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An enhanced tooth segmentation and numbering according to FDI notation in bitewing radiographs       
Yazarlar (4)
Buse Yaren Tekin
Türkiye
Doç. Dr. Caner ÖZCAN Doç. Dr. Caner ÖZCAN
Karabük Üniversitesi, Türkiye
Dr. Öğr. Üyesi Adem PEKİNCE Dr. Öğr. Üyesi Adem PEKİNCE
Türkiye
Yasin Yaşa
Türkiye
Devamını Göster
Özet
Bitewing radiographic imaging is an excellent diagnostic tool for detecting caries and restorations that are difficult to view in the mouth, particularly at the molar surfaces. Labeling radiological images by an expert is a labor-intensive, time-consuming, and meticulous process. A deep learning-based approach has been applied in this study so that experts can perform dental analyzes successfully, quickly, and efficiently. Computer-aided applications can now detect teeth and number classes in bitewing radiographic images automatically. In the deep learning-based approach of the study, the neural network has a structure that works according to regions. A region-based automatic segmentation system that segments each tooth using masks to help to assist analysis as given to lessen the effort of experts. To acquire precision and recall on a test dataset, Intersection Over Union value is determined by comparing the model's classified and ground-truth boxes. The chosen IOU value was set to 0.9 to allocate bounding boxes to the class scores. Mask R-CNN is a method that serves as instance segmentation and predicts a pixel-to-pixel segmentation mask when applied to each Region of Interest. The tooth numbering module uses the FDI notation, which is widely used by dentists, to classify and number dental items found as a result of segmentation. According to the experimental results were reached 100% precision and 97.49% mAP value. In the tooth numbering, were obtained 94.35% precision and 91.51% as an mAP value. The performance of the Mask R-CNN method used has been proven by comparing it with other state-of-the-art methods.
Anahtar Kelimeler
Convolutional neural networks | Dental bitewing radiograph | Fdi notation | Instance segmentation | Tooth numbering
Makale Türü Özgün Makale
Makale Alt Türü SSCI, AHCI, SCI, SCI-Exp dergilerinde yayımlanan tam makale
Dergi Adı COMPUTERS IN BIOLOGY AND MEDICINE
Dergi ISSN 0010-4825 Wos Dergi Scopus Dergi
Dergi Tarandığı Indeksler SCI
Dergi Grubu Q1
Makale Dili İngilizce
Basım Tarihi 07-2022
Cilt No 146
Sayı 105547
Sayfalar 1 / 10
Doi Numarası 10.1016/j.compbiomed.2022.105547
Makale Linki https://www.sciencedirect.com/science/article/pii/S0010482522003390