Croup Disease Classification Using VGG19 and Resnet 50 Transfer Learning Method

IF 0.9 Q3 COMPUTER SCIENCE, THEORY & METHODS
E. Vetrimani, M. Aruselvi
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引用次数: 0

Abstract

Detection of any disease in the early stage can save a life. There are many medical imaging modalities like MRI, FMRI, ultrasound, CT, and X-ray used in the detection of disease. In the last decades, neural network-based methods are effective in detecting and classifying the disease based on abnormalities present in the medical images. Acute laryngotracheobronchitis (croup) is one of the common diseases seen in children among the 0.5-3 years age group which infects the respiratory system that can cause the larynx, trachea, and bronchi. Prior detection can lower the risk of spreading and can be treated accurately by a pediatrician. Commonly this infection can be diagnosed though physical examination. But due to the similarity of Covid-19 symptoms urges the physicians to get accurate detection of this disease using X-ray and CT images of the infant's chest and throat. The proposed work aims to develop a croup diagnose system (CDS) which identify the Croup infection through post anterior (PA) view of pediatric X-ray using deep learning algorithm. We used the well-known transfer learning algorithm VGG19 and ResNet50. Data augmentation being adapted for reducing the overfitting and to improve the quantity of image samples. We show that the proposed transfer learning based CDS method can be used to classify the X-ray images into two classes namely, croup and normal. The experiment results confirm that VGG19 performs better than ResNet50 with promising classification accuracy (90.91%.). The results show that the proposed CDS models can be used for more pediatric medical image classification problem. © 2024 World Scientific Publishing Company.
基于VGG19和Resnet 50迁移学习方法的群体疾病分类
在早期阶段发现任何疾病都可以挽救生命。有许多医学成像方式,如MRI, FMRI,超声,CT和x射线用于疾病的检测。在过去的几十年里,基于神经网络的方法在基于医学图像中存在的异常来检测和分类疾病方面是有效的。急性喉气管支气管炎(群)是0.5-3岁儿童的常见病之一,主要感染呼吸系统,可引起喉、气管和支气管病变。事先检测可以降低传播的风险,并且可以由儿科医生进行准确的治疗。通常这种感染可以通过体格检查来诊断。但由于Covid-19症状的相似性,敦促医生使用婴儿胸部和喉咙的x射线和CT图像来准确检测这种疾病。提出的工作旨在开发一个群体诊断系统(CDS),该系统使用深度学习算法通过儿科x射线的前路(PA)视图识别群体感染。我们使用了著名的迁移学习算法VGG19和ResNet50。数据增强适应于减少过拟合和提高图像样本的数量。我们证明了基于迁移学习的CDS方法可以将x射线图像分为群和正态两类。实验结果表明,VGG19的分类准确率达到90.91%,优于ResNet50。结果表明,所提出的CDS模型可用于更多的儿科医学图像分类问题。©2024世界科学出版公司。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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来源期刊
CiteScore
2.50
自引率
16.70%
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0
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