Stadio, A.; Tel, A.; Frosolini, A.; Gabriele, G.; Iannella, G.; Saibene, A. M.; Boscolo-Rizzo, P.; Soro, G. M.; Salzano, G.; De Riu, G.
Authors of the University:
DI STADIO ARIANNA
GABRIELE GUIDO
Handle:
https://iris.unilink.it/handle/20.500.14085/57207
Published in:
MEDICINA
Journal
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