基于深度学习的锥束计算机断层扫描图像中正畸诱导的牙根吸收的三维自动量化。

IF 2.7 2区 医学 Q1 DENTISTRY, ORAL SURGERY & MEDICINE American Journal of Orthodontics and Dentofacial Orthopedics Pub Date : 2025-02-01 DOI:10.1016/j.ajodo.2024.09.009
Qianhan Zheng , Lei Ma , Yongjia Wu , Yu Gao , Huimin Li , Jiaqi Lin , Shuhong Qing , Dan Long , Xuepeng Chen , Weifang Zhang
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引用次数: 0

摘要

导言:正畸诱发的牙根吸收(OIRR)是正畸治疗中常见的不良后果。传统的研究采用人工方法,通过锥束计算机断层扫描(CBCT)对 OIRR 进行三维定量分析,这种方法往往主观且耗时。随着计算机技术的进步,基于深度学习的方法在医学图像处理中越来越受到重视。本研究提出了一种基于深度学习的模型,用于从 CBCT 图像中全自动提取牙根体积信息和定位牙根吸收:在这项横断面回顾性研究中,来自 105 名患者的 4534 颗牙齿被用于训练和验证 OIRR 定量的自动模型。该方案包括几个步骤:预处理 CBCT 图像,包括自动牙齿分割和转换成点云,然后通过动态图形卷积神经网络分割牙冠和牙根。随后计算牙根体积,并进行 OIRR 定位。采用类内相关系数来验证自动模型与人工测量之间的一致性:结果:在牙根体积和 OIRR 严重程度评估方面,所提出的方法与人工测量结果具有很强的相关性。每个牙位的平均体积测量值的类内相关系数超过了 0.95(P 结论:所提出的方法为牙根体积和 OIRR 严重程度评估提供了可靠的自动模型:建议的方法为 OIRR 评估提供了自动和可靠的工具,为正畸治疗计划和监测提供了潜在的改进。
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Automatic 3-dimensional quantification of orthodontically induced root resorption in cone-beam computed tomography images based on deep learning

Introduction

Orthodontically induced root resorption (OIRR) is a common and undesirable consequence of orthodontic treatment. Traditionally, studies employ manual methods to conduct 3-dimensional quantitative analysis of OIRR via cone-beam computed tomography (CBCT), which is often subjective and time-consuming. With advancements in computer technology, deep learning-based approaches have gained traction in medical image processing. This study presents a deep learning-based model for the fully automatic extraction of root volume information and the localization of root resorption from CBCT images.

Methods

In this cross-sectional, retrospective study, 4534 teeth from 105 patients were used to train and validate an automatic model for OIRR quantification. The protocol encompassed several steps: preprocessing of CBCT images involving automatic tooth segmentation and conversion into point clouds, followed by segmentation of tooth crowns and roots via the Dynamic Graph Convolutional Neural Network. The root volume was subsequently calculated, and OIRR localization was performed. The intraclass correlation coefficient was employed to validate the consistency between the automatic model and manual measurements.

Results

The proposed method strongly correlated with manual measurements in terms of root volume and OIRR severity assessment. The intraclass correlation coefficient values for average volume measurements at each tooth position exceeded 0.95 (P <0.001), with the accuracy of different OIRR severity classifications surpassing 0.8.

Conclusions

The proposed methodology provides automatic and reliable tools for OIRR assessment, offering potential improvements in orthodontic treatment planning and monitoring.
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来源期刊
CiteScore
4.80
自引率
13.30%
发文量
432
审稿时长
66 days
期刊介绍: Published for more than 100 years, the American Journal of Orthodontics and Dentofacial Orthopedics remains the leading orthodontic resource. It is the official publication of the American Association of Orthodontists, its constituent societies, the American Board of Orthodontics, and the College of Diplomates of the American Board of Orthodontics. Each month its readers have access to original peer-reviewed articles that examine all phases of orthodontic treatment. Illustrated throughout, the publication includes tables, color photographs, and statistical data. Coverage includes successful diagnostic procedures, imaging techniques, bracket and archwire materials, extraction and impaction concerns, orthognathic surgery, TMJ disorders, removable appliances, and adult therapy.
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