利用生成式深度学习的数据驱动方法进行单个人类臼齿的部分重建

Alexander Broll, Martin Rosentritt, Thomas Schlegl, Markus Goldhacker
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摘要

由于龋齿的高发率,人们经常需要使用固定牙齿修复体来修复受损的牙齿或替换缺失的牙齿,同时保留牙齿的功能和美观。然而,由于人类咀嚼系统的复杂性以及每颗牙齿的独特形态,牙齿修复体的制作仍然具有挑战性。在安装固定义齿(FDP)的过程中,经常需要进行调整和返工,从而增加了成本和治疗时间。鉴于生成对抗网络(GAN)能够以无监督的方式表示大量数据集,并具有广泛的应用范围,因此考虑使用生成对抗网络来完成给定任务。StyleGAN-2 在图像质量和训练稳定性方面表现出良好的能力,因此被选为生成咬合面的主要网络。为了将所提供的三维牙齿数据集与 StyleGAN 架构集成,提出了一种二维投影方法来生成二维表示。使用贝叶斯图像重建方法,通过 4 种常见的镶嵌类型,展示了训练有素的网络的重建能力。这包括对数据进行预处理,以提取所用方法所需的牙体预备信息,以及修改初始重建损失。重建过程对所有牙体预备都产生了令人满意的视觉和量化结果,均方根误差 (RMSE) 在 0.02 毫米到 0.18 毫米之间。在与 CAD 嵌体制作的临床程序进行比较时,牙医组在总共 4 种嵌体几何形状中有 3 种更倾向于使用基于 GAN 的修复体。重建过程和 GAN 初始训练的独立性使得该方法可以应用于任意镶嵌几何形状,而无需耗时地重新训练 GAN。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
A data-driven approach for the partial reconstruction of individual human molar teeth using generative deep learning
Due to the high prevalence of dental caries, fixed dental restorations are regularly required to restore compromised teeth or replace missing teeth while retaining function and aesthetic appearance. The fabrication of dental restorations, however, remains challenging due to the complexity of the human masticatory system as well as the unique morphology of each individual dentition. Adaptation and reworking are frequently required during the insertion of fixed dental prostheses (FDPs), which increase cost and treatment time. This article proposes a data-driven approach for the partial reconstruction of occlusal surfaces based on a data set that comprises 92 3D mesh files of full dental crown restorations.A Generative Adversarial Network (GAN) is considered for the given task in view of its ability to represent extensive data sets in an unsupervised manner with a wide variety of applications. Having demonstrated good capabilities in terms of image quality and training stability, StyleGAN-2 has been chosen as the main network for generating the occlusal surfaces. A 2D projection method is proposed in order to generate 2D representations of the provided 3D tooth data set for integration with the StyleGAN architecture. The reconstruction capabilities of the trained network are demonstrated by means of 4 common inlay types using a Bayesian Image Reconstruction method. This involves pre-processing the data in order to extract the necessary information of the tooth preparations required for the used method as well as the modification of the initial reconstruction loss.The reconstruction process yields satisfactory visual and quantitative results for all preparations with a root mean square error (RMSE) ranging from 0.02 mm to 0.18 mm. When compared against a clinical procedure for CAD inlay fabrication, the group of dentists preferred the GAN-based restorations for 3 of the total 4 inlay geometries.This article shows the effectiveness of the StyleGAN architecture with a downstream optimization process for the reconstruction of 4 different inlay geometries. The independence of the reconstruction process and the initial training of the GAN enables the application of the method for arbitrary inlay geometries without time-consuming retraining of the GAN.
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