Author:
Al-Asali Mohammed,Alqutaibi Ahmed Yaseen,Al-Sarem Mohammed,Saeed Faisal
Abstract
AbstractRecent studies have shown that dental implants have high long-term survival rates, indicating their effectiveness compared to other treatments. However, there is still a concern regarding treatment failure. Deep learning methods, specifically U-Net models, have been effectively applied to analyze medical and dental images. This study aims to utilize U-Net models to segment bone in regions where teeth are missing in cone-beam computerized tomography (CBCT) scans and predict the positions of implants. The proposed models were applied to a CBCT dataset of Taibah University Dental Hospital (TUDH) patients between 2018 and 2023. They were evaluated using different performance metrics and validated by a domain expert. The experimental results demonstrated outstanding performance in terms of dice, precision, and recall for bone segmentation (0.93, 0.94, and 0.93, respectively) with a low volume error (0.01). The proposed models offer promising automated dental implant planning for dental implantologists.
Publisher
Springer Science and Business Media LLC
Reference30 articles.
1. Kandavalli, S. R. et al. A brief review on the evolution of metallic dental implants: history, design, and application. Front. Mater. 8, 646383 (2021).
2. Searson, L. J., Gough, M. & Hemmings, K. Implantology in General Dental Practice 7–9 (Quintessence Publishing Company Limited, 2019).
3. Lee, J.-H., Frias, V., Lee, K.-W. & Wright, R. F. Effect of implant size and shape on implant success rates: A literature review. J. Prosthet. Dent. 94, 377–381 (2005).
4. Kola, M. Z. et al. Surgical templates for dental implant positioning; current knowledge and clinical perspectives. Niger. J. Surg. 21, 1–5 (2015).
5. De Vos, W., Casselman, J. & Swennen, G. Cone-beam computerized tomography (CBCT) imaging of the oral and maxillofacial region: A systematic review of the literature. Int. J. Oral Maxillofac. Surg. 38, 609–625 (2009).