Quantitative level determination of fixed restorations on panoramic radiographs using deep learning.

IF 1.8 4区 医学 Q2 DENTISTRY, ORAL SURGERY & MEDICINE International Journal of Computerized Dentistry Pub Date : 2023-11-28 DOI:10.3290/j.ijcd.b3840521
Ahmet Esad Top, M Sertaç Özdoğan, Mustafa Yeniad
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引用次数: 1

Abstract

Aim: Although many studies in various fields employ deep learning models, only a few such studies exist in dental imaging. The present article aims to evaluate the effectiveness of convolutional neural network (CNN) algorithms for the detection and diagnosis of the quantitative level of dental restorations using panoramic radiographs by preparing a novel dataset.

Materials and methods: 20,973 panoramic radiographs were used, all labeled into five distinct categories by three dental experts. AlexNet, VGG-16, and variants of ResNet models were trained with the dataset and evaluated for the classification task. Additionally, 10-fold cross-validation (ie, 9 folds were separated for training and 1 fold for validation) and data augmentation were carried out for all experiments.

Results: The most successful result was shown by ResNet-101, with an accuracy of 92.7%. Its macro-average AUC was also the highest, at 0.989. Other accuracy results obtained for the dataset were 75.5% for AlexNet, 85.0% for VGG-16, 92.1% for ResNet-18, 91.7% for ResNet-50, and 92.1% for InceptionResNet-v2.

Conclusions: An accuracy of 92.7% is a very promising result for a computer-aided diagnostic system. This result proved that the system could assist dentists in providing supportive preliminary information from the moment a patient's first panoramic radiograph is taken. Furthermore, as the introduced dataset is powerful enough, it can be relabeled for different problems and used in different studies.

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利用深度学习确定全景x线片固定修复的定量水平。
目的:虽然在各个领域都有很多研究使用了深度学习模型,但在牙科成像领域的研究却很少。本文旨在通过准备一个新的数据集来评估卷积神经网络(CNN)算法在利用全景x线片检测和诊断牙齿修复体定量水平方面的有效性。材料和方法:使用全景x线片20,973张,由三位牙科专家标记为五个不同的类别。使用该数据集训练AlexNet、VGG-16和ResNet模型的变体,并对分类任务进行评估。此外,所有实验都进行了10倍交叉验证(即9倍用于训练,1倍用于验证)和数据增强。结果:以ResNet-101为最优,准确率为92.7%。其宏观平均AUC也最高,为0.989。其他数据集的准确率结果为AlexNet为75.5%,VGG-16为85.0%,ResNet-18为92.1%,ResNet-50为91.7%,InceptionResNet-v2为92.1%。结论:计算机辅助诊断系统准确率可达92.7%。这一结果证明,该系统可以帮助牙医提供支持性的初步信息,从病人的第一张全景x光片拍摄的那一刻起。此外,由于引入的数据集足够强大,它可以针对不同的问题重新标记并用于不同的研究。
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来源期刊
International Journal of Computerized Dentistry
International Journal of Computerized Dentistry Dentistry-Dentistry (miscellaneous)
CiteScore
2.90
自引率
0.00%
发文量
49
期刊介绍: This journal explores the myriad innovations in the emerging field of computerized dentistry and how to integrate them into clinical practice. The bulk of the journal is devoted to the science of computer-assisted dentistry, with research articles and clinical reports on all aspects of computer-based diagnostic and therapeutic applications, with special emphasis placed on CAD/CAM and image-processing systems. Articles also address the use of computer-based communication to support patient care, assess the quality of care, and enhance clinical decision making. The journal is presented in a bilingual format, with each issue offering three types of articles: science-based, application-based, and national society reports.
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