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Erschienen in: Oral Radiology 4/2022

22.11.2021 | Original Article

Deep-learning approach for caries detection and segmentation on dental bitewing radiographs

verfasst von: Ibrahim Sevki Bayrakdar, Kaan Orhan, Serdar Akarsu, Özer Çelik, Samet Atasoy, Adem Pekince, Yasin Yasa, Elif Bilgir, Hande Sağlam, Ahmet Faruk Aslan, Alper Odabaş

Erschienen in: Oral Radiology | Ausgabe 4/2022

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Abstract

Objectives

The aim of this study is to recommend an automatic caries detection and segmentation model based on the Convolutional Neural Network (CNN) algorithms in dental bitewing radiographs using VGG-16 and U-Net architecture and evaluate the clinical performance of the model comparing to human observer.

Methods

A total of 621 anonymized bitewing radiographs were used to progress the Artificial Intelligence (AI) system (CranioCatch, Eskisehir, Turkey) for the detection and segmentation of caries lesions. The radiographs were obtained from the Radiology Archive of the Department of Oral and Maxillofacial Radiology of the Faculty of Dentistry of Ordu University. VGG-16 and U-Net implemented with PyTorch models were used for the detection and segmentation of caries lesions, respectively.

Results

The sensitivity, precision, and F-measure rates for caries detection and caries segmentation were 0.84, 0.81; 0.84, 0.86; and 0.84, 0.84, respectively. Comparing to 5 different experienced observers and AI models on external radiographic dataset, AI models showed superiority to assistant specialists.

Conclusion

CNN-based AI algorithms can have the potential to detect and segmentation of dental caries accurately and effectively in bitewing radiographs. AI algorithms based on the deep-learning method have the potential to assist clinicians in routine clinical practice for quickly and reliably detecting the tooth caries. The use of these algorithms in clinical practice can provide to important benefit to physicians as a clinical decision support system in dentistry.
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Metadaten
Titel
Deep-learning approach for caries detection and segmentation on dental bitewing radiographs
verfasst von
Ibrahim Sevki Bayrakdar
Kaan Orhan
Serdar Akarsu
Özer Çelik
Samet Atasoy
Adem Pekince
Yasin Yasa
Elif Bilgir
Hande Sağlam
Ahmet Faruk Aslan
Alper Odabaş
Publikationsdatum
22.11.2021
Verlag
Springer Nature Singapore
Erschienen in
Oral Radiology / Ausgabe 4/2022
Print ISSN: 0911-6028
Elektronische ISSN: 1613-9674
DOI
https://doi.org/10.1007/s11282-021-00577-9

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