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检索增强生成(RAG)赋能医学人工智能综述
A review of retrieval enhancement generation (RAG) empowering medical artificial intelligence
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江西理工大学软件工程学院 江西南昌
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刘述民, 柳汛. 检索增强生成(RAG)赋能医学人工智能综述 [J]. 国际计算机科学进展. 2025; 5; (3). 28 - 33.
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