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Evaluation of the accuracy of large language models in answering bone cancer-related questions
0
Zitationen
5
Autoren
2025
Jahr
Abstract
When answering bone cancer-related questions, Deepseek V3.1, ChatGPT 5, and Grok 4 generally performed well. Specifically, when responding to questions about Ewing sarcoma, ChatGPT 5 and Grok 4 demonstrated higher accuracy than Deepseek V3.1. While each model has its own strengths and limitations, their collective potential to enhance medical knowledge and improve healthcare outcomes is undeniable.
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