论文标题

PAXNET:使用合奏转移学习和胶囊分类器在全景X射线中进行牙齿龋齿检测

PaXNet: Dental Caries Detection in Panoramic X-ray using Ensemble Transfer Learning and Capsule Classifier

论文作者

Haghanifar, Arman, Majdabadi, Mahdiyar Molahasani, Ko, Seok-Bum

论文摘要

龋齿是涉及大多数人群的最慢性疾病之一。龋齿病变通常由放射科医生诊断,仅依靠其视觉检查来通过牙科X射线检测。在许多情况下,龋齿很难使用X射线识别,并且由于诸如低图像质量之类的原因,可能会被误解为阴影。因此,近年来,开发用于龋齿检测的决策支持系统一直是一个有趣的话题。在这里,我们提出了一个自动诊断系统,以便首次在全景图像中检测龋齿,据作者所知。所提出的模型通过转移学习从各种预处理的深度学习模型中受益,从而从X射线中提取相关特征,并使用胶囊网络来提出预测结果。在用于特征提取的470个全景图像的数据集中,包括240个标记的用于分类的图像,我们的模型在测试集中的精度得分为86.05 \%。所获得的分数表明,只要考虑考虑使用真实患者的全景X射线的挑战,可接受的检测性能和龋齿检测速度的提高。在测试集中有龋齿病变的图像中,我们的模型获得的召回评分为69.44 \%和90.52 \%,对轻度和重度患者获得了召回评分,这证实了一个事实,即严重的龋齿更为直接地检测有效的轻度龋齿检测需要一个更稳定的数据集,并且更大的数据集。考虑到当前研究的新颖性使用全景图像,这项工作是开发完全自动化的有效决策支持系统以协助领域专家的一步。

Dental caries is one of the most chronic diseases involving the majority of the population during their lifetime. Caries lesions are typically diagnosed by radiologists relying only on their visual inspection to detect via dental x-rays. In many cases, dental caries is hard to identify using x-rays and can be misinterpreted as shadows due to different reasons such as low image quality. Hence, developing a decision support system for caries detection has been a topic of interest in recent years. Here, we propose an automatic diagnosis system to detect dental caries in Panoramic images for the first time, to the best of authors' knowledge. The proposed model benefits from various pretrained deep learning models through transfer learning to extract relevant features from x-rays and uses a capsule network to draw prediction results. On a dataset of 470 Panoramic images used for features extraction, including 240 labeled images for classification, our model achieved an accuracy score of 86.05\% on the test set. The obtained score demonstrates acceptable detection performance and an increase in caries detection speed, as long as the challenges of using Panoramic x-rays of real patients are taken into account. Among images with caries lesions in the test set, our model acquired recall scores of 69.44\% and 90.52\% for mild and severe ones, confirming the fact that severe caries spots are more straightforward to detect and efficient mild caries detection needs a more robust and larger dataset. Considering the novelty of current research study as using Panoramic images, this work is a step towards developing a fully automated efficient decision support system to assist domain experts.

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