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基于硬组织测量和人口统计学特征的 XGBoost 辅助预测亚洲人群的唇部突出度。

XGBoost-aided prediction of lip prominence based on hard-tissue measurements and demographic characteristics in an Asian population.

机构信息

State Key Laboratory of Oral Diseases & National Clinical Research Center for Oral Diseases, Sichuan University, Chengdu, China.

State Key Laboratory of Oral Diseases & National Clinical Research Center for Oral Diseases, Sichuan University, Chengdu, China; Department of Orthodontics, West China Hospital of Stomatology, Sichuan University, Chengdu, China.

出版信息

Am J Orthod Dentofacial Orthop. 2023 Sep;164(3):357-367. doi: 10.1016/j.ajodo.2023.01.017. Epub 2023 Mar 21.

DOI:10.1016/j.ajodo.2023.01.017
PMID:36959014
Abstract

INTRODUCTION

Prediction of lip prominence based on hard-tissue measurements could be helpful in orthodontic treatment planning and has been challenging and formidable thus far.

METHODS

A machine learning-based cross-sectional study was conducted on 1549 patients. Hard-tissue measurements and demographic information were used as the input features. Seven popular machine learning algorithms were applied to the datasets to predict upper and lower lip prominence. The algorithm that performed the best was selected for the construction of the prediction model. Evaluation of feature importance was conducted using 3 classical methods.

RESULTS

Among the 7 algorithms, the XGBoost model performed the best in the prediction of the distances between labrale superius or labrale inferius to the esthetics plane (UL-EP and LL-EP distances), with root mean square error values of 1.25, 1.49 and r values of 0.755 and 0.683, respectively. Among the 14 input features, the L1-NB distance contributed the most to the prominences of the upper and lower lips. A lip prominence predictor was developed to facilitate clinical application by deploying the prediction model into a downloadable tool kit.

CONCLUSIONS

The XGBoost model performed well with high accuracy and practicability in predicting upper and lower lip prominence. The artificial intelligence-aided predictor could serve as a reference for orthodontic treatment planning.

摘要

简介

基于硬组织测量预测唇突度有助于正畸治疗计划,目前这一方法具有挑战性且难以实现。

方法

对 1549 名患者进行了基于机器学习的横断面研究。硬组织测量和人口统计学信息被用作输入特征。将七种流行的机器学习算法应用于数据集,以预测上唇和下唇的突出度。选择表现最佳的算法构建预测模型。使用 3 种经典方法进行特征重要性评估。

结果

在 7 种算法中,XGBoost 模型在预测上唇和下唇至美学平面(UL-EP 和 LL-EP 距离)的距离方面表现最佳,其均方根误差值分别为 1.25、1.49 和 r 值分别为 0.755 和 0.683。在 14 个输入特征中,L1-NB 距离对上、下唇突出度的贡献最大。通过将预测模型部署到可下载的工具包中,开发了一个唇突度预测器,以方便临床应用。

结论

XGBoost 模型在预测上唇和下唇突出度方面表现良好,具有较高的准确性和实用性。人工智能辅助预测器可作为正畸治疗计划的参考。

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