Expert consensus on imaging diagnosis and analysis of early correction of childhood malocclusion

Zitong Lin , Chenchen Zhou , Ziyang Hu , Zuyan Zhang , Yong Cheng , Bing Fang , Hong He , Hu Wang , Gang Li , Jun Guo , Weihua Guo , Xiaobing Li , Guangning Zheng , Zhimin Li , Donglin Zeng , Yan Liu , Yuehua Liu , Min Hu , Lunguo Xia , Jihong Zhao , Yaling Song , Huang Li , Jun Ji , Jinlin Song , Lili Chen , Tiemei Wang

International Journal of Oral Science ›› 2025, Vol. 17 ›› Issue (1) : 21

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International Journal of Oral Science ›› 2025, Vol. 17 ›› Issue (1) : 21 DOI: 10.1038/s41368-025-00351-1
Review Article

Expert consensus on imaging diagnosis and analysis of early correction of childhood malocclusion

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Abstract

Early correction of childhood malocclusion is timely managing morphological, structural, and functional abnormalities at different dentomaxillofacial developmental stages. The selection of appropriate imaging examination and comprehensive radiological diagnosis and analysis play an important role in early correction of childhood malocclusion. This expert consensus is a collaborative effort by multidisciplinary experts in dentistry across the nation based on the current clinical evidence, aiming to provide general guidance on appropriate imaging examination selection, comprehensive and accurate imaging assessment for early orthodontic treatment patients.

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Zitong Lin, Chenchen Zhou, Ziyang Hu, Zuyan Zhang, Yong Cheng, Bing Fang, Hong He, Hu Wang, Gang Li, Jun Guo, Weihua Guo, Xiaobing Li, Guangning Zheng, Zhimin Li, Donglin Zeng, Yan Liu, Yuehua Liu, Min Hu, Lunguo Xia, Jihong Zhao, Yaling Song, Huang Li, Jun Ji, Jinlin Song, Lili Chen, Tiemei Wang. Expert consensus on imaging diagnosis and analysis of early correction of childhood malocclusion. International Journal of Oral Science, 2025, 17(1): 21 DOI:10.1038/s41368-025-00351-1

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