Faculty of Dentistry, The University of Hong Kong, Hong Kong Special Administrative Region, Hong Kong, People's Republic of China.
Department of Computer Science, Chu Hai College of Higher Education, Hong Kong Special Administrative Region, Hong Kong, People's Republic of China.
PLoS One. 2022 Jun 2;17(6):e0268535. doi: 10.1371/journal.pone.0268535. eCollection 2022.
Dental prostheses, which aim to replace missing teeth and to restore patients' appearance and oral functions, should be biomimetic and thus adopt the occlusal morphology and three-dimensional (3D) position of healthy natural teeth. Since the teeth of an individual subject are controlled by the same set of genes (genotype) and are exposed to mostly identical oral environment (phenotype), the occlusal morphology and 3D position of teeth of an individual patient are inter-related. It is hypothesized that artificial intelligence (AI) can automate the design of single-tooth dental prostheses after learning the features of the remaining dentition.
This article describes the protocol of a prospective experimental study, which aims to train and to validate the AI system for design of single molar dental prostheses. Maxillary and mandibular dentate teeth models will be collected and digitized from at least 250 volunteers. The (original) digitized maxillary teeth models will be duplicated and processed by removal of right maxillary first molars (FDI tooth 16). Teeth models will be randomly divided into training and validation sets. At least 200 training sets of the original and the processed digitalized teeth models will be input into 3D Generative Adversarial Network (GAN) for training. Among the validation sets, tooth 16 will be generated by AI on 50 processed models and the morphology and 3D position of AI-generated tooth will be compared to that of the natural tooth in the original maxillary teeth model. The use of different GAN algorithms and the need of antagonist mandibular teeth model will be investigated. Results will be reported following the CONSORT-AI.
旨在替代缺失牙齿并恢复患者外观和口腔功能的牙科修复体应具有仿生特性,因此采用健康天然牙齿的咬合形态和三维(3D)位置。由于个体受试者的牙齿受同一组基因(基因型)控制,并暴露于大致相同的口腔环境(表型),因此个体患者的牙齿咬合形态和 3D 位置相互关联。假设人工智能(AI)可以在学习剩余牙齿特征后自动设计单颗牙牙科修复体。
本文介绍了一项前瞻性实验研究的方案,旨在训练和验证用于设计单颗磨牙牙科修复体的 AI 系统。将从至少 250 名志愿者中收集和数字化上颌和下颌有牙牙齿模型。(原始)数字化上颌牙齿模型将被复制并通过去除右侧上颌第一磨牙(FDI 牙 16)进行处理。牙齿模型将随机分为训练集和验证集。至少 200 组原始和处理后的数字化牙齿模型的训练集将被输入 3D 生成对抗网络(GAN)进行训练。在验证集中,AI 将在 50 个处理后的模型上生成牙 16,并且 AI 生成的牙的形态和 3D 位置将与原始上颌牙齿模型中的天然牙进行比较。将研究不同的 GAN 算法和是否需要对颌下颌牙齿模型的使用。结果将按照 CONSORT-AI 报告。