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EyeGPT for Patient Inquiries and Medical Education: Development and Validation of an Ophthalmology Large Language Model
29
Zitationen
11
Autoren
2024
Jahr
Abstract
We pioneered and introduced EyeGPT by refining a general domain LLM and conducted a comprehensive comparison and evaluation of different strategies to develop an ophthalmology-specific assistant. Our results highlight EyeGPT's potential to assist ophthalmologists and patients in medical settings.
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