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基于深度学习的下颌阻生第三磨牙检测工具。

Deep Learning Based Detection Tool for Impacted Mandibular Third Molar Teeth.

作者信息

Celik Mahmut Emin

机构信息

Department of Electrical Electronics Engineering, Faculty of Engineering, Gazi University, Eti mah. Yukselis sk. No: 5 Maltepe, Ankara 06570, Turkey.

出版信息

Diagnostics (Basel). 2022 Apr 9;12(4):942. doi: 10.3390/diagnostics12040942.

Abstract

Third molar impacted teeth are a common issue with all ages, possibly causing tooth decay, root resorption, and pain. This study was aimed at developing a computer-assisted detection system based on deep convolutional neural networks for the detection of third molar impacted teeth using different architectures and to evaluate the potential usefulness and accuracy of the proposed solutions on panoramic radiographs. A total of 440 panoramic radiographs from 300 patients were randomly divided. As a two-stage technique, Faster RCNN with ResNet50, AlexNet, and VGG16 as a backbone and one-stage technique YOLOv3 were used. The Faster-RCNN, as a detector, yielded a mAP@0.5 rate of 0.91 with ResNet50 backbone while VGG16 and AlexNet showed slightly lower performances: 0.87 and 0.86, respectively. The other detector, YOLO v3, provided the highest detection efficacy with a mAP@0.5 of 0.96. Recall and precision were 0.93 and 0.88, respectively, which supported its high performance. Considering the findings from different architectures, it was seen that the proposed one-stage detector YOLOv3 had excellent performance for impacted mandibular third molar tooth detection on panoramic radiographs. Promising results showed that diagnostic tools based on state-ofthe-art deep learning models were reliable and robust for clinical decision-making.

摘要

第三磨牙阻生是各年龄段都常见的问题,可能导致龋齿、牙根吸收和疼痛。本研究旨在开发一种基于深度卷积神经网络的计算机辅助检测系统,用于使用不同架构检测第三磨牙阻生,并评估所提出的解决方案在全景X光片上的潜在实用性和准确性。从300名患者中随机选取了440张全景X光片。采用了以ResNet50、AlexNet和VGG16为骨干网络的两阶段技术Faster RCNN以及一阶段技术YOLOv3。作为检测器,以ResNet50为骨干网络的Faster-RCNN的mAP@0.5率为0.91,而VGG16和AlexNet的性能略低,分别为0.87和0.86。另一个检测器YOLO v3的检测效果最佳,mAP@0.5为0.96。召回率和精确率分别为0.93和0.88,这支持了其高性能。考虑到不同架构的结果,可以看出所提出的一阶段检测器YOLOv3在全景X光片上对下颌第三磨牙阻生的检测具有出色性能。有前景的结果表明,基于先进深度学习模型的诊断工具对于临床决策是可靠且稳健的。

https://cdn.ncbi.nlm.nih.gov/pmc/blobs/9c3a/9025752/5c658dd98ba1/diagnostics-12-00942-g001.jpg

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