The Application of Deep Learning on CBCT in Dentistry

Diagnostics (Basel). 2023 Jun 14;13(12):2056. doi: 10.3390/diagnostics13122056.

Abstract

Cone beam computed tomography (CBCT) has become an essential tool in modern dentistry, allowing dentists to analyze the relationship between teeth and the surrounding tissues. However, traditional manual analysis can be time-consuming and its accuracy depends on the user's proficiency. To address these limitations, deep learning (DL) systems have been integrated into CBCT analysis to improve accuracy and efficiency. Numerous DL models have been developed for tasks such as automatic diagnosis, segmentation, classification of teeth, inferior alveolar nerve, bone, airway, and preoperative planning. All research articles summarized were from Pubmed, IEEE, Google Scholar, and Web of Science up to December 2022. Many studies have demonstrated that the application of deep learning technology in CBCT examination in dentistry has achieved significant progress, and its accuracy in radiology image analysis has reached the level of clinicians. However, in some fields, its accuracy still needs to be improved. Furthermore, ethical issues and CBCT device differences may prohibit its extensive use. DL models have the potential to be used clinically as medical decision-making aids. The combination of DL and CBCT can highly reduce the workload of image reading. This review provides an up-to-date overview of the current applications of DL on CBCT images in dentistry, highlighting its potential and suggesting directions for future research.

Keywords: cone beam computed tomography; deep learning; diagnosis; medical decision-making aids; segmentation.

Publication types

  • Review

Grants and funding

This work was supported by the Clinical Research Project of the Orthodontic Committee of the Chinese Stomatological Association, grant number COS-C2021-05; The Hubei Province Intellectual Property High-Value Cultivation Project; Science and Technology Department of Hubei Province, grant number 2022CFB236.