AUTHOR=Yang Lan , Zhu ZiCheng , Li Yongshan , Huang Jieying , Wang Xiaoli , Zheng Haoran , Chen Jiang TITLE=Clinical-oriented 3D visualization and quantitative analysis of gingival thickness using convolutional neural networks and CBCT JOURNAL=Frontiers in Dental Medicine VOLUME=Volume 6 - 2025 YEAR=2025 URL=https://www.frontiersin.org/journals/dental-medicine/articles/10.3389/fdmed.2025.1635155 DOI=10.3389/fdmed.2025.1635155 ISSN=2673-4915 ABSTRACT=ObjectiveTraditional gingival thickness (GT) assessment methods provide only point measurements or simple classifications, lacking spatial distribution information. This study aimed to develop a CBCT-based 3D visualization system for gingival thickness using deep learning, providing a novel spatial assessment tool for implant surgery planning.MethodsCBCT and intraoral scanning (IOS) data from 50 patients with tooth loss were collected to establish a standardized dataset. DeepLabV3+ architecture was employed for semantic segmentation of gingival and bone tissues. A 3D visualization algorithm incorporating vertical scanning strategy, triangular mesh construction, and gradient color mapping was innovatively developed to transform 2D slices into continuous 3D surfaces.ResultsThe semantic segmentation model achieved a mIoU of 85.92 ± 0.43%. The 3D visualization system successfully constructed a comprehensive spatial distribution model of gingival thickness, clearly demonstrating GT variations from alveolar ridge to labial aspect through gradient coloration. The 3D model enabled millimeter-precision quantification, supporting multi-angle and multi-level GT assessment that overcame the limitations of traditional 2D measurements.ConclusionThis system represents a methodological advancement from qualitative to spatial quantitative GT assessment. The intuitive 3D visualization serves as an innovative preoperative tool that identifies high-risk areas and guides personalized surgical planning, enhancing predictability for aesthetic and complex implant cases.