Journal of Capital Medical University
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Wei Xingmei, Xue Shujin, Gao Zhencheng, Li Yongxin*
Received:
2024-10-24
Online:
2024-12-18
Published:
2024-12-18
Supported by:
CLC Number:
Wei Xingmei, Xue Shujin, Gao Zhencheng, Li Yongxin. The application of artificial intelligence in cochlear implantation[J]. Journal of Capital Medical University, doi: 10.3969/j.issn.1006-7795.2024.06.001.
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