Feasibility of occlusal plane in predicting the changes in anteroposterior mandibular position: a comprehensive analysis using deep learning-based three-dimensional models

A comprehensive analysis of the occlusal plane (OP) inclination in predicting anteroposterior mandibular position (APMP) changes is still lacking. This study aimed to analyse the relationships between inclinations of different OPs and APMP metrics and explore the feasibility of OP inclination in pre...

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Veröffentlicht in:BMC oral health 2025-01, Vol.25 (1), p.42-10, Article 42
Hauptverfasser: Du, Bingran, Li, Kaichen, Shen, Zhiling, Cheng, Yihang, Yu, Jiayan, Pan, Yaopeng, Huang, Ziyan, Hu, Fei, Rausch-Fan, Xiaohui, Zhu, Yuanpeng, Zhang, Xueyang
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Sprache:eng
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Zusammenfassung:A comprehensive analysis of the occlusal plane (OP) inclination in predicting anteroposterior mandibular position (APMP) changes is still lacking. This study aimed to analyse the relationships between inclinations of different OPs and APMP metrics and explore the feasibility of OP inclination in predicting changes in APMP. Overall, 115 three-dimensional (3D) models were reconstructed using deep learning-based cone-beam computed tomography (CBCT) segmentation, and their accuracy in supporting cusps was compared with that of intraoral scanning models. The anatomical landmarks of seven OPs and three APMP metrics were identified, and their values were measured on the sagittal reference plane. The receiver operating characteristic curves of inclinations of seven OPs in distinguishing different anteroposterior skeletal patterns and correlations between inclinations of these OPs and APMP metrics were calculated and compared. For the OP inclination with the highest area under the curve (AUC) values and correlation coefficients, the regression models between this OP inclination and APMP metrics were further calculated. The deviations in supporting cusps between deep learning-based and intraoral scanning models were
ISSN:1472-6831
1472-6831
DOI:10.1186/s12903-024-05345-9