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挖掘 III 类错颌畸形患者中横断面和纵向数据的相互作用。

Exploiting the interplay between cross-sectional and longitudinal data in Class III malocclusion patients.

机构信息

OnAIR Ltd, Genoa, Italy.

Department of Mathematics, Università degli Studi di Genova, Genoa, Italy.

出版信息

Sci Rep. 2019 Apr 17;9(1):6189. doi: 10.1038/s41598-019-42384-7.

Abstract

The aim of the study was to investigate how to improve the forecasting of craniofacial unbalance risk during growth among patients affected by Class III malocclusion. To this purpose we used computational methodologies such as Transductive Learning (TL), Boosting (B), and Feature Engineering (FE) instead of the traditional statistical analysis based on Classification trees and logistic models. Such techniques have been applied to cephalometric data from 728 cross-sectional untreated Class III subjects (6-14 years of age) and from 91 untreated Class III subjects followed longitudinally during the growth process. A cephalometric analysis comprising 11 variables has also been performed. The subjects followed longitudinally were divided into two subgroups: favourable and unfavourable growth, in comparison with normal craniofacial growth. With respect to traditional statistical predictive analytics, TL increased the accuracy in identifying subjects at risk of unfavourable growth. TL algorithm was useful in diffusion of information from longitudinal to cross-sectional subjects. The accuracy in identifying high-risk subjects to growth worsening increased from 63% to 78%. Finally, a further increase in identification accuracy, up to 83%, was produced by FE. A ranking of important variables in identifying subjects at risk of growth worsening, therefore, has been obtained.

摘要

本研究旨在探讨如何提高对生长过程中 III 类错畸形患者颅面不平衡风险的预测。为此,我们使用了 Transductive Learning (TL)、Boosting (B) 和 Feature Engineering (FE) 等计算方法,而不是基于分类树和逻辑模型的传统统计分析。这些技术已应用于 728 名未经治疗的 III 类横断面患者(6-14 岁)和 91 名未经治疗的 III 类患者的头影测量数据,这些患者在生长过程中进行了纵向随访。还进行了一项包括 11 个变量的头影测量分析。纵向随访的患者分为两组:与正常颅面生长相比,生长有利和不利。与传统的统计预测分析相比,TL 提高了识别生长不利风险患者的准确性。TL 算法有助于将信息从纵向研究对象扩散到横断面研究对象。识别生长恶化高风险患者的准确性从 63%提高到 78%。最后,FE 将识别准确率进一步提高到 83%。因此,确定了用于识别生长恶化风险患者的重要变量的排序。

https://cdn.ncbi.nlm.nih.gov/pmc/blobs/2f59/6470156/9f4ce9bf1826/41598_2019_42384_Fig1_HTML.jpg

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