1DATA Consortium, Computational Comparative Medicine, Department of Mathematics, K-State Olathe, Olathe, USA.
Department of Prosthodontics, Faculty of Dentistry, University of Sakarya, Serdivan, Turkey.
J Prosthodont Res. 2024 Jul 8;68(3):432-440. doi: 10.2186/jpr.JPR_D_23_00114. Epub 2023 Oct 18.
To improve smile esthetics, clinicians should comprehensively analyze the face and ensure that the sizes selected for the maxillary anterior teeth are compatible with the available anthropological measurements. The inter commissural (ICW), interalar (IAW), intermedial-canthus (MCW), interlateral-canthus (LCW), and interpupillary (IPW) widths are used to determine the width of maxillary central incisors (CW). The aim of this study was to develop an automated approach using machine learning (ML) algorithms to predict central incisor width in a young Turkish population using anthropological measurements. This automation can contribute to digital dentistry and clinical decision-making.
In the initial phase of this cross-sectional study, several ML regression models-including multiple linear regression (MLR), multi-layer-perceptron (MLP), decision-tree (DT), and random forest (RF) models-were validated to confirm the central width prediction accuracy. Datasets containing only male and female measurements, as well as combined were considered for ML model implementation, and the performance of each model was evaluated for an unbiased population dataset.
Compared with the other algorithms, the RF algorithm showed improved performance for all cases, with an accuracy of 96%, which represents the percentage of correct predictions. The plot reveals the applicability of the RF model in predicting the CW from anthropological measurements irrespective of the candidate's sex.
These results demonstrated the possibility of predicting central incisor widths based on anthropometric measurements using ML models. The accurate central incisor width prediction from these trials also indicates the applicability of the proposed model to be deployed for enhanced clinical decision-making.
为了改善微笑美观度,临床医生应全面分析面部,并确保选择的上颌前牙尺寸与可用的人类学测量值相匹配。使用瞳孔间宽度(ICW)、内眦距(IAW)、内眦-中央角膜缘宽度(MCW)、外眦-中央角膜缘宽度(LCW)和瞳孔间宽度(IPW)来确定上颌中切牙的宽度(CW)。本研究旨在开发一种使用机器学习(ML)算法的自动化方法,使用人类学测量值预测年轻土耳其人群中中切牙的宽度。这种自动化可以为数字化牙科和临床决策提供帮助。
在这项横断面研究的初始阶段,验证了几种 ML 回归模型,包括多元线性回归(MLR)、多层感知机(MLP)、决策树(DT)和随机森林(RF)模型,以确认中央宽度预测的准确性。数据集仅包含男性和女性的测量值,以及男女混合的数据集都被用于 ML 模型的实施,并且对每个模型在无偏数据集上的性能进行了评估。
与其他算法相比,RF 算法在所有情况下的表现都有所提高,准确率为 96%,表示正确预测的百分比。该图显示了 RF 模型在预测 CW 时的适用性,无论候选者的性别如何。
这些结果表明,使用 ML 模型可以根据人类学测量值预测中切牙的宽度。从这些试验中准确预测中切牙的宽度也表明,所提出的模型适用于增强临床决策。