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机器学习在正畸学中的应用:自动化的垂直向面部分析,以提高精度和效率。

Machine learning in orthodontics: Automated facial analysis of vertical dimension for increased precision and efficiency.

机构信息

Montreal Children's Hospital, Montreal, Canada; Department of Orthodontics, University of Montreal, Montreal, Canada.

Department of Orthodontics, University of Missouri, Kansas City, Missouri.

出版信息

Am J Orthod Dentofacial Orthop. 2022 Mar;161(3):445-450. doi: 10.1016/j.ajodo.2021.03.017.

Abstract

INTRODUCTION

The digitization of dentistry has brought many opportunities to the specialty of orthodontics. Advances in computing power and artificial intelligence are set to significantly impact the specialty. In this article, the accuracy of automated facial analysis for vertical dimensions using machine learning is evaluated.

METHODS

Automated facial analysis of 45 patients (20 female, 25 male) was conducted. The subjects' ages were between 15 and 25 years (mean, 18.7; standard deviation, 3.2). A python program was written by the authors to detect the faces, annotate them and compute vertical dimensions. The accuracy of the manual annotation of digital images was compared with the proposed model. Intrarater and interrater reliability were evaluated for the manual method, whereas intraclass correlation and the Bland-Altman analysis were compared with manual and automated methods.

RESULTS

The authors found acceptable intrarater reliability and moderate to poor interrater reliability for the manual method. The agreement was found between manual and automated methods of facial analysis. The 95% confidence interval limit of agreements was <10% for the metrics assessing vertical dimension.

CONCLUSIONS

Machine learning offers the ability to conduct reliable and easily reproducible analyses on large datasets of images. This new tool presents opportunities for further advances in research and clinical orthodontics.

摘要

简介

数字化牙科为正畸专业带来了许多机遇。计算能力和人工智能的进步将对该专业产生重大影响。本文评估了使用机器学习进行自动面部分析的垂直维度的准确性。

方法

对 45 名患者(20 名女性,25 名男性)进行了自动面部分析。受试者年龄在 15 至 25 岁之间(平均值 18.7,标准差 3.2)。作者编写了一个 Python 程序来检测面部、标记面部并计算垂直维度。将数字图像的手动注释准确性与提出的模型进行了比较。评估了手动方法的内部和内部可靠性,而内部一致性和 Bland-Altman 分析则与手动和自动方法进行了比较。

结果

作者发现手动方法的内部可靠性可接受,而内部和外部可靠性中等至较差。发现手动和自动面部分析方法之间存在一致性。评估垂直维度的指标的 95%置信区间限差为<10%。

结论

机器学习能够对大量图像数据集进行可靠且易于重复的分析。这种新工具为研究和临床正畸学的进一步发展提供了机会。

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