Int J Stomatol ›› 2026, Vol. 53 ›› Issue (3): 328-334.doi: 10.7518/gjkq.2026218
• Digitization • Previous Articles
Wenyuan Zhou1(
),Juan Fan1,Zaidao Xiong1,Lin Zhu1,Zezheng Yu1,Lu Wang1,Long Jin2,Panpan Zhang3,Yongchun Gu1(
)
CLC Number:
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