3.8 Article

ChatGPT Versus Consultants: Blinded Evaluation on Answering Otorhinolaryngology Case-Based Questions

Journal

JMIR MEDICAL EDUCATION
Volume 9, Issue -, Pages -

Publisher

JMIR PUBLICATIONS, INC
DOI: 10.2196/49183

Keywords

large language models; LLMs; LLM; artificial intelligence; AI; ChatGPT; otorhinolaryngology; ORL; digital health; chatbots; global health; low-and middle-income countries; telemedicine; telehealth; language model; chatbot

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This study evaluated the performance of ChatGPT in answering clinical case-based questions in otorhinolaryngology (ORL) and compared it with the answers from ORL consultants. The study found that although ChatGPT provided longer answers, its medical adequacy and conciseness were significantly lower compared to the answers from ORL consultants.
Background: Large language models (LLMs), such as ChatGPT (Open AI), are increasingly used in medicine and supplement standard search engines as information sources. This leads to more consultations of LLMs about personal medical symptoms.Objective: This study aims to evaluate ChatGPT's performance in answering clinical case-based questions in otorhinolaryngology (ORL) in comparison to ORL consultants' answers.Methods: We used 41 case-based questions from established ORL study books and past German state examinations for doctors. The questions were answered by both ORL consultants and ChatGPT 3. ORL consultants rated all responses, except their own, on medical adequacy, conciseness, coherence, and comprehensibility using a 6-point Likert scale. They also identified (in a blinded setting) if the answer was created by an ORL consultant or ChatGPT. Additionally, the character count was compared. Due to the rapidly evolving pace of technology, a comparison between responses generated by ChatGPT 3 and ChatGPT 4 wasResults: Ratings in all categories were significantly higher for ORL consultants (P<.001). Although inferior to the scores of the ORL consultants, ChatGPT's scores were relatively higher in semantic categories (conciseness, coherence, and comprehensibility) compared to medical adequacy. ORL consultants identified ChatGPT as the source correctly in 98.4% (121/123) of cases. ChatGPT's answers had a significantly higher character count compared to ORL consultants (P<.001). Comparison between responses generated by ChatGPT 3 and ChatGPT 4 showed a slight improvement in medical accuracy as well as a better coherence of the answers provided. Contrarily, neither the conciseness (P=.06) nor the comprehensibility (P=.08) improved significantly despite the significant increase in the mean amount of characters by 52.5% (n= (1470-964)/964; P<.001).Conclusions: While ChatGPT provided longer answers to medical problems, medical adequacy and conciseness were significantly lower compared to ORL consultants' answers. LLMs have potential as augmentative tools for medical care, but their consultation for medical problems carries a high risk of misinformation as their high semantic quality may mask contextual deficits.

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