Personalized dental crown design: A point-to-mesh completion network

Designing dental crowns with computer-aided design software in dental laboratories is complex and time-consuming. Using real clinical datasets, we developed an end-to-end deep learning model that automatically generates personalized dental crown meshes. The input context includes the prepared tooth,...

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Veröffentlicht in:Medical image analysis 2025-04, Vol.101, p.103439, Article 103439
Hauptverfasser: Hosseinimanesh, Golriz, Alsheghri, Ammar, Keren, Julia, Cheriet, Farida, Guibault, Francois
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Sprache:eng
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Zusammenfassung:Designing dental crowns with computer-aided design software in dental laboratories is complex and time-consuming. Using real clinical datasets, we developed an end-to-end deep learning model that automatically generates personalized dental crown meshes. The input context includes the prepared tooth, its adjacent teeth, and the two closest teeth in the opposing jaw. The training set contains this context, the ground truth crown, and the extracted margin line. Our model consists of two components: First, a feature extractor converts the input point cloud into a set of local feature vectors, which are then fed into a transformer-based model to predict the geometric features of the crown. Second, a point-to-mesh module generates a dense array of points with normal vectors, and a differentiable Poisson surface reconstruction method produces an accurate crown mesh. Training is conducted with three losses: (1) a customized margin line loss; (2) a contrastive-based Chamfer distance loss; and (3) a mean square error (MSE) loss to control mesh quality. We compare our method with our previously published method, Dental Mesh Completion (DMC). Extensive testing confirms our method’s superiority, achieving a 12.32% reduction in Chamfer distance and a 46.43% reduction in MSE compared to DMC. Margin line loss improves Chamfer distance by 5.59%. •An end-to-end transformer network generates high-quality dental crowns.•Adaptive query generation predicts noise-free, high-resolution point clouds.•A point-to-mesh module enables precise 3D dental surface reconstruction.•A custom margin line loss ensures accurate crown alignment on prepared teeth.•InfoCD loss and MSE supervise crown generation for accurate grid control.
ISSN:1361-8415
1361-8423
1361-8423
DOI:10.1016/j.media.2024.103439