Two operators prepared 56 restorative cavities on simulated mandibular first molars according to 4 ICDAS classifications, followed by 3D scanning and computer-aided design processing. The surface area, virtual volume, Hausdorff distance (HD), and Dice Similarity Coefficients were computed. Multivariate analysis of variance was used to assess cavity size and operator proficiency interactions, and 1-way ANOVA was used to evaluate HD differences across 4 cavity classifications (α=.05). The 3D convolutional neural network (CNN) predicted the ICDAS class, and Saliency Maps explained the decisions of the models.
Published: October 22, 2024
Journal: The Journal of Prosthetic Dentistry
Research focusing on unsupervised segmentation of individual teeth from three-dimensional scans of the dental arch.
A prototype Large Language Model framework tailored specifically for dentistry applications.
Research on applying 3D Vision Transformers and Explainable AI techniques to challenges in prosthetic dentistry.