卷积神经网络用于全景 X 光片上的自动牙齿编号:范围综述。

IF 1.7 Q3 DENTISTRY, ORAL SURGERY & MEDICINE Imaging Science in Dentistry Pub Date : 2023-12-01 Epub Date: 2023-09-04 DOI:10.5624/isd.20230058
Ramadhan Hardani Putra, Eha Renwi Astuti, Aga Satria Nurrachman, Dina Karimah Putri, Ahmad Badruddin Ghazali, Tjio Andrinanti Pradini, Dhinda Tiara Prabaningtyas
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引用次数: 0

摘要

目的:本综述旨在通过分类、检测和分割任务,研究各种卷积神经网络(CNN)模型在全景X光片牙齿编号中的适用性和性能:对 PubMed、Science Direct 和 Scopus 数据库进行了在线搜索。结果:有 11 项研究利用 CNN 进行了检测:结果:有 11 项研究利用 CNN 模型完成了检测任务,5 项研究利用 CNN 模型完成了分类任务,3 项研究利用 CNN 模型完成了全景照片上牙齿编号的分割任务。大多数研究显示,各种 CNN 模型在自动进行牙齿编号方面表现出色。不过,一些研究也强调了 CNN 的局限性,例如在识别蛀牙、带牙冠修复体的牙齿、邻近无牙区的牙齿、牙种植体、残根、智齿和根管治疗过的牙齿时存在假阳性和假阴性。这些限制可以通过确保数据集的质量和数量以及优化 CNN 架构来克服:CNN在全景X光片的自动牙齿编号方面表现出了很高的性能。未来为此目的开发基于 CNN 的模型时,还应考虑不同的牙列阶段,如原牙列和混合牙列阶段,以及各种牙齿状况。最终,优化的 CNN 架构可作为自动牙齿编号系统的基础,并可用于全景射线照片的进一步人工智能研究,以实现各种目的。
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Convolutional neural networks for automated tooth numbering on panoramic radiographs: A scoping review.

Purpose: The objective of this scoping review was to investigate the applicability and performance of various convolutional neural network (CNN) models in tooth numbering on panoramic radiographs, achieved through classification, detection, and segmentation tasks.

Material and methods: An online search was performed of the PubMed, Science Direct, and Scopus databases. Based on the selection process, 12 studies were included in this review.

Results: Eleven studies utilized a CNN model for detection tasks, 5 for classification tasks, and 3 for segmentation tasks in the context of tooth numbering on panoramic radiographs. Most of these studies revealed high performance of various CNN models in automating tooth numbering. However, several studies also highlighted limitations of CNNs, such as the presence of false positives and false negatives in identifying decayed teeth, teeth with crown prosthetics, teeth adjacent to edentulous areas, dental implants, root remnants, wisdom teeth, and root canal-treated teeth. These limitations can be overcome by ensuring both the quality and quantity of datasets, as well as optimizing the CNN architecture.

Conclusion: CNNs have demonstrated high performance in automated tooth numbering on panoramic radiographs. Future development of CNN-based models for this purpose should also consider different stages of dentition, such as the primary and mixed dentition stages, as well as the presence of various tooth conditions. Ultimately, an optimized CNN architecture can serve as the foundation for an automated tooth numbering system and for further artificial intelligence research on panoramic radiographs for a variety of purposes.

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来源期刊
Imaging Science in Dentistry
Imaging Science in Dentistry DENTISTRY, ORAL SURGERY & MEDICINE-
CiteScore
2.90
自引率
11.10%
发文量
42
期刊最新文献
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