利用深度学习自动检测口内图像和视频中的前交叉咬合。

IF 1.8 4区 医学 Q2 DENTISTRY, ORAL SURGERY & MEDICINE International Journal of Computerized Dentistry Pub Date : 2024-05-03 DOI:10.3290/j.ijcd.b5290567
Zhaowu Chai, Zhengyu Wu, Chao Zhang, Jinlin Song
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引用次数: 0

摘要

目的:错牙合畸形已成为一个日益突出的全球公共健康问题。前牙反咬合患者表现出面部轮廓凹陷、负过咬合和咀嚼效率低下等特征的风险较高。针对这一问题,我们提出了一种基于卷积神经网络(CNN)的模型,旨在对口内图像和视频进行自动检测和分类:本研究共包含 1865 张口内图像,其中 1493 张(80%)用于训练 CNN,372 张(20%)用于测试 CNN。此外,我们还在 10 个视频上测试了模型,累计时间跨度为 124 秒。为了评估我们预测的性能,我们采用了包括准确度、灵敏度、特异性、精确度、F1-分数、精确度-调用(AUPR)曲线下面积和接收者操作特征(ROC)曲线下面积(AUC)等指标:训练有素的模型表现出令人称道的分类性能,准确率达到 0.965,AUC 达到 0.986。此外,与两名正畸医生的评估结果相比,该模型的特异性更高(0.992 vs. 0.978 和 0.956,P < 0.05)。相反,CNN 模型的灵敏度(0.89 vs. 0.96 和 0.92,P < 0.05)则低于正畸医生的评估。值得注意的是,CNN 模型实现了完美的分类率,成功识别了测试集中 100% 的视频:深度学习(DL)模型在通过口内图像和视频识别前交叉咬合方面表现出了卓越的分类准确性。这种熟练程度有望加快对严重畸形的检测,促进及时分类以进行适当治疗,从而降低并发症的风险。
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Automated detection of anterior crossbite on intraoral images and videos utilizing deep learning.

Aim: Malocclusion has emerged as a burgeoning global public health concern. Individuals with an anterior crossbite face an elevated risk of exhibiting characteristics such as a concave facial profile, negative overjet, and poor masticatory efficiency. In response to this issue, we proposed a convolutional neural network (CNN)-based model designed for the automated detection and classification of intraoral images and videos.

Materials and methods: A total of 1865 intraoral images were included in this study, 1493 (80%) of which were allocated for training and 372 (20%) for testing the CNN. Additionally, we tested the models on 10 videos, spanning a cumulative duration of 124 seconds. To assess the performance of our predictions, metrics including accuracy, sensitivity, specificity, precision, F1-score, area under the precision-recall (AUPR) curve, and area under the receiver operating characteristic (ROC) curve (AUC) were employed.

Results: The trained model exhibited commendable classification performance, achieving an accuracy of 0.965 and an AUC of 0.986. Moreover, it demonstrated superior specificity (0.992 vs. 0.978 and 0.956, P < 0.05) in comparison to assessments by two orthodontists. Conversely, the CNN model displayed diminished sensitivity (0.89 vs. 0.96 and 0.92, P < 0.05) relative to the orthodontists. Notably, the CNN model accomplished a perfect classification rate, successfully identifying 100% of the videos in the test set.

Conclusion: The deep learning (DL) model exhibited remarkable classification accuracy in identifying anterior crossbite through both intraoral images and videos. This proficiency holds the potential to expedite the detection of severe malocclusions, facilitating timely classification for appropriate treatment and, consequently, mitigating the risk of complications.

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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.
期刊最新文献
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