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A clinician-based comparative study of large language models in answering medical questions: the case of asthma
2
Zitationen
15
Autoren
2025
Jahr
Abstract
GPT and other large language models can answer medical questions with a certain degree of completeness and accuracy. However, clinical physicians should critically assess internet information, distinguishing between true and false data, and should not blindly accept the outputs of these models. With advancements in key technologies, LLMs may one day become a safe option for doctors seeking information.
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