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深度学习方法自动诊断牙全景片的牙周骨丧失和牙周炎阶段。

Deep learning method to automatically diagnose periodontal bone loss and periodontitis stage in dental panoramic radiograph.

机构信息

Department of Stomatology, Qilu Hospital (Qingdao), Cheeloo College of Medicine, Shandong University, Qingdao, 266035, China.

Department of Stomatology, Qilu Hospital (Qingdao), Cheeloo College of Medicine, Shandong University, Qingdao, 266035, China.

出版信息

J Dent. 2024 Nov;150:105373. doi: 10.1016/j.jdent.2024.105373. Epub 2024 Sep 26.

Abstract

OBJECTIVES

Artificial intelligence (AI) could be used as an automatically diagnosis method for dental disease due to its accuracy and efficiency. This research proposed a novel convolutional neural network (CNN)-based deep learning (DL) ensemble model for tooth position detection, tooth outline segmentation, tooth tissue segmentation, periodontal bone loss and periodontitis stage prediction using dental panoramic radiographs.

METHODS

The dental panoramic radiographs of 320 patients during the period January 2020 to December 2023 were collected in our dataset. All images were de-identified without private information. In total, 8462 teeth were included. The algorithms that DL ensemble model adopted include YOLOv8, Mask R-CNN, and TransUNet. The prediction results of DL method were compared with diagnosis of periodontists.

RESULTS

The periodontal bone loss degree deviation between the DL method and ground truth drawn by the three periodontists was 5.28%. The overall PCC value of the DL method and the periodontists' diagnoses was 0.832 (P <​ 0.001). ​The ICC value was 0.806 (P <​ 0.001). The total diagnostic accuracy of the DL method was 89.45%.

CONCLUSIONS

The proposed DL ensemble model in this study shows high accuracy and efficiency in radiographic detection and a valuable adjunct to periodontal diagnosis. The method has strong potential to enhance clinical professional performance and build more efficient dental health services.

CLINICAL SIGNIFICANCE

The DL method not only could help dentists for rapid and accurate auxiliary diagnosis and prevent medical negligence, but also could be used as a useful learning resource for inexperienced dentists and dental students.

摘要

目的

由于人工智能(AI)的准确性和效率,它可以被用作牙科疾病的自动诊断方法。本研究提出了一种基于卷积神经网络(CNN)的深度学习(DL)集成模型,用于使用口腔全景 X 光片检测牙齿位置、牙齿轮廓分割、牙齿组织分割、牙周骨丢失和牙周炎阶段预测。

方法

我们的数据集收集了 2020 年 1 月至 2023 年 12 月期间的 320 名患者的口腔全景 X 光片。所有图像均经过去识别处理,没有私人信息。总共有 8462 颗牙齿被纳入研究。DL 集成模型采用的算法包括 YOLOv8、Mask R-CNN 和 TransUNet。将 DL 方法的预测结果与牙周病医生的诊断进行比较。

结果

DL 方法与由三名牙周病医生手工勾画的牙周骨丢失程度偏差为 5.28%。DL 方法和牙周病医生诊断的总体 PCC 值为 0.832(P<0.001)。ICC 值为 0.806(P<0.001)。DL 方法的总诊断准确率为 89.45%。

结论

本研究提出的 DL 集成模型在放射学检测中表现出了较高的准确性和效率,是牙周病诊断的有价值的辅助手段。该方法具有增强临床专业性能和构建更高效的口腔健康服务的巨大潜力。

临床意义

DL 方法不仅可以帮助牙医进行快速准确的辅助诊断,防止医疗疏忽,还可以作为经验不足的牙医和牙科学生的有用学习资源。

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