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应用深度学习方法测量牙槽骨水平。

Use of the deep learning approach to measure alveolar bone level.

机构信息

Department of Periodontics and Dental Hygiene, The University of Texas Health Science Center at Houston School of Dentistry, Houston, Texas, USA.

School of Biomedical Informatics, The University of Texas Health Science Center at Houston, Houston, Texas, USA.

出版信息

J Clin Periodontol. 2022 Mar;49(3):260-269. doi: 10.1111/jcpe.13574. Epub 2021 Dec 31.

Abstract

AIM

The goal was to use a deep convolutional neural network to measure the radiographic alveolar bone level to aid periodontal diagnosis.

MATERIALS AND METHODS

A deep learning (DL) model was developed by integrating three segmentation networks (bone area, tooth, cemento-enamel junction) and image analysis to measure the radiographic bone level and assign radiographic bone loss (RBL) stages. The percentage of RBL was calculated to determine the stage of RBL for each tooth. A provisional periodontal diagnosis was assigned using the 2018 periodontitis classification. RBL percentage, staging, and presumptive diagnosis were compared with the measurements and diagnoses made by the independent examiners.

RESULTS

The average Dice Similarity Coefficient (DSC) for segmentation was over 0.91. There was no significant difference in the RBL percentage measurements determined by DL and examiners ( ). The area under the receiver operating characteristics curve of RBL stage assignment for stages I, II, and III was 0.89, 0.90, and 0.90, respectively. The accuracy of the case diagnosis was 0.85.

CONCLUSIONS

The proposed DL model provides reliable RBL measurements and image-based periodontal diagnosis using periapical radiographic images. However, this model has to be further optimized and validated by a larger number of images to facilitate its application.

摘要

目的

利用深度卷积神经网络测量放射状牙槽骨水平,辅助牙周病诊断。

材料与方法

通过整合三个分割网络(骨区、牙齿、牙骨质-釉质界)和图像分析,开发了一个深度学习(DL)模型,以测量放射状骨水平并分配放射状骨丧失(RBL)阶段。计算 RBL 的百分比,以确定每个牙齿的 RBL 阶段。使用 2018 年牙周炎分类法进行暂定牙周病诊断。比较 RBL 百分比、分期和暂定诊断与独立检查者的测量和诊断。

结果

分割的平均骰子相似系数(DSC)超过 0.91。DL 和检查者确定的 RBL 百分比测量值无显著差异( )。RBL 阶段分配的受试者工作特征曲线下面积分别为 0.89、0.90 和 0.90。病例诊断的准确率为 0.85。

结论

所提出的 DL 模型使用根尖片提供可靠的 RBL 测量值和基于图像的牙周病诊断。然而,该模型需要通过更多的图像进一步优化和验证,以促进其应用。

相似文献

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Use of the deep learning approach to measure alveolar bone level.应用深度学习方法测量牙槽骨水平。
J Clin Periodontol. 2022 Mar;49(3):260-269. doi: 10.1111/jcpe.13574. Epub 2021 Dec 31.
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Application of deep machine learning for the radiographic diagnosis of periodontitis.深度学习在牙周炎放射诊断中的应用。
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