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本文引用的文献

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Dentomaxillofac Radiol. 2024 Jan 11;53(1):32-42. doi: 10.1093/dmfr/twad003.
2
An artificial intelligence study: automatic description of anatomic landmarks on panoramic radiographs in the pediatric population.一项人工智能研究:在儿科人群的全景片上自动描述解剖标志。
BMC Oral Health. 2023 Oct 17;23(1):764. doi: 10.1186/s12903-023-03532-8.
3
The role of deep learning for periapical lesion detection on panoramic radiographs.深度学习在全景片根尖周病变检测中的作用。
Dentomaxillofac Radiol. 2023 Nov;52(8):20230118. doi: 10.1259/dmfr.20230118. Epub 2023 Oct 18.
4
Assessing the Effectiveness of Artificial Intelligence Models for Detecting Alveolar Bone Loss in Periodontal Disease: A Panoramic Radiograph Study.评估人工智能模型检测牙周病中牙槽骨丧失的有效性:一项全景X线片研究。
Diagnostics (Basel). 2023 May 19;13(10):1800. doi: 10.3390/diagnostics13101800.
5
Automatic Segmentation of Teeth, Crown-Bridge Restorations, Dental Implants, Restorative Fillings, Dental Caries, Residual Roots, and Root Canal Fillings on Orthopantomographs: Convenience and Pitfalls.口腔全景片上牙齿、冠桥修复体、牙种植体、修复性充填物、龋齿、残根和根管充填物的自动分割:便利性与陷阱
Diagnostics (Basel). 2023 Apr 20;13(8):1487. doi: 10.3390/diagnostics13081487.
6
A Novel Deep Learning-Based Approach for Segmentation of Different Type Caries Lesions on Panoramic Radiographs.一种基于深度学习的全景X线片上不同类型龋损分割新方法。
Diagnostics (Basel). 2023 Jan 5;13(2):202. doi: 10.3390/diagnostics13020202.
7
Collaborative deep learning model for tooth segmentation and identification using panoramic radiographs.基于全景 X 光片的牙齿分割和识别的协同深度学习模型。
Comput Biol Med. 2022 Sep;148:105829. doi: 10.1016/j.compbiomed.2022.105829. Epub 2022 Jul 16.
8
Deep Learning Based Detection Tool for Impacted Mandibular Third Molar Teeth.基于深度学习的下颌阻生第三磨牙检测工具。
Diagnostics (Basel). 2022 Apr 9;12(4):942. doi: 10.3390/diagnostics12040942.
9
A two-stage deep learning architecture for radiographic staging of periodontal bone loss.用于牙周骨丧失放射分期的两阶段深度学习架构。
BMC Oral Health. 2022 Apr 1;22(1):106. doi: 10.1186/s12903-022-02119-z.
10
Caries segmentation on tooth X-ray images with a deep network.基于深度网络的牙齿X光图像龋病分割
J Dent. 2022 Apr;119:104076. doi: 10.1016/j.jdent.2022.104076. Epub 2022 Feb 23.

DMAF-Net:用于全景X光片牙齿结构检测的可变形多尺度自适应融合网络

DMAF-Net: deformable multi-scale adaptive fusion network for dental structure detection with panoramic radiographs.

作者信息

Li Wei, Wang Yuanjun, Liu Yu

机构信息

School of Health Science and Engineering, University of Shanghai for Science and Technology, Shanghai 200093, China.

Department of Radiology, Shanghai Ninth People's Hospital, Shanghai Jiao Tong University School of Medicine, Shanghai 200011, China.

出版信息

Dentomaxillofac Radiol. 2024 Jun 28;53(5):296-307. doi: 10.1093/dmfr/twae014.

DOI:10.1093/dmfr/twae014
PMID:38518093
原文链接:https://pmc.ncbi.nlm.nih.gov/articles/PMC11211679/
Abstract

OBJECTIVES

Panoramic radiography is one of the most commonly used diagnostic modalities in dentistry. Automatic recognition of panoramic radiography helps dentists in decision support. In order to improve the accuracy of the detection of dental structural problems in panoramic radiographs, we have improved the You Only Look Once (YOLO) network and verified the feasibility of this new method in aiding the detection of dental problems.

METHODS

We propose a Deformable Multi-scale Adaptive Fusion Net (DMAF-Net) to detect 5 types of dental situations (impacted teeth, missing teeth, implants, crown restorations, and root canal-treated teeth) in panoramic radiography by improving the YOLO network. In DMAF-Net, we propose different modules to enhance the feature extraction capability of the network as well as to acquire high-level features at different scales, while using adaptively spatial feature fusion to solve the problem of scale mismatches of different feature layers, which effectively improves the detection performance. In order to evaluate the detection performance of the models, we compare the experimental results of different models in the test set and select the optimal results of the models by calculating the average of different metrics in each category as the evaluation criteria.

RESULTS

About 1474 panoramic radiographs were divided into training, validation, and test sets in the ratio of 7:2:1. In the test set, the average precision and recall of DMAF-Net are 92.7% and 87.6%, respectively; the mean Average Precision (mAP0.5 and mAP[0.5:0.95]) are 91.8% and 63.7%, respectively.

CONCLUSIONS

The proposed DMAF-Net model improves existing deep learning models and achieves automatic detection of tooth structure problems in panoramic radiographs. This new method has great potential for new computer-aided diagnostic, teaching, and clinical applications in the future.

摘要

目的

全景放射摄影是牙科最常用的诊断方式之一。全景放射摄影的自动识别有助于牙医进行决策支持。为提高全景X光片中牙齿结构问题的检测准确性,我们改进了You Only Look Once(YOLO)网络,并验证了这种新方法在辅助检测牙齿问题方面的可行性。

方法

我们提出了一种可变形多尺度自适应融合网络(DMAF-Net),通过改进YOLO网络来检测全景放射摄影中的5种牙齿情况(阻生牙、缺失牙、种植牙、冠修复体和根管治疗牙)。在DMAF-Net中,我们提出了不同的模块来增强网络的特征提取能力以及获取不同尺度的高级特征,同时使用自适应空间特征融合来解决不同特征层的尺度不匹配问题,从而有效提高检测性能。为了评估模型的检测性能,我们比较了不同模型在测试集中的实验结果,并通过计算每个类别中不同指标的平均值作为评估标准来选择模型的最优结果。

结果

约1474张全景放射照片按7:2:1的比例分为训练集、验证集和测试集。在测试集中,DMAF-Net的平均精度和召回率分别为92.7%和87.6%;平均精度均值(mAP0.5和mAP[0.5:0.95])分别为91.8%和63.7%。

结论

所提出的DMAF-Net模型改进了现有的深度学习模型,并实现了全景X光片中牙齿结构问题的自动检测。这种新方法在未来新型计算机辅助诊断、教学和临床应用方面具有巨大潜力。