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Performance of large language models on family medicine licensing exams
5
Zitationen
5
Autoren
2025
Jahr
Abstract
Most tested models performed well on an official family medicine exam, especially with structured prompts. Nonetheless, multiple-choice formats cannot address broader clinical competencies such as physical exams and patient rapport. Future efforts should refine these models to eliminate hallucinations, test for socio-demographic biases, and ensure alignment with real-world demands.
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