Automated segmentation of dental restorations using deep learning: exploring data augmentation techniques.

IF 1.6 3区 医学 Q3 DENTISTRY, ORAL SURGERY & MEDICINE Oral Radiology Pub Date : 2024-12-09 DOI:10.1007/s11282-024-00794-y
Berrin Çelik, Muhammed Emin Baslak, Mehmet Zahid Genç, Mahmut Emin Çelik
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引用次数: 0

Abstract

Objectives: Deep learning has revolutionized image analysis for dentistry. Automated segmentation of dental radiographs is of great importance towards digital dentistry. The performance of deep learning models heavily relies on the quality and diversity of the training data. Data augmentation is a widely used technique implemented in machine learning and deep learning to artificially increase the size and diversity of a training dataset by applying various transformations to the original data.

Methods: This work aims to automatically segment implants, prostheses, and fillings in panoramic images using 9 different deep learning segmentation models. Later, it explores the effect of data augmentation methods on segmentation performance of the models. Eight different data augmentation techniques are examined. Performance is evaluated by well-accepted metrics such as intersection over union (IoU) and Dice coefficient.

Results: While averaging the segmentation results for the three classes, IoU varies between 0.62 and 0.82 while Dice score is between 0.75 and 0.9 among deep learning models used. Augmentation techniques provided performance improvements of up to 3.37%, 5.75% and 8.75% for implant, prosthesis and filling classes, respectively.

Conclusions: Findings reveal that choosing optimal augmentation strategies depends on both model architecture and dental structure type.

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使用深度学习的牙修复体自动分割:探索数据增强技术。
目的:深度学习已经彻底改变了牙科的图像分析。牙科x线片的自动分割对数字化牙科具有重要意义。深度学习模型的性能在很大程度上依赖于训练数据的质量和多样性。数据增强是一种广泛应用于机器学习和深度学习的技术,通过对原始数据进行各种转换,人为地增加训练数据集的大小和多样性。方法:采用9种不同的深度学习分割模型,对全景图像中植入物、假体和填充物进行自动分割。然后,探讨了数据增强方法对模型分割性能的影响。研究了八种不同的数据增强技术。性能是通过一些广为接受的指标来评估的,比如交联(IoU)和Dice系数。结果:在对三个类别的分割结果进行平均时,IoU在0.62到0.82之间变化,而Dice在使用的深度学习模型中得分在0.75到0.9之间。增强技术对种植体、假体和填充物的性能分别提高了3.37%、5.75%和8.75%。结论:研究结果表明,选择最佳的隆牙策略取决于模型结构和牙体结构类型。
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来源期刊
Oral Radiology
Oral Radiology DENTISTRY, ORAL SURGERY & MEDICINE-
CiteScore
4.20
自引率
13.60%
发文量
87
审稿时长
>12 weeks
期刊介绍: As the official English-language journal of the Japanese Society for Oral and Maxillofacial Radiology and the Asian Academy of Oral and Maxillofacial Radiology, Oral Radiology is intended to be a forum for international collaboration in head and neck diagnostic imaging and all related fields. Oral Radiology features cutting-edge research papers, review articles, case reports, and technical notes from both the clinical and experimental fields. As membership in the Society is not a prerequisite, contributions are welcome from researchers and clinicians worldwide.
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