ChatGPT for shaping the future of dentistry: the potential of multi-modal large language model
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H. Yin | B. Shi | Ou Zheng | Q. Zheng | Hanyao Huang | Zijin Wang | Jiayi Yin | R. Yang | Dongdong Wang | Shengxuan Ding | Chuan Xu | Renjie Yang
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