Two-Stage Mesh Deep Learning for Automated Tooth Segmentation and Landmark Localization on 3D Intraoral Scans
Tai-Hsien Wu, Chunfeng Lian, Sanghee Lee, Matthew Pastewait, Christian, Piers, Jie Liu, Fang Wang, Li Wang, Chiung-Ying Chiu, Wenchi Wang, Christina, Jackson, Wei-Lun Chao, Dinggang Shen, Ching-Chang Ko

TL;DR
This paper introduces a two-stage mesh deep learning framework for automatic tooth segmentation and landmark localization on 3D intraoral scans, improving accuracy and efficiency for orthodontic applications.
Contribution
The proposed TS-MDL framework combines an improved mesh segmentation network with a lightweight landmark regression model, advancing automation in dental analysis.
Findings
Achieved an average Dice coefficient of 0.964 in segmentation.
Attained a mean absolute error of 0.597 mm in landmark localization.
Outperformed existing methods in both segmentation and landmark detection.
Abstract
Accurately segmenting teeth and identifying the corresponding anatomical landmarks on dental mesh models are essential in computer-aided orthodontic treatment. Manually performing these two tasks is time-consuming, tedious, and, more importantly, highly dependent on orthodontists' experiences due to the abnormality and large-scale variance of patients' teeth. Some machine learning-based methods have been designed and applied in the orthodontic field to automatically segment dental meshes (e.g., intraoral scans). In contrast, the number of studies on tooth landmark localization is still limited. This paper proposes a two-stage framework based on mesh deep learning (called TS-MDL) for joint tooth labeling and landmark identification on raw intraoral scans. Our TS-MDL first adopts an end-to-end \emph{i}MeshSegNet method (i.e., a variant of the existing MeshSegNet with both improved…
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