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Accuracy and Reproducibility of Different Artificial Intelligence Chatbots’ Responses to Patient-Based Vitreoretinal Questions: A Comparative Study
0
Zitationen
13
Autoren
2026
Jahr
Abstract
ChatGPT-5.o and DeepSeek R1 approached high accuracy and reproducibility comparable to clinical standards, indicating potential as patient-education tools in vitreoretinal care. However, variability across models and disease categories highlights the need for cautious clinical adoption and continued optimization to ensure safe, reliable information delivery.
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