IEEE Trans Vis Comput Graph. 2024 Feb;30(2):1457-1469. doi: 10.1109/TVCG.2022.3218028. Epub 2024 Jan 2.
Automatic tooth alignment target prediction is vital in shortening the planning time of orthodontic treatments and aligner designs. Generally, the quality of alignment targets greatly depends on the experience and ability of dentists and has enormous subjective factors. Therefore, many knowledge-driven alignment prediction methods have been proposed to help inexperienced dentists. Unfortunately, existing methods tend to directly regress tooth motion, which lacks clinical interpretability. Tooth anatomical landmarks play a critical role in orthodontics because they are effective in aiding the assessment of whether teeth are in close arrangement and normal occlusion. Thus, we consider anatomical landmark constraints to improve tooth alignment results. In this article, we present a novel tooth alignment neural network for alignment target predictions based on tooth landmark constraints and a hierarchical graph structure. We detect the landmarks of each tooth first and then construct a hierarchical graph of jaw-tooth-landmark to characterize the relationship between teeth and landmarks. Then, we define the landmark constraints to guide the network to learn the normal occlusion and predict the rigid transformation of each tooth during alignment. Our method achieves better results with the architecture built for tooth data and landmark constraints and has better explainability than previous methods with regard to clinical tooth alignments.
自动牙齿对齐目标预测对于缩短正畸治疗和矫正器设计的规划时间至关重要。通常,对齐目标的质量在很大程度上取决于牙医的经验和能力,并且具有巨大的主观因素。因此,已经提出了许多知识驱动的对齐预测方法来帮助经验不足的牙医。不幸的是,现有的方法往往直接回归牙齿运动,这缺乏临床可解释性。牙齿解剖学标志在正畸学中起着至关重要的作用,因为它们有助于评估牙齿是否排列紧密和正常咬合。因此,我们考虑解剖标志约束来改善牙齿对齐的结果。在本文中,我们提出了一种基于牙齿标志约束和层次图结构的新的牙齿对齐神经网络,用于对齐目标预测。我们首先检测每个牙齿的标志,然后构建一个颌牙标志的层次图来描述牙齿和标志之间的关系。然后,我们定义标志约束来指导网络学习正常咬合,并预测对齐过程中每个牙齿的刚体变换。我们的方法在为牙齿数据和标志约束构建的架构上取得了更好的结果,并且在临床牙齿对齐方面比以前的方法具有更好的可解释性。