Zhu Yujia, Shen Hua, Wen Aonan, Gao Zixiang, Qin Qingzhao, Shan Shenyao, Li Wenbo, Fu Xiangling, Zhao Yijiao, Wang Yong
Center for Digital Dentistry, Peking University School and Hospital of Stomatology & National Center for Stomatology & National Clinical Research Center for Oral Diseases & National Engineering Research Center of Oral Biomaterials and Digi-tal Medical Devices & Beijing Key Laboratory of Digital Stomatology & NHC Research Center of Engineering and Technology for Computerized Dentistry, Beijing 100081, China.
School of Computer Science, Beijing University of Posts and Telecommunications (National Pilot Software Engineering School); Key Laboratory of Trustworthy Distributed Computing and Service, Ministry of Education, Beijing University of Posts and Telecommunications, Beijing 100876, China.
Beijing Da Xue Xue Bao Yi Xue Ban. 2025 Feb 18;57(1):113-120. doi: 10.19723/j.issn.1671-167X.2025.01.017.
To develop an original-mirror alignment associated deep learning algorithm for intelligent registration of three-dimensional maxillofacial point cloud data, by utilizing a dynamic graph-based registration network model (maxillofacial dynamic graph registration network, MDGR-Net), and to provide a valuable reference for digital design and analysis in clinical dental applications.
Four hundred clinical patients without significant deformities were recruited from Peking University School of Stomatology from October 2018 to October 2022. Through data augmentation, a total of 2 000 three-dimensional maxillofacial datasets were generated for training and testing the MDGR-Net algorithm. These were divided into a training set (1 400 cases), a validation set (200 cases), and an internal test set (200 cases). The MDGR-Net model constructed feature vectors for key points in both original and mirror point clouds (X, Y), established correspondences between key points in the X and Y point clouds based on these feature vectors, and calculated rotation and translation matrices using singular value decomposition (SVD). Utilizing the MDGR-Net model, intelligent registration of the original and mirror point clouds were achieved, resulting in a combined point cloud. The principal component analysis (PCA) algorithm was applied to this combined point cloud to obtain the symmetry reference plane associated with the MDGR-Net methodology. Model evaluation for the translation and rotation matrices on the test set was performed using the coefficient of determination (). Angle error evaluations for the three-dimensional maxillofacial symmetry reference planes were constructed using the MDGR-Net-associated method and the "ground truth" iterative closest point (ICP)-associated method were conducted on 200 cases in the internal test set and 40 cases in an external test set.
Based on testing with the three-dimensional maxillofacial data from the 200-case internal test set, the MDGR-Net model achieved an value of 0.91 for the rotation matrix and 0.98 for the translation matrix. The average angle error on the internal and external test sets were 0.84°±0.55° and 0.58°±0.43°, respectively. The construction of the three-dimensional maxillofacial symmetry reference plane for 40 clinical cases took only 3 seconds, with the model performing optimally in the patients with skeletal Class Ⅲ malocclusion, high angle cases, and Angle Class Ⅲ orthodontic patients.
This study proposed the MDGR-Net association method based on intelligent point cloud registration as a novel solution for constructing three-dimensional maxillofacial symmetry reference planes in clinical dental applications, which can significantly enhance diagnostic and therapeutic efficiency and outcomes, while reduce expert dependence.
利用基于动态图的配准网络模型(颌面动态图配准网络,MDGR-Net),开发一种用于三维颌面点云数据智能配准的原始-镜像对齐相关深度学习算法,为临床牙科应用中的数字设计和分析提供有价值的参考。
2018年10月至2022年10月从北京大学口腔医学院招募400例无明显畸形的临床患者。通过数据增强,共生成2000个三维颌面数据集用于训练和测试MDGR-Net算法。这些数据集被分为训练集(1400例)、验证集(200例)和内部测试集(200例)。MDGR-Net模型为原始点云和镜像点云(X、Y)中的关键点构建特征向量,基于这些特征向量建立X和Y点云中关键点之间的对应关系,并使用奇异值分解(SVD)计算旋转和平移矩阵。利用MDGR-Net模型实现原始点云和镜像点云的智能配准,得到组合点云。将主成分分析(PCA)算法应用于该组合点云,以获得与MDGR-Net方法相关的对称参考平面。使用决定系数()对测试集上的旋转和平移矩阵进行模型评估。在内部测试集的200例和外部测试集的40例中,使用与MDGR-Net相关的方法和“真实”迭代最近点(ICP)相关的方法对三维颌面对称参考平面进行角度误差评估。
基于对200例内部测试集的三维颌面数据测试,MDGR-Net模型旋转矩阵的 值为0.91,平移矩阵的 值为0.98。内部和外部测试集的平均角度误差分别为0.84°±0.55°和0.58°±0.43°。40例临床病例的三维颌面对称参考平面构建仅需3秒,该模型在骨骼Ⅲ类错 、高角病例和安氏Ⅲ类正畸患者中表现最佳。
本研究提出基于智能点云配准的MDGR-Net关联方法,作为临床牙科应用中构建三维颌面对称参考平面的一种新解决方案,可显著提高诊断和治疗效率及效果,同时减少对专家的依赖。