Wang Xiaotong, Alqahtani Khalid Ayidh, Van den Bogaert Tom, Shujaat Sohaib, Jacobs Reinhilde, Shaheen Eman
OMFS IMPATH Research Group, Department of Imaging and Pathology, Faculty of Medicine, KU Leuven, Kapucijnenvoer 33, Leuven, 3000, Belgium.
Department of Oral and Maxillofacial Surgery, The First Affiliated Hospital of Harbin Medical University, Youzheng Street 23, Nangang, Harbin, 150001, China.
BMC Oral Health. 2024 Jul 16;24(1):804. doi: 10.1186/s12903-024-04582-2.
Tooth segmentation on intraoral scanned (IOS) data is a prerequisite for clinical applications in digital workflows. Current state-of-the-art methods lack the robustness to handle variability in dental conditions. This study aims to propose and evaluate the performance of a convolutional neural network (CNN) model for automatic tooth segmentation on IOS images.
A dataset of 761 IOS images (380 upper jaws, 381 lower jaws) was acquired using an intraoral scanner. The inclusion criteria included a full set of permanent teeth, teeth with orthodontic brackets, and partially edentulous dentition. A multi-step 3D U-Net pipeline was designed for automated tooth segmentation on IOS images. The model's performance was assessed in terms of time and accuracy. Additionally, the model was deployed on an online cloud-based platform, where a separate subsample of 18 IOS images was used to test the clinical applicability of the model by comparing three modes of segmentation: automated artificial intelligence-driven (A-AI), refined (R-AI), and semi-automatic (SA) segmentation.
The average time for automated segmentation was 31.7 ± 8.1 s per jaw. The CNN model achieved an Intersection over Union (IoU) score of 91%, with the full set of teeth achieving the highest performance and the partially edentulous group scoring the lowest. In terms of clinical applicability, SA took an average of 860.4 s per case, whereas R-AI showed a 2.6-fold decrease in time (328.5 s). Furthermore, R-AI offered higher performance and reliability compared to SA, regardless of the dentition group.
The 3D U-Net pipeline was accurate, efficient, and consistent for automatic tooth segmentation on IOS images. The online cloud-based platform could serve as a viable alternative for IOS segmentation.
口腔内扫描(IOS)数据上的牙齿分割是数字工作流程中临床应用的前提条件。当前的先进方法缺乏处理牙齿状况变异性的稳健性。本研究旨在提出并评估一种用于IOS图像上自动牙齿分割的卷积神经网络(CNN)模型的性能。
使用口腔内扫描仪获取了一个包含761张IOS图像(380张上颌、381张下颌)的数据集。纳入标准包括一整套恒牙、带有正畸托槽的牙齿以及部分牙列缺失的牙列。设计了一个多步骤的3D U-Net管道用于IOS图像上的自动牙齿分割。从时间和准确性方面评估了该模型的性能。此外,该模型部署在一个基于云的在线平台上,在该平台上,通过比较三种分割模式:自动人工智能驱动(A-AI)、细化(R-AI)和半自动(SA)分割,使用18张IOS图像的单独子样本测试了该模型的临床适用性。
自动分割每颌的平均时间为31.7±8.1秒。CNN模型的交并比(IoU)得分达到91%,整套牙齿的性能最高,部分牙列缺失组得分最低。在临床适用性方面,SA每例平均耗时860.4秒,而R-AI的时间减少了2.6倍(328.5秒)。此外,无论牙列组如何,R-AI与SA相比都具有更高的性能和可靠性。
3D U-Net管道在IOS图像上进行自动牙齿分割时准确、高效且一致。基于云的在线平台可作为IOS分割的可行替代方案。