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Evaluation of large language models as a diagnostic tool for medical learners and clinicians using advanced prompting techniques
4
Zitationen
2
Autoren
2025
Jahr
Abstract
Using advanced prompting techniques, LLMs can generate clinically accurate responses. The study highlights the limitations of proprietary models like ChatGPT, particularly in terms of accessibility and reproducibility due to version deprecation. Future research should employ prompt engineering techniques and prioritize the use of open-source models to ensure research replicability.
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