Private practice, Rome.
Eur J Orthod. 2014 Apr;36(2):207-16. doi: 10.1093/ejo/cjt036. Epub 2013 Jun 18.
To develop a mathematical model that adequately represented the pattern of craniofacial growth in class III subject consistently, with the goal of using this information to make growth predictions that could be amenable to longitudinal verification and clinical use.
A combination of computational techniques (i.e. Fuzzy clustering and Network analysis) was applied to cephalometric data derived from 429 untreated growing female patients with class III malocclusion to visualize craniofacial growth dynamics and correlations. Four age groups of subjects were examined individually: from 7 to 9 years of age, from 10 to 12 years, from 13 to 14 years, and from 15 to 17 years.
The connections between pathway components of class III craniofacial growth can be visualized from Network profiles. Fuzzy clustering analysis was able to define further growth patterns and coherences of the traditionally reported dentoskeletal characteristics of this structural imbalance. Craniofacial growth can be visualized as a biological, space-constraint-based optimization process; the prediction of individual growth trajectories depends on the rate of membership to a specific 'winner' cluster, i.e. on a specific individual growth strategy. The reliability of the information thus gained was tested to forecast craniofacial growth of 28 untreated female class III subjects followed longitudinally.
The combination of Fuzzy clustering and Network algorithms allowed the development of principles for combining multiple auxological cephalometric features into a joint global model and to predict the individual risk of the facial pattern imbalance during growth.
开发一个能够充分代表 III 类错颌患者颅面生长模式的数学模型,以便利用这些信息进行生长预测,从而进行纵向验证和临床应用。
本研究将计算技术(即模糊聚类和网络分析)应用于 429 例未经治疗的 III 类错颌生长女性患者的头影测量数据,以可视化颅面生长动力学和相关性。分别对四个年龄组的患者进行了检查:7-9 岁、10-12 岁、13-14 岁和 15-17 岁。
从网络图谱中可以看出 III 类颅面生长的途径成分之间的联系。模糊聚类分析能够进一步定义传统报道的这种结构不平衡的牙颌骨骼特征的生长模式和一致性。颅面生长可以被视为一个基于生物、空间约束的优化过程;个体生长轨迹的预测取决于特定“获胜”聚类的成员率,即特定的个体生长策略。通过对 28 例未经治疗的 III 类女性患者进行纵向随访,测试了所获得信息的可靠性,以预测颅面生长。
模糊聚类和网络算法的结合允许将多个助学生长特征组合成一个联合的全局模型,并预测生长过程中面部模式失衡的个体风险。