自动牙列分割:基于 MIScnn 框架的 3D UNet 方法。

IF 2.6 Q1 DENTISTRY, ORAL SURGERY & MEDICINE
Min Seok Kim, Elie Amm, Goli Parsi, Tarek ElShebiny, Melih Motro
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引用次数: 0

摘要

简介随着技术的进步,牙科领域开始采用数字化工作流程,这就需要从锥束计算机断层扫描(CBCT)中分割出感兴趣的区域。这些分割有助于诊断、治疗规划和研究。然而,人工分割是一个昂贵且劳动密集型的过程。因此,卷积神经网络(CNN)等自动化方法为从 CBCT 扫描生成分割图像提供了更有效的途径:方法:利用医学图像分割 CNN 框架,使用基于 UNet 的三维 CNN 模型对 CBCT 扫描进行训练并生成预测结果。准备了一个包含 351 个 CBCT 扫描数据集,这些数据集通过使用人工智能辅助分割软件进行手动分割创建了地面实况标签。对数据进行了预处理、增强和模型训练,并分析了所提出的 CNN 模型的性能:结果:CNN 模型从 CBCT 扫描中分割上颌和下颌牙齿的准确率很高,上颌和下颌牙齿的平均 Dice 相似性系数分别为 91.83% 和 91.35%。包括交集大于联合、精确度和召回率在内的性能指标进一步证实了该模型的有效性:这项研究证明了在医学图像分割 CNN 框架内基于 UNet 的三维 CNN 模型在从 CBCT 扫描中自动分割上颌和下颌牙齿方面的有效性。使用 CNN 进行自动分割有望获得准确、高效的结果,与传统分割方法相比具有显著优势。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Automated dentition segmentation: 3D UNet-based approach with MIScnn framework.

Introduction: Advancements in technology have led to the adoption of digital workflows in dentistry, which require the segmentation of regions of interest from cone-beam computed tomography (CBCT) scans. These segmentations assist in diagnosis, treatment planning, and research. However, manual segmentation is an expensive and labor-intensive process. Therefore, automated methods, such as convolutional neural networks (CNNs), provide a more efficient way to generate segmentations from CBCT scans.

Methods: A three-dimensional UNet-based CNN model, utilizing the Medical Image Segmentation CNN framework, was used for training and generating predictions from CBCT scans. A dataset of 351 CBCT scans, with ground-truth labels created through manual segmentation using AI-assisted segmentation software, was prepared. Data preprocessing, augmentation, and model training were performed, and the performance of the proposed CNN model was analyzed.

Results: The CNN model achieved high accuracy in segmenting maxillary and mandibular teeth from CBCT scans, with average Dice Similarity Coefficient values of 91.83% and 91.35% for maxillary and mandibular teeth, respectively. Performance metrics, including Intersection over Union, precision, and recall, further confirmed the model's effectiveness.

Conclusions: The study demonstrates the efficacy of the three-dimensional UNet-based CNN model within the Medical Image Segmentation CNN framework for automated segmentation of maxillary and mandibular dentition from CBCT scans. Automated segmentation using CNNs has the potential to deliver accurate and efficient results, offering a significant advantage over traditional segmentation methods.

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来源期刊
Journal of the World Federation of Orthodontists
Journal of the World Federation of Orthodontists DENTISTRY, ORAL SURGERY & MEDICINE-
CiteScore
3.80
自引率
4.80%
发文量
34
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