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基于气道和头影测量标志建立预测骨性错合畸形分类的预测模型的开发和验证。

Development and validation of predictive models for skeletal malocclusion classification using airway and cephalometric landmarks.

机构信息

Faculty of Dentistry, Thammasat University, Klong Luang, Pathumthani, 12120, Thailand.

Department of Mechanical Engineering, Faculty of Engineering at Sriracha, Kasetsart University, Sriracha, Chonburi, 20230, Thailand.

出版信息

BMC Oral Health. 2024 Sep 11;24(1):1064. doi: 10.1186/s12903-024-04779-5.

Abstract

OBJECTIVE

This study aimed to develop a deep learning model to predict skeletal malocclusions with an acceptable level of accuracy using airway and cephalometric landmark values obtained from analyzing different CBCT images.

BACKGROUND

In orthodontics, multitudinous studies have reported the correlation between orthodontic treatment and changes in the anatomy as well as the functioning of the airway. Typically, the values obtained from various measurements of cephalometric landmarks are used to determine skeletal class based on the interpretation an orthodontist experiences, which sometimes may not be accurate.

METHODS

Samples of skeletal anatomical data were retrospectively obtained and recorded in Digital Imaging and Communications in Medicine (DICOM) file format. The DICOM files were used to reconstruct 3D models using 3DSlicer (slicer.org) by thresholding airway regions to build up 3D polygon models of airway regions for each sample. The 3D models were measured for different landmarks that included measurements across the nasopharynx, the oropharynx, and the hypopharynx. Male and female subjects were combined as one data set to develop supervised learning models. These measurements were utilized to build 7 artificial intelligence-based supervised learning models.

RESULTS

The supervised learning model with the best accuracy was Random Forest, with a value of 0.74. All the other models were lower in terms of their accuracy. The recall scores for Class I, II, and III malocclusions were 0.71, 0.69, and 0.77, respectively, which represented the total number of actual positive cases predicted correctly, making the sensitivity of the model high.

CONCLUSION

In this study, it is observed that the Random Forest model was the most accurate model for predicting the skeletal malocclusion based on various airway and cephalometric landmarks.

摘要

目的

本研究旨在开发一种深度学习模型,使用从不同 CBCT 图像分析中获得的气道和头影测量标志值,以可接受的精度预测骨骼错颌。

背景

在正畸学中,许多研究报告了正畸治疗与解剖结构以及气道功能变化之间的相关性。通常,使用头影测量标志的各种测量值获得的值用于根据正畸医生的经验来确定骨骼分类,而有时这种经验可能并不准确。

方法

回顾性获取骨骼解剖数据样本,并以数字成像和通信医学(DICOM)文件格式记录。使用 DICOM 文件通过阈值气道区域在 3DSlicer(slicer.org)中重建 3D 模型,为每个样本构建气道区域的 3D 多边形模型。对不同的标志点进行 3D 模型测量,包括鼻咽、口咽和下咽的测量。将男性和女性受试者合并为一个数据集,以开发监督学习模型。这些测量值用于构建 7 个基于人工智能的监督学习模型。

结果

随机森林是准确率最高的监督学习模型,准确率为 0.74。其他所有模型的准确率都较低。I 类、II 类和 III 类错颌的召回率分别为 0.71、0.69 和 0.77,分别代表正确预测的实际阳性病例总数,使模型的敏感性较高。

结论

在这项研究中,观察到随机森林模型是基于各种气道和头影测量标志预测骨骼错颌最准确的模型。

https://cdn.ncbi.nlm.nih.gov/pmc/blobs/1ed5/11391799/61cb3bc7f6f1/12903_2024_4779_Fig1_HTML.jpg

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