Journal of Oral Science Research ›› 2023, Vol. 39 ›› Issue (10): 862-865.DOI: 10.13701/j.cnki.kqyxyj.2023.10.002
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LIU Jiayi, ZHOU Yanheng*
Received:
2023-03-02
Online:
2023-10-28
Published:
2023-10-25
LIU Jiayi, ZHOU Yanheng. Application Progress of Artificial Intelligence in Orthodontic Diagnosis, Treatment, and Soft Tissue Prediction[J]. Journal of Oral Science Research, 2023, 39(10): 862-865.
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