利用深度学习对Bitewings进行自动图表归档:在多中心研究中增强临床诊断。

IF 4.8 2区 医学 Q1 DENTISTRY, ORAL SURGERY & MEDICINE
Lingyun Cao , Niels van Nistelrooij , Eduardo Trota Chaves , Stefaan Bergé , Maximiliano Sergio Cenci , Tong Xi , Bas Loomans , Shankeeth Vinayahalingam
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引用次数: 0

摘要

目的:咬翼片是一种常用的用于观察牙齿和各种牙齿状况的x线片。手动标记和诊断咬翼的海图文件是费时的,容易产生观察者依赖的变化。本多中心研究提出一种深度学习(DL)方法来自动化综合咬翼图归档。方法:采用德国和荷兰产咬翼犬1045只进行培训和验证,斯洛伐克产咬翼犬216只进行外验。注释由两名牙医、一名博士研究员和一名龋齿专家进行。分层掩码DINO用于多类分层端到端实例分割。使用未修改的Mask DINO、SparseInst和Mask R-CNN进行比较。采用f1评分、敏感性、特异性、精密度、平均精密度(mAP)和受试者工作特征曲线下面积(AUC)评价模型的性能。结果:假牙DINO模型在牙齿分割和标记方面表现出较高的有效性,精度、灵敏度和f1评分均在0.96以上。分层掩膜DINO在牙齿发现分类方面优于其他模型。种植体、牙冠、桥桥、填充物、根管治疗(RCT)、龋损、牙石沉积的f1评分分别为0.944、0.918、0.952、0.956、0.988、0.749、0.758,特异性均在0.95以上。结论:本研究提出了一种基于dl的咬翼综合评估和诊断方法,强调了其在牙科实践中提高病历归档效率和准确性的潜力。临床意义:该模型提供了完全自动化的牙齿分割和编号,以及全面的牙齿状况分割。牙科专业人员可以从这个模型中受益,减少人工工作量,提高临床诊断。
本文章由计算机程序翻译,如有差异,请以英文原文为准。

Automated chart filing on bitewings using deep learning: enhancing clinical diagnosis in a multi-center study

Automated chart filing on bitewings using deep learning: enhancing clinical diagnosis in a multi-center study

Objectives

Bitewings are commonly used radiographs for visualizing teeth and various dental conditions. Manual labeling and diagnosis on bitewings for chart filing are time-consuming and prone to observer-dependent variations. This multi-center study proposes a deep learning (DL) approach to automate comprehensive chart filing of bitewings.

Methods

A total of 1045 bitewings from Germany and The Netherlands were used for training and validation, and 216 from Slovakia for external testing. Annotations were performed by two dentists, one PhD researcher, and one caries expert. Hierarchical Mask DINO was developed for multi-class hierarchical end-to-end instance segmentation. Unmodified Mask DINO, SparseInst, and Mask R-CNN were used for comparison. Model performance was evaluated using F1-score, sensitivity, specificity, precision, mean average precision (mAP), and area under receiver operating characteristic curve (AUC).

Results

Mask DINO models exhibited high effectiveness for tooth segmentation and labeling, achieving precision, sensitivity, and F1-scores above 0.96. Hierarchical Mask DINO outperformed the other models in dental finding classification. F1-scores for implant, crown, pontic, filling, root canal treatment (RCT), caries lesion, and calculus deposit were 0.944, 0.918, 0.952, 0.956, 0.988, 0.749, and 0.758, respectively, with specificities all above 0.95.

Conclusions

This study presented a DL-based approach for comprehensive assessment and diagnosis of bitewings, underlining its potential to enhance the efficiency and accuracy of chart filing in dental practice.

Clinical significance

The proposed model provided fully automated tooth segmentation and numbering, along with comprehensive segmentation of dental conditions. Dental professionals can benefit from this model for reducing manual workload and enhancing clinical diagnosis.
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来源期刊
Journal of dentistry
Journal of dentistry 医学-牙科与口腔外科
CiteScore
7.30
自引率
11.40%
发文量
349
审稿时长
35 days
期刊介绍: The Journal of Dentistry has an open access mirror journal The Journal of Dentistry: X, sharing the same aims and scope, editorial team, submission system and rigorous peer review. The Journal of Dentistry is the leading international dental journal within the field of Restorative Dentistry. Placing an emphasis on publishing novel and high-quality research papers, the Journal aims to influence the practice of dentistry at clinician, research, industry and policy-maker level on an international basis. Topics covered include the management of dental disease, periodontology, endodontology, operative dentistry, fixed and removable prosthodontics, dental biomaterials science, long-term clinical trials including epidemiology and oral health, technology transfer of new scientific instrumentation or procedures, as well as clinically relevant oral biology and translational research. The Journal of Dentistry will publish original scientific research papers including short communications. It is also interested in publishing review articles and leaders in themed areas which will be linked to new scientific research. Conference proceedings are also welcome and expressions of interest should be communicated to the Editor.
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