Influence of a Large Language Model on Diagnostic Reasoning: A Randomized Clinical Vignette Study
medRxiv the preprint server for health sciences(2024)
Stanford Center for Biomedical Informatics Research
Abstract
ABSTRACTImportanceDiagnostic errors are common and cause significant morbidity. Large language models (LLMs) have shown promise in their performance on both multiple-choice and open-ended medical reasoning examinations, but it remains unknown whether the use of such tools improves diagnostic reasoning.ObjectiveTo assess the impact of the GPT-4 LLM on physicians’ diagnostic reasoning compared to conventional resources.DesignMulti-center, randomized clinical vignette study.SettingThe study was conducted using remote video conferencing with physicians across the country and in-person participation across multiple academic medical institutions.ParticipantsResident and attending physicians with training in family medicine, internal medicine, or emergency medicine.Intervention(s)Participants were randomized to access GPT-4 in addition to conventional diagnostic resources or to just conventional resources. They were allocated 60 minutes to review up to six clinical vignettes adapted from established diagnostic reasoning exams.Main Outcome(s) and Measure(s)The primary outcome was diagnostic performance based on differential diagnosis accuracy, appropriateness of supporting and opposing factors, and next diagnostic evaluation steps. Secondary outcomes included time spent per case and final diagnosis.Results50 physicians (26 attendings, 24 residents) participated, with an average of 5.2 cases completed per participant. The median diagnostic reasoning score per case was 76.3 percent (IQR 65.8 to 86.8) for the GPT-4 group and 73.7 percent (IQR 63.2 to 84.2) for the conventional resources group, with an adjusted difference of 1.6 percentage points (95% CI -4.4 to 7.6; p=0.60). The median time spent on cases for the GPT-4 group was 519 seconds (IQR 371 to 668 seconds), compared to 565 seconds (IQR 456 to 788 seconds) for the conventional resources group, with a time difference of -82 seconds (95% CI -195 to 31; p=0.20). GPT-4 alone scored 15.5 percentage points (95% CI 1.5 to 29, p=0.03) higher than the conventional resources group.Conclusions and RelevanceIn a clinical vignette-based study, the availability of GPT-4 to physicians as a diagnostic aid did not significantly improve clinical reasoning compared to conventional resources, although it may improve components of clinical reasoning such as efficiency. GPT-4 alone demonstrated higher performance than both physician groups, suggesting opportunities for further improvement in physician-AI collaboration in clinical practice.
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Key words
Clinical Reasoning,Medical Decision Making,Clinical Decision Support,Diagnostic Errors,Diagnostic Accuracy
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