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基于锥形束 CT 图像的上颌埋伏尖牙的深度学习分割。

Deep learning driven segmentation of maxillary impacted canine on cone beam computed tomography images.

机构信息

OMFS IMPATH Research Group, Department of Imaging and Pathology, Faculty of Medicine, KU Leuven, & Department of Oral and Maxillofacial Surgery, University Hospitals Leuven, Leuven, Belgium.

Prosthodontic Department, King Hussein Medical Center, Jordanian Royal Medical Services, Amman, Jordan.

出版信息

Sci Rep. 2024 Jan 3;14(1):369. doi: 10.1038/s41598-023-49613-0.

Abstract

The process of creating virtual models of dentomaxillofacial structures through three-dimensional segmentation is a crucial component of most digital dental workflows. This process is typically performed using manual or semi-automated approaches, which can be time-consuming and subject to observer bias. The aim of this study was to train and assess the performance of a convolutional neural network (CNN)-based online cloud platform for automated segmentation of maxillary impacted canine on CBCT image. A total of 100 CBCT images with maxillary canine impactions were randomly allocated into two groups: a training set (n = 50) and a testing set (n = 50). The training set was used to train the CNN model and the testing set was employed to evaluate the model performance. Both tasks were performed on an online cloud-based platform, 'Virtual patient creator' (Relu, Leuven, Belgium). The performance was assessed using voxel- and surface-based comparison between automated and semi-automated ground truth segmentations. In addition, the time required for segmentation was also calculated. The automated tool showed high performance for segmenting impacted canines with a dice similarity coefficient of 0.99 ± 0.02. Moreover, it was 24 times faster than semi-automated approach. The proposed CNN model achieved fast, consistent, and precise segmentation of maxillary impacted canines.

摘要

通过三维分割创建牙颌面结构的虚拟模型是大多数数字牙科工作流程的关键组成部分。这个过程通常采用手动或半自动方法,既耗时又容易受到观察者偏见的影响。本研究旨在训练和评估基于卷积神经网络(CNN)的在线云平台用于对 CBCT 图像中上颌埋伏牙进行自动分割的性能。总共随机分配了 100 个带有上颌埋伏牙的 CBCT 图像到两个组:一个训练集(n=50)和一个测试集(n=50)。训练集用于训练 CNN 模型,测试集用于评估模型性能。这两个任务都在在线云平台“Virtual patient creator”(Relu,鲁汶,比利时)上完成。通过与半自动分割的体素和表面比较评估性能。此外,还计算了分割所需的时间。自动化工具在分割埋伏牙方面表现出很高的性能,其骰子相似系数为 0.99±0.02。此外,它比半自动方法快 24 倍。所提出的 CNN 模型实现了上颌埋伏牙的快速、一致和精确分割。

https://cdn.ncbi.nlm.nih.gov/pmc/blobs/656f/10764895/9e50dd3706f5/41598_2023_49613_Fig1_HTML.jpg

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