| Literature DB >> 36258771 |
Chen Sheng1,2, Lin Wang1,2,3, Zhenhuan Huang1,2,3, Tian Wang1,2,3, Yalin Guo1,2,3, Wenjie Hou1,2,3, Laiqing Xu1,2,3, Jiazhu Wang1,2,3, Xue Yan1,2,3.
Abstract
Panoramic radiographs can assist dentist to quickly evaluate patients' overall oral health status. The accurate detection and localization of tooth tissue on panoramic radiographs is the first step to identify pathology, and also plays a key role in an automatic diagnosis system. However, the evaluation of panoramic radiographs depends on the clinical experience and knowledge of dentist, while the interpretation of panoramic radiographs might lead misdiagnosis. Therefore, it is of great significance to use artificial intelligence to segment teeth on panoramic radiographs. In this study, SWin-Unet, the transformer-based Ushaped encoder-decoder architecture with skip-connections, is introduced to perform panoramic radiograph segmentation. To well evaluate the tooth segmentation performance of SWin-Unet, the PLAGH-BH dataset is introduced for the research purpose. The performance is evaluated by F1 score, mean intersection and Union (IoU) and Acc, Compared with U-Net, Link-Net and FPN baselines, SWin-Unet performs much better in PLAGH-BH tooth segmentation dataset. These results indicate that SWin-Unet is more feasible on panoramic radiograph segmentation, and is valuable for the potential clinical application. © The Editorial Office of JSSC & Springer-Verlag GmbH Germany 2022.Entities:
Keywords: Deep convolutional neural network; SWin-Unet; Tooth segmentation; panoramic radiograph
Year: 2022 PMID: 36258771 PMCID: PMC9561331 DOI: 10.1007/s11424-022-2057-9
Source DB: PubMed Journal: J Syst Sci Complex ISSN: 1009-6124 Impact factor: 1.272