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A list of 34 questions and answers
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2023
Jahr
Abstract
In this study, the research team meticulously reviewed and synthesized 34 questions derived from the “Expert Consensus On Optimizing Ankle Fracture Treatment Protocol Under ERAS Principles.” These questions were input in Chinese into two advanced language models, ChatGPT and iFlytek Spark, to elicit AI responses. Subsequently, two trauma orthopedic physicians, each with over 15 years of experience, compared the responses from both AI models with the recommendations from the expert consensus. The objective was to ascertain whether the AI-generated answers aligned with the expert consensus and to analyze any disparities therein. This approach aimed to evaluate the extent to which AI can replicate expert-level guidance in the context of ankle fracture treatment under ERAS (Enhanced Recovery After Surgery) guidelines.
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