Gonca Merve, Özel Mehmet Birol
Faculty of Dentistry, Department of Orthodontics, Recep Tayyip Erdoğan University, Rize, Turkey.
Faculty of Dentistry, Department of Orthodontics, Kocaeli University, Kocaeli, Turkey.
BMC Oral Health. 2025 Jul 26;25(1):1246. doi: 10.1186/s12903-025-06651-6.
Craniofacial phenotyping is essential for individualized orthodontic diagnosis and treatment planning. Traditional skeletal classifications, such as the ANB angle, may oversimplify complex relationships among malocclusion types. Machine learning-based unsupervised methods may allow for more nuanced sub-phenotypic classification.
A total of 330 pre-treatment LCRs (110 each from Class 1, Class 2, and Class 3 based on ANB (°)) were assessed in this study. The X-means method was used to create clusters. The relationship between the clusters and cephalometric variables was evaluated using the C4.5 decision tree. X-means clustering was employed to identify natural groupings within the dataset, followed by C4.5 decision tree analysis to determine key discriminative variables. After post-pruning, 288 LCRs were included in the final analysis. One-way ANOVA and Kruskal-Wallis tests were used to assess differences among clusters.
A total of four clusters were obtained using the X-means algorithm. Decision trees were used to identify the most discriminative variables among clusters. These clusters exhibited distinctive sagittal and vertical skeletal and dental features, particularly differences in individualized ANB, interincisal angle, and mandibular plane inclination. The root node in the second decision tree was the Individualized ANB (°). The interincisal angle was the main parameter determining the distinction between Clusters 0 and 1. The main parameter that determined the distinction between Cluster 2 and Cluster 3 was N-Go-Gn (°). Significant differences were found in all measurements except N-Go-Ar (°), FH/PP (°), and S-Ar-Go (°) angles (p < 0.05).
The combination of X-means clustering and C4.5 decision tree analysis enabled the identification of four distinct craniofacial sub-phenotypes across all skeletal malocclusion classes. Four sub-phenotypic categorizations of all skeletal malocclusions were obtained. Mandibular plane inclination and interincisal angle were the most critical variables distinguishing these phenotypes. Assessing various forms of skeletal malocclusions may improve clinical outcomes and diagnostics by showing how different skeletal classes interact.
颅面表型分析对于个性化正畸诊断和治疗计划至关重要。传统的骨骼分类方法,如ANB角,可能会过度简化错牙合类型之间的复杂关系。基于机器学习的无监督方法可能允许进行更细致的亚表型分类。
本研究共评估了330例治疗前的侧位头颅定位片(根据ANB(°),分别来自安氏Ⅰ类、Ⅱ类和Ⅲ类各110例)。采用X均值法创建聚类。使用C4.5决策树评估聚类与头影测量变量之间的关系。采用X均值聚类来识别数据集中的自然分组,随后进行C4.5决策树分析以确定关键判别变量。经过后剪枝,最终分析纳入288例侧位头颅定位片。采用单因素方差分析和Kruskal-Wallis检验评估聚类间的差异。
使用X均值算法共获得四个聚类。决策树用于识别聚类间最具判别力的变量。这些聚类表现出独特的矢状和垂直骨骼及牙齿特征,特别是在个性化ANB、切牙间角和下颌平面倾斜度方面存在差异。第二个决策树的根节点是个性化ANB(°)。切牙间角是决定聚类0和聚类1之间差异的主要参数。决定聚类2和聚类3之间差异的主要参数是N-Go-Gn(°)。除N-Go-Ar(°)、FH/PP(°)和S-Ar-Go(°)角外,所有测量值均存在显著差异(p < 0.05)。
X均值聚类和C4.5决策树分析相结合,能够识别出所有骨骼错牙合类型中的四种不同颅面亚表型。获得了所有骨骼错牙合的四种亚表型分类。下颌平面倾斜度和切牙间角是区分这些表型的最关键变量。评估各种形式的骨骼错牙合可能通过展示不同骨骼类型之间的相互作用来改善临床结果和诊断。