Assessment of Physician Preferences for Large Language Model–Generated Responses Across Geographic Regions and Clinical Experience Levels: Preliminary Survey Study
James S Brooks, Paa-Kwesi Blankson, Peter Murphy Campbell, R Adams Cowley, Tsorng-Shyang Yang, Tijani Oseni, Anny Rodriguez, Muhammed Y Idris

TL;DR
Physicians from different regions and experience levels prefer AI-generated medical responses over those written by other doctors.
Contribution
This study is the first to explore global physician preferences for AI-generated versus human-authored medical responses.
Findings
LLM-generated responses were strongly preferred over physician-authored ones across all regions.
GPT-4.0 outperformed Meta AI and physician-authored responses in most comparisons.
Even experienced physicians preferred AI-generated responses over human-authored ones.
Abstract
Large language models (LLMs) have demonstrated increasing capabilities in generating clinically coherent and accurate responses to patient questions, in some cases outperforming physicians in terms of accuracy and empathy. However, little is known about how physicians across geographic regions and levels of clinical experience evaluate these artificial intelligence (AI)–generated responses compared to those authored by human clinicians. This study examined physician evaluations of LLM-generated versus physician-authored responses to real-world patient questions, comparing preference patterns across geographic regions and years in clinical practice. We conducted a cross-sectional online survey between March and May 2025 among licensed physicians recruited internationally. Participants reviewed anonymized medical responses from 2 LLMs (GPT-4.0 and Meta AI) and verified physicians to…
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Taxonomy
TopicsArtificial Intelligence in Healthcare and Education · Electronic Health Records Systems · Machine Learning in Healthcare
