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Appropriateness of Ophthalmology Recommendations From an Online Chat-Based Artificial Intelligence Model
18
Zitationen
26
Autoren
2024
Jahr
Abstract
This LLM reported mostly appropriate responses across multiple ophthalmology subspecialties in the context of both patient information sites and EMR-related responses to patient questions. Current LLM offerings require optimization and improvement before widespread clinical use.
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Autoren
- Prashant D. Tailor
- Timothy T. Xu
- Blake H. Fortes
- Raymond Iezzi
- Timothy W. Olsen
- Matthew R. Starr
- Sophie J. Bakri
- Brittni A. Scruggs
- Andrew J. Barkmeier
- Sanjay V. Patel
- Keith H. Baratz
- Ashlie Bernhisel
- Lilly H. Wagner
- Andrea A. Tooley
- Gavin W. Roddy
- Arthur J. Sit
- Kristi Y. Wu
- Erick D. Bothun
- Sasha A. Mansukhani
- Brian G. Mohney
- John J. Chen
- Michael C. Brodsky
- Deena Tajfirouz
- Kevin D. Chodnicki
- Wendy M. Smith
- Lauren A. Dalvin