DOI
10.1016/j.jds.2023.03.020
First Page
1301
Last Page
1309
Abstract
Abstract Background/purpose Artificial Intelligence (AI) can optimize treatment approaches in dental healthcare due to its high level of accuracy and wide range of applications. This study seeks to propose a new deep learning (DL) ensemble model based on deep Convolutional Neural Network (CNN) algorithms to predict tooth position, detect shape, detect remaining interproximal bone level, and detect radiographic bone loss (RBL) using periapical and bitewing radiographs. Materials and methods 270 patients from January 2015 to December 2020, and all images were deidentified without private information for this study. A total of 8000 periapical radiographs with 27,964 teeth were included for our model. AI algorithms utilizing the YOLOv5 model and VIA labeling platform, including VGG-16 and U-Net architecture, were created as a novel ensemble model. Results of AI analysis were compared with clinicians' assessments. Results DL-trained ensemble model accuracy was approximately 90% for periapical radiographs. Accuracy for tooth position detection was 88.8%, tooth shape detection 86.3%, periodontal bone level detection 92.61% and radiographic bone loss detection 97.0%. AI models were superior to mean accuracy values from 76% to 78% when detection was performed by dentists. Conclusion The proposed DL-trained ensemble model provides a critical cornerstone for radiographic detection and a valuable adjunct to periodontal diagnosis. High accuracy and reliability indicate model's strong potential to enhance clinical professional performance and build more efficient dental health services.
Recommended Citation
Chang, Wei-Jen; Chen, Chin-Chang; Wu, Yi-Fan; Aung, Lwin Moe; Lin, Jerry C.-Y.; Ngo, Sin Ting; Su, Jo-Ning; and Lin, Yuan-Min
(2023)
"Automatic recognition of teeth and periodontal bone loss measurement in digital radiographs using deep-learning artificial intelligence,"
Journal of Dental Sciences: Vol. 18:
Iss.
3, Article 35.
DOI: 10.1016/j.jds.2023.03.020
Available at:
https://jds.ads.org.tw/journal/vol18/iss3/35