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Performance of a Large Language Model in the Generation of Clinical Guidelines for Antibiotic Prophylaxis in Spine Surgery

Bashar Zaidat, Nancy Shrestha, Ashley M. Rosenberg, Wasil Ahmed, Rami Rajjoub, Timothy Hoang, Mateo Restrepo Mejia, Akiro H. Duey, Justin E. Tang, Jun Kim, Samuel K. Cho

2024Neurospine29 citationsDOIOpen Access PDF

Abstract

OBJECTIVE: Large language models, such as chat generative pre-trained transformer (ChatGPT), have great potential for streamlining medical processes and assisting physicians in clinical decision-making. This study aimed to assess the potential of ChatGPT's 2 models (GPT-3.5 and GPT-4.0) to support clinical decision-making by comparing its responses for antibiotic prophylaxis in spine surgery to accepted clinical guidelines. METHODS: ChatGPT models were prompted with questions from the North American Spine Society (NASS) Evidence-based Clinical Guidelines for Multidisciplinary Spine Care for Antibiotic Prophylaxis in Spine Surgery (2013). Its responses were then compared and assessed for accuracy. RESULTS: Of the 16 NASS guideline questions concerning antibiotic prophylaxis, 10 responses (62.5%) were accurate in ChatGPT's GPT-3.5 model and 13 (81%) were accurate in GPT-4.0. Twenty-five percent of GPT-3.5 answers were deemed as overly confident while 62.5% of GPT-4.0 answers directly used the NASS guideline as evidence for its response. CONCLUSION: ChatGPT demonstrated an impressive ability to accurately answer clinical questions. GPT-3.5 model's performance was limited by its tendency to give overly confident responses and its inability to identify the most significant elements in its responses. GPT-4.0 model's responses had higher accuracy and cited the NASS guideline as direct evidence many times. While GPT-4.0 is still far from perfect, it has shown an exceptional ability to extract the most relevant research available compared to GPT-3.5. Thus, while ChatGPT has shown far-reaching potential, scrutiny should still be exercised regarding its clinical use at this time.

Topics & Concepts

GuidelineMedicineScrutinyMultidisciplinary approachAntibiotic prophylaxisIntensive care medicineClinical decision makingMedical physicsAntibioticsPathologyBiologySocial scienceMicrobiologyLawPolitical scienceSociologyArtificial Intelligence in Healthcare and EducationClinical Reasoning and Diagnostic SkillsPatient-Provider Communication in Healthcare
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