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Erschienen in: Odontology 2/2024

31.10.2023 | Original Article

Second mesiobuccal canal segmentation with YOLOv5 architecture using cone beam computed tomography images

verfasst von: Şuayip Burak Duman, Duygu Çelik Özen, Ibrahim Şevki Bayrakdar, Oğuzhan Baydar, Elham S. Abu Alhaija, Dilek Helvacioğlu Yiğit, Özer Çelik, Rohan Jagtap, Roberta Pileggi, Kaan Orhan

Erschienen in: Odontology | Ausgabe 2/2024

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Abstract

The objective of this study is to use a deep-learning model based on CNN architecture to detect the second mesiobuccal (MB2) canals, which are seen as a variation in maxillary molars root canals. In the current study, 922 axial sections from 153 patients’ cone beam computed tomography (CBCT) images were used. The segmentation method was employed to identify the MB2 canals in maxillary molars that had not previously had endodontic treatment. Labeled images were divided into training (80%), validation (10%) and testing (10%) groups. The artificial intelligence (AI) model was trained using the You Only Look Once v5 (YOLOv5x) architecture with 500 epochs and a learning rate of 0.01. Confusion matrix and receiver-operating characteristic (ROC) analysis were used in the statistical evaluation of the results. The sensitivity of the MB2 canal segmentation model was 0.92, the precision was 0.83, and the F1 score value was 0.87. The area under the curve (AUC) in the ROC graph of the model was 0.84. The mAP value at 0.5 inter-over union (IoU) was found as 0.88. The deep-learning algorithm used showed a high success in the detection of the MB2 canal. The success of the endodontic treatment can be increased and clinicians’ time can be preserved using the newly created artificial intelligence-based models to identify variations in root canal anatomy before the treatment.
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Metadaten
Titel
Second mesiobuccal canal segmentation with YOLOv5 architecture using cone beam computed tomography images
verfasst von
Şuayip Burak Duman
Duygu Çelik Özen
Ibrahim Şevki Bayrakdar
Oğuzhan Baydar
Elham S. Abu Alhaija
Dilek Helvacioğlu Yiğit
Özer Çelik
Rohan Jagtap
Roberta Pileggi
Kaan Orhan
Publikationsdatum
31.10.2023
Verlag
Springer Nature Singapore
Erschienen in
Odontology / Ausgabe 2/2024
Print ISSN: 1618-1247
Elektronische ISSN: 1618-1255
DOI
https://doi.org/10.1007/s10266-023-00864-3

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