Can Large Language Models (LLMs) Predict the Appropriate Treatment of Acute Hip Fractures in Older Adults? Comparing Appropriate Use Criteria With Recommendations From ChatGPT

Katrina S. Nietsch, Nancy Shrestha, Laura C. Mazudie Ndjonko, Wasil Ahmed, Mateo Restrepo Mejia, Bashar Zaidat, Renee Ren, Akiro H. Duey, Samuel Q. Li, Jun S. Kim, Krystin A. Hidden, Samuel K. Cho

Research output: Contribution to journalArticlepeer-review

Abstract

Background: Acute hip fractures are a public health problem affecting primarily older adults. Chat Generative Pretrained Transformer may be useful in providing appropriate clinical recommendations for beneficial treatment. Objective: To evaluate the accuracy of Chat Generative Pretrained Transformer (ChatGPT)-4.0 by comparing its appropriateness scores for acute hip fractures with the American Academy of Orthopaedic Surgeons (AAOS) Appropriate Use Criteria given 30 patient scenarios. "Appropriateness"indicates the unexpected health benefits of treatment exceed the expected negative consequences by a wide margin. Methods: Using the AAOS Appropriate Use Criteria as the benchmark, numerical scores from 1 to 9 assessed appropriateness. For each patient scenario, ChatGPT-4.0 was asked to assign an appropriate score for six treatments to manage acute hip fractures. Results: Thirty patient scenarios were evaluated for 180 paired scores. Comparing ChatGPT-4.0 with AAOS scores, there was a positive correlation for multiple cannulated screw fixation, total hip arthroplasty, hemiarthroplasty, and long cephalomedullary nails. Statistically significant differences were observed only between scores for long cephalomedullary nails. Conclusion: ChatGPT-4.0 scores were not concordant with AAOS scores, overestimating the appropriateness of total hip arthroplasty, hemiarthroplasty, and long cephalomedullary nails, and underestimating the other three. ChatGPT-4.0 was inadequate in selecting an appropriate treatment deemed acceptable, most reasonable, and most likely to improve patient outcomes.

Original languageEnglish
Article numbere24.00206
JournalJournal of the American Academy of Orthopaedic Surgeons Global Research and Reviews
Volume8
Issue number8
DOIs
StatePublished - 9 Aug 2024

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