TY - JOUR
T1 - Comparing ChatGPT-4 and a Paediatric Intensive Care Specialist in Responding to Medical Education Questions
T2 - A Multicenter Evaluation
AU - Yitzhaki, Shai
AU - Peled, Nadav
AU - Kaplan, Eytan
AU - Kadmon, Gili
AU - Nahum, Elhanan
AU - Gendler, Yulia
AU - Weissbach, Avichai
N1 - Publisher Copyright:
© 2025 Paediatrics and Child Health Division (The Royal Australasian College of Physicians).
PY - 2025/7
Y1 - 2025/7
N2 - Objective: To compare the performance of the Generative Pre-trained Transformer model 4 (ChatGPT-4) with that of a paediatric intensive care unit (PICU) specialist in responding to open-ended medical education questions. Methods: A comparative analysis was conducted using 100 educational questions sourced from a PICU trainee WhatsApp forum, covering factual knowledge and clinical reasoning. Ten PICU specialists from multiple tertiary paediatric centres independently evaluated 20 sets of paired responses from ChatGPT-4 and a PICU specialist (the original respondent to the forum questions), assessing overall superiority, completeness, accuracy, and integration potential. Results: After excluding one question requiring a visual aid, 198 paired evaluations were made (96 factual knowledge and 102 clinical reasoning). ChatGPT-4's responses were significantly longer than those of the PICU specialist (median words: 189 vs. 41; p < 0.0001). ChatGPT-4 was preferred in 60% of factual knowledge comparisons (p < 0.001), while the PICU specialist's responses were preferred in 67% of clinical reasoning comparisons (p < 0.0001). ChatGPT-4 demonstrated superior completeness in factual knowledge (p = 0.02) but lower accuracy in clinical reasoning (p < 0.0001). Integration of both answers was favoured in 37% of cases (95% CI, 31%–44%). Conclusions: ChatGPT-4 shows promise as a tool for factual medical education in the PICU, excelling in completeness. However, it requires oversight in clinical reasoning tasks, where the PICU specialist's responses remain superior. Expert review is essential before using ChatGPT-4 independently in PICU education and in other similarly underexplored medical fields.
AB - Objective: To compare the performance of the Generative Pre-trained Transformer model 4 (ChatGPT-4) with that of a paediatric intensive care unit (PICU) specialist in responding to open-ended medical education questions. Methods: A comparative analysis was conducted using 100 educational questions sourced from a PICU trainee WhatsApp forum, covering factual knowledge and clinical reasoning. Ten PICU specialists from multiple tertiary paediatric centres independently evaluated 20 sets of paired responses from ChatGPT-4 and a PICU specialist (the original respondent to the forum questions), assessing overall superiority, completeness, accuracy, and integration potential. Results: After excluding one question requiring a visual aid, 198 paired evaluations were made (96 factual knowledge and 102 clinical reasoning). ChatGPT-4's responses were significantly longer than those of the PICU specialist (median words: 189 vs. 41; p < 0.0001). ChatGPT-4 was preferred in 60% of factual knowledge comparisons (p < 0.001), while the PICU specialist's responses were preferred in 67% of clinical reasoning comparisons (p < 0.0001). ChatGPT-4 demonstrated superior completeness in factual knowledge (p = 0.02) but lower accuracy in clinical reasoning (p < 0.0001). Integration of both answers was favoured in 37% of cases (95% CI, 31%–44%). Conclusions: ChatGPT-4 shows promise as a tool for factual medical education in the PICU, excelling in completeness. However, it requires oversight in clinical reasoning tasks, where the PICU specialist's responses remain superior. Expert review is essential before using ChatGPT-4 independently in PICU education and in other similarly underexplored medical fields.
KW - generative pre-trained transformer model 4 (chat GPT-4)
KW - large language model
KW - medical education
KW - paediatrics artificial intelligence
UR - http://www.scopus.com/inward/record.url?scp=105004345884&partnerID=8YFLogxK
U2 - 10.1111/jpc.70080
DO - 10.1111/jpc.70080
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AN - SCOPUS:105004345884
SN - 1034-4810
VL - 61
SP - 1084
EP - 1089
JO - Journal of Paediatrics and Child Health
JF - Journal of Paediatrics and Child Health
IS - 7
ER -