PXseg:基于CBCT和全景x线照片的自动牙齿分割、编号和异常形态检测。

IF 3.1 2区 医学 Q1 DENTISTRY, ORAL SURGERY & MEDICINE
Raokaijuan Wang, Fangyuan Cheng, Guangsheng Dai, Jiayu Zhang, Chengmin Fan, Jinghong Yu, Juan Li, Fulin Jiang
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引用次数: 0

摘要

目的:通过优化标注和应用预训练,设计并推广全景x射线(PX)牙齿分割、编号和异常形态检测的新方法PXseg。方法:采用锥形束ct (cone beam computed tomography, CBCT)生成的具有精确三维标签的ctpx进行多中心预训练,同时输入具有二维标签的常规px进行训练。利用内部数据集进行视觉分析和统计分析,评估PXseg的分割和编号性能,并与未进行ctPX预训练的模型进行比较;利用由复杂牙病cpx组成的外部数据集,评估PXseg检测异常牙齿的准确性。此外,还进行了诊断测试,对比在有PXseg帮助和没有PXseg帮助的情况下的诊断效率。结果:PXseg在牙齿分割中的DSC和f1评分分别达到0.882和0.902,比未进行预训练的模型分别提高了4.6%和4.0%。对于齿数,PXseg的f1评分达到0.943,提高了2.2%。在分割提升的基础上,异常牙形态检测准确率超过0.957,提高4.3%。我们建立了一个网站来协助解读PX,在PXseg的帮助下,诊断效率大大提高。结论:准确标签在ctPX中的应用增加了PXseg的预训练权值,提高了训练效果,在牙齿分割、编号、异常形态检测等方面均有提升。PXseg提供快速准确的结果,简化了PX诊断的工作流程,具有重要的临床应用前景。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
PXseg: automatic tooth segmentation, numbering and abnormal morphology detection based on CBCT and panoramic radiographs.

Objective: PXseg, a novel approach for tooth segmentation, numbering and abnormal morphology detection in panoramic X-ray (PX), was designed and promoted through optimizing annotation and applying pre-training.

Methods: Derived from multicenter, ctPXs generated from cone beam computed tomography (CBCT) with accurate 3D labels were utilized for pre-training, while conventional PXs (cPXs) with 2D labels were input for training. Visual and statistical analyses were conducted using the internal dataset to assess segmentation and numbering performances of PXseg and compared with the model without ctPX pre-training, while the accuracy of PXseg detecting abnormal teeth was evaluated using the external dataset consisting of cPXs with complex dental diseases. Besides, a diagnostic testing was performed to contrast diagnostic efficiency with and without PXseg's assistance.

Results: The DSC and F1-score of PXseg in tooth segmentation reached 0.882 and 0.902, which increased by 4.6% and 4.0% compared to the model without pre-training. For tooth numbering, the F1-score of PXseg reached 0.943 and increased by 2.2%. Based on the promotion in segmentation, the accuracy of abnormal tooth morphology detection exceeded 0.957 and was 4.3% higher. A website was constructed to assist in PX interpretation, and the diagnostic efficiency was greatly enhanced with the assistance of PXseg.

Conclusions: The application of accurate labels in ctPX increased the pre-training weight of PXseg and improved the training effect, achieving promotions in tooth segmentation, numbering and abnormal morphology detection. Rapid and accurate results provided by PXseg streamlined the workflow of PX diagnosis, possessing significant clinical application prospect.

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来源期刊
BMC Oral Health
BMC Oral Health DENTISTRY, ORAL SURGERY & MEDICINE-
CiteScore
3.90
自引率
6.90%
发文量
481
审稿时长
6-12 weeks
期刊介绍: BMC Oral Health is an open access, peer-reviewed journal that considers articles on all aspects of the prevention, diagnosis and management of disorders of the mouth, teeth and gums, as well as related molecular genetics, pathophysiology, and epidemiology.
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