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ID 63132
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Sukegawa, Shintaro Department of Oral Pathology and Medicine, Okayama University Graduate School of Medicine, Dentistry and Pharmaceutical Sciences ORCID Kaken ID publons
Matsuyama, Tamamo Department of Molecular Oral Medicine and Maxillofacial Surgery, Graduate School of Biomedical and Health Sciences, Hiroshima University
Tanaka, Futa Department of Electrical, Electronic and Computer Engineering, Faculty of Engineering, Gifu University
Hara, Takeshi Department of Electrical, Electronic and Computer Engineering, Faculty of Engineering, Gifu University
Yoshii, Kazumasa Department of Intelligence Science and Engineering, Graduate School of Natural Science and Technology, Gifu University
Yamashita, Katsusuke Polytechnic Center Kagawa
Nakano, Keisuke Department of Oral Pathology and Medicine, Okayama University Graduate School of Medicine, Dentistry and Pharmaceutical Sciences ORCID Kaken ID publons researchmap
Takabatake, Kiyofumi Department of Oral Pathology and Medicine, Okayama University Graduate School of Medicine, Dentistry and Pharmaceutical Sciences Kaken ID publons researchmap
Kawai, Hotaka Department of Oral Pathology and Medicine, Okayama University Graduate School of Medicine, Dentistry and Pharmaceutical Sciences
Nagatsuka, Hitoshi Department of Oral Pathology and Medicine, Okayama University Graduate School of Medicine, Dentistry and Pharmaceutical Sciences Kaken ID publons researchmap
Furuki, Yoshihiko Department of Oral and Maxillofacial Surgery, Kagawa Prefectural Central Hospital
Abstract
Pell and Gregory, and Winter's classifications are frequently implemented to classify the mandibular third molars and are crucial for safe tooth extraction. This study aimed to evaluate the classification accuracy of convolutional neural network (CNN) deep learning models using cropped panoramic radiographs based on these classifications. We compared the diagnostic accuracy of single-task and multi-task learning after labeling 1330 images of mandibular third molars from digital radiographs taken at the Department of Oral and Maxillofacial Surgery at a general hospital (2014-2021). The mandibular third molar classifications were analyzed using a VGG 16 model of a CNN. We statistically evaluated performance metrics [accuracy, precision, recall, F1 score, and area under the curve (AUC)] for each prediction. We found that single-task learning was superior to multi-task learning (all p < 0.05) for all metrics, with large effect sizes and low p-values. Recall and F1 scores for position classification showed medium effect sizes in single and multi-task learning. To our knowledge, this is the first deep learning study to examine single-task and multi-task learning for the classification of mandibular third molars. Our results demonstrated the efficacy of implementing Pell and Gregory, and Winter's classifications for specific respective tasks.
Published Date
2022-01-13
Publication Title
Scientific Reports
Volume
volume12
Issue
issue1
Publisher
Nature Portfolio
Start Page
684
ISSN
2045-2322
Content Type
Journal Article
language
English
OAI-PMH Set
岡山大学
Copyright Holders
© The Author(s) 2022
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Web of Science KeyUT
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isVersionOf https://doi.org/10.1038/s41598-021-04603-y
License
http://creativecommons.org/licenses/by/4.0/.
Citation
Sukegawa, S., Matsuyama, T., Tanaka, F. et al. Evaluation of multi-task learning in deep learning-based positioning classification of mandibular third molars. Sci Rep 12, 684 (2022). https://doi.org/10.1038/s41598-021-04603-y