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Artificial Intelligence in Surgical Education: A Pilot Study Using ASCRS Guideline-Derived Questions
0
Zitationen
5
Autoren
2026
Jahr
Abstract
< .0001 for both models). Both models missed the same question, yielding perfect inter-model agreement (κ = 1.0).ConclusionIn this focused pilot study restricted to ASCRS anorectal disease guidelines, both LLMs demonstrated near-perfect and statistically equivalent accuracy. These findings suggest that contemporary LLMs can accurately apply subspecialty surgical guidelines within a narrow domain, though broader, multi-guideline evaluations are required before generalization.
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