Journal of Prosthodontic Research
Online ISSN : 1883-9207
Print ISSN : 1883-1958
ISSN-L : 1883-1958
Predicting enamel depth distribution of maxillary teeth based on intraoral scanning: A machine learning study
Du ChenXiang HeQijing LiZhenyu WangJunfei ShenJiefei Shen
著者情報
ジャーナル オープンアクセス 早期公開
電子付録

論文ID: JPR_D_24_00250

詳細
抄録

Purpose: Measuring enamel depth distribution (EDD) is of great importance for preoperative design of tooth preparations, restorative aesthetic preview and monitoring enamel wear. But, currently there are no non-invasive methods available to efficiently obtain EDD. This study aimed to develop a machine learning (ML) framework to achieve noninvasive and radiation-free EDD predictions with intraoral scanning (IOS) images.

Methods: Cone-beam computed tomography (CBCT) and IOS images of right maxillary central incisors, canines, and first premolars from 200 volunteers were included and preprocessed with surface parameterization. During the training stage, the EDD ground truths were obtained from CBCT. Five-dimensional features (incisal-gingival position, mesial-distal position, local surface curvature, incisal-gingival stretch, mesial-distal stretch) were extracted on labial enamel surfaces and served as inputs to the ML models. An eXtreme gradient boosting (XGB) model was trained to establish the mapping of features to the enamel depth values. R2 and mean absolute error (MAE) were utilized to evaluate the training accuracy of XGB model. In prediction stage, the predicted EDDs were compared with the ground truths, and the EDD discrepancies were analyzed using a paired t-test and Frobenius norm.

Results: The XGB model achieved superior performance in training with average R2 and MAE values of 0.926 and 0.080, respectively. Independent validation confirmed its robust EDD prediction ability, showing no significant deviation from ground truths in paired t-test and low prediction errors (Frobenius norm: 12.566–18.312), despite minor noise in IOS-based predictions.

Conclusions: This study performed preliminary validation of an IOS-based ML model for high-quality EDD prediction.

著者関連情報
© 2025 Japan Prosthodontic Society

This is an open-access article distributed under the terms of Creative Commons Attribution-NonCommercial License 4.0 (CC BYNC 4.0), which allows users to distribute and copy the material in any format as long as credit is given to the Japan Prosthodontic Society. It should be noted however, that the material cannot be used for commercial purposes.
https://creativecommons.org/licenses/by-nc/4.0/
次の記事
feedback
Top