Paddenberg-Schubert Eva, Midlej Kareem, Krohn Sebastian, Lone Iqbal M, Zohud Osayd, Awadi Obaida, Masarwa Samir, Kirschneck Christian, Watted Nezar, Proff Peter, Iraqi Fuad A
Department of Orthodontics, University Hospital of Regensburg, University of Regensburg, Regensburg, 93047, Germany.
Department of Clinical Microbiology and Immunology, Faculty of Medicine and Health Sciences, Tel Aviv University, Tel Aviv, 6997801, Israel.
BMC Oral Health. 2025 May 15;25(1):731. doi: 10.1186/s12903-025-06063-6.
Classification is one of the most common tasks in artificial intelligence (AI) driven fields in dentistry and orthodontics. The AI abilities can significantly improve the orthodontist's critical mission to diagnose and treat patients precisely, promptly, and efficiently. Therefore, this study aims to develop a machine-learning model to classify German orthodontic patients as skeletal class I or II based on minimal cephalometric parameters. Eventually, clustering analysis was done to understand the differences between clusters within the same or different skeletal classes.
A total of 556 German orthodontic patients were classified into skeletal class I (n = 210) and II (n = 346) using the individualized ANB. Hierarchical clustering analysis used the Euclidean distances between data points and Ward's minimum variance method. Six machine learning models (random forest (RF), K-nearest neighbor (KNN), support vector machine (SVM), linear discriminant analysis (LDA), classification and regression trees (CART), and General Linear Model (GLM)) were evaluated considering their accuracy, reliability, sensitivity, and specificity in diagnosing skeletal class I and II.
The clustering analysis results showed the power of this tool to cluster the results into two-three clusters that interestingly varied significantly in many cephalometric parameters, including NL-ML angle, NL-NSL angle, PFH/AFH ratio, gonial angle, SNB, Go-Me (mm), Wits appraisal, ML-NSL, and part of the dental parameters. The CART model achieved 100% accuracy by considering all cephalometric and demographic variables, while the KNN model performed well with three input parameters (ANB, Wits, SNB) only.
The KNN model with three key variables demonstrated sufficient accuracy for classifying skeletal classes I and II, supporting efficient and still personalized orthodontic diagnostics and treatment planning. Further studies with balanced sample sizes are needed for validation.
分类是人工智能(AI)驱动的牙科和正畸领域最常见的任务之一。人工智能的能力可以显著提高正畸医生准确、及时和高效地诊断和治疗患者这一关键任务的水平。因此,本研究旨在开发一种机器学习模型,基于最小头影测量参数将德国正畸患者分类为骨骼I类或II类。最终,进行聚类分析以了解同一或不同骨骼类别的聚类之间的差异。
使用个体化ANB将总共556名德国正畸患者分为骨骼I类(n = 210)和II类(n = 346)。层次聚类分析使用数据点之间的欧几里得距离和沃德最小方差法。评估了六种机器学习模型(随机森林(RF)、K近邻(KNN)、支持向量机(SVM)、线性判别分析(LDA)、分类与回归树(CART)和广义线性模型(GLM))在诊断骨骼I类和II类时的准确性、可靠性、敏感性和特异性。
聚类分析结果显示了该工具将结果聚为两到三类的能力,有趣的是,在许多头影测量参数上,包括NL - ML角、NL - NSL角、PFH/AFH比值、下颌角、SNB、Go - Me(mm)、Wits评估、ML - NSL以及部分牙齿参数,这些聚类之间存在显著差异。通过考虑所有头影测量和人口统计学变量,CART模型的准确率达到了100%,而KNN模型仅使用三个输入参数(ANB、Wits、SNB)时表现良好。
具有三个关键变量的KNN模型在分类骨骼I类和II类时显示出足够的准确性,支持高效且仍具个性化的正畸诊断和治疗计划。需要进行样本量均衡的进一步研究以进行验证。