School of Biomedical Engineering, Chongqing University of Technology, Chongqing 400054, China.
School of Biomedical Engineering, Chongqing University of Technology, Chongqing 400054, China.
J Dent. 2023 Nov;138:104727. doi: 10.1016/j.jdent.2023.104727. Epub 2023 Sep 26.
This article reviews recent advances in computer-aided segmentation methods for oral and maxillofacial surgery and describes the advantages and limitations of these methods. The objective is to provide an invaluable resource for precise therapy and surgical planning in oral and maxillofacial surgery. Study selection, data and sources: This review includes full-text articles and conference proceedings reporting the application of segmentation methods in the field of oral and maxillofacial surgery. The research focuses on three aspects: tooth detection segmentation, mandibular canal segmentation and alveolar bone segmentation. The most commonly used imaging technique is CBCT, followed by conventional CT and Orthopantomography. A systematic electronic database search was performed up to July 2023 (Medline via PubMed, IEEE Xplore, ArXiv, Google Scholar were searched).
These segmentation methods can be mainly divided into two categories: traditional image processing and machine learning (including deep learning). Performance testing on a dataset of images labeled by medical professionals shows that it performs similarly to dentists' annotations, confirming its effectiveness. However, no studies have evaluated its practical application value.
Segmentation methods (particularly deep learning methods) have demonstrated unprecedented performance, while inherent challenges remain, including the scarcity and inconsistency of datasets, visible artifacts in images, unbalanced data distribution, and the "black box" nature.
Accurate image segmentation is critical for precise treatment and surgical planning in oral and maxillofacial surgery. This review aims to facilitate more accurate and effective surgical treatment planning among dental researchers.
本文综述了口腔颌面外科计算机辅助分割方法的最新进展,并描述了这些方法的优缺点。目的是为口腔颌面外科的精确治疗和手术规划提供宝贵的资源。
研究选择、数据和来源:本综述包括全文文章和会议论文,报告了分割方法在口腔颌面外科领域的应用。研究重点关注三个方面:牙齿检测分割、下颌管分割和牙槽骨分割。最常用的成像技术是 CBCT,其次是常规 CT 和 Orthopantomography。系统地进行了截至 2023 年 7 月的电子数据库搜索(通过 PubMed 搜索 Medline、IEEE Xplore、ArXiv、Google Scholar)。
这些分割方法主要可分为两类:传统图像处理和机器学习(包括深度学习)。在经过专业医生标注的图像数据集上进行性能测试表明,其性能与牙医的标注相似,证实了其有效性。然而,目前还没有研究评估其实际应用价值。
分割方法(特别是深度学习方法)表现出前所未有的性能,但仍存在内在挑战,包括数据集的稀缺性和不一致性、图像中可见的伪影、数据分布不平衡以及“黑箱”性质。
准确的图像分割对于口腔颌面外科的精确治疗和手术规划至关重要。本综述旨在促进口腔颌面外科领域的牙科研究人员更准确和有效的手术治疗规划。