Deep learning for tooth identification and enumeration in panoramic radiographs.

Q2 Dentistry
Dental Research Journal Pub Date : 2023-11-27 eCollection Date: 2023-01-01
Soroush Sadr, Hossein Mohammad-Rahimi, Mohammad Soroush Ghorbanimehr, Rata Rokhshad, Zahra Abbasi, Parisa Soltani, Amirhossein Moaddabi, Shahriar Shahab, Mohammad Hossein Rohban
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引用次数: 0

Abstract

Background: Dentists begin the diagnosis by identifying and enumerating teeth. Panoramic radiographs are widely used for tooth identification due to their large field of view and low exposure dose. The automatic numbering of teeth in panoramic radiographs can assist clinicians in avoiding errors. Deep learning has emerged as a promising tool for automating tasks. Our goal is to evaluate the accuracy of a two-step deep learning method for tooth identification and enumeration in panoramic radiographs.

Materials and methods: In this retrospective observational study, 1007 panoramic radiographs were labeled by three experienced dentists. It involved drawing bounding boxes in two distinct ways: one for teeth and one for quadrants. All images were preprocessed using the contrast-limited adaptive histogram equalization method. First, panoramic images were allocated to a quadrant detection model, and the outputs of this model were provided to the tooth numbering models. A faster region-based convolutional neural network model was used in each step.

Results: Average precision (AP) was calculated in different intersection-over-union thresholds. The AP50 of quadrant detection and tooth enumeration was 100% and 95%, respectively.

Conclusion: We have obtained promising results with a high level of AP using our two-step deep learning framework for automatic tooth enumeration on panoramic radiographs. Further research should be conducted on diverse datasets and real-life situations.

深度学习用于全景 X 光片中的牙齿识别和计数。
背景:牙科医生在诊断时首先要识别和列举牙齿。全景 X 光片由于视野大、曝光剂量低,被广泛用于牙齿识别。全景 X 光片中牙齿的自动编号可以帮助临床医生避免错误。深度学习已成为一种很有前途的自动化任务工具。我们的目标是评估两步深度学习方法在全景 X 光片中进行牙齿识别和计数的准确性:在这项回顾性观察研究中,三位经验丰富的牙医对 1007 张全景 X 光片进行了标注。其中包括以两种不同的方式绘制边界框:一种用于牙齿,另一种用于象限。所有图像均使用对比度受限的自适应直方图均衡法进行预处理。首先,将全景图像分配给象限检测模型,然后将该模型的输出提供给牙齿编号模型。每一步都使用了一个更快的基于区域的卷积神经网络模型:结果:计算了不同相交-愈合阈值下的平均精度(AP)。结果:在不同的相交过联合阈值下计算出了平均精确度(AP),象限检测和牙齿计数的 AP50 分别为 100%和 95%:我们利用两步深度学习框架对全景 X 光片上的牙齿进行自动计数,取得了很好的结果,AP 水平很高。进一步的研究应在不同的数据集和现实生活中进行。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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来源期刊
Dental Research Journal
Dental Research Journal Dentistry-Dentistry (all)
CiteScore
1.70
自引率
0.00%
发文量
70
审稿时长
52 weeks
期刊介绍: Dental Research Journal, a publication of Isfahan University of Medical Sciences, is a peer-reviewed online journal with Bimonthly print on demand compilation of issues published. The journal’s full text is available online at http://www.drjjournal.net. The journal allows free access (Open Access) to its contents and permits authors to self-archive final accepted version of the articles on any OAI-compliant institutional / subject-based repository. The journal will cover technical and clinical studies related to health, ethical and social issues in field of Dentistry. Articles with clinical interest and implications will be given preference.
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