{"title":"Deep Convolutional Neural Networks with Augmentation for Chest X-Ray Classification","authors":"Hannah Kariuki, Samuel Mwalili, Anthony Waititu","doi":"10.11648/j.ijdsa.20241001.12","DOIUrl":null,"url":null,"abstract":"The recent release of large amounts of Chest radiographs (CXR) has prompted the research of automated analysis of Chest X-rays to improve health care services. DCNNs are well suited for image classification because they can learn to extract features from images that are relevant to the task at hand. However, class imbalance is a common problem in chest X-ray imaging, where the number of samples for some disease category is much lower than the number of samples in other categories. This can occur as a result of rarity of some diseases being studied or the fact that only a subset of patients with a particular disease may undergo imaging. Class imbalance can make it difficult for Deep Convolutional Neural networks (DCNNs) to learn and make accurate predictions on the minority classes. Obtaining more data for minority groups is not feasible in medical research. Therefore, there is a need for a suitable method that can address class imbalance. To address class imbalance in DCNNs, this study proposes, Deep Convolutional Neural Networks with Augmentation. The results show that data augmentation can be applied to imbalanced dataset to increase the representation of the minority class by generating new images that are a slight variation of the original CXR images. This study further evaluates identifiability and consistency of the proposed model.\n","PeriodicalId":181499,"journal":{"name":"International Journal of Data Science and Analysis","volume":"56 24","pages":""},"PeriodicalIF":0.0000,"publicationDate":"2024-03-19","publicationTypes":"Journal Article","fieldsOfStudy":null,"isOpenAccess":false,"openAccessPdf":"","citationCount":"0","resultStr":null,"platform":"Semanticscholar","paperid":null,"PeriodicalName":"International Journal of Data Science and Analysis","FirstCategoryId":"1085","ListUrlMain":"https://doi.org/10.11648/j.ijdsa.20241001.12","RegionNum":0,"RegionCategory":null,"ArticlePicture":[],"TitleCN":null,"AbstractTextCN":null,"PMCID":null,"EPubDate":"","PubModel":"","JCR":"","JCRName":"","Score":null,"Total":0}
引用次数: 0
Abstract
The recent release of large amounts of Chest radiographs (CXR) has prompted the research of automated analysis of Chest X-rays to improve health care services. DCNNs are well suited for image classification because they can learn to extract features from images that are relevant to the task at hand. However, class imbalance is a common problem in chest X-ray imaging, where the number of samples for some disease category is much lower than the number of samples in other categories. This can occur as a result of rarity of some diseases being studied or the fact that only a subset of patients with a particular disease may undergo imaging. Class imbalance can make it difficult for Deep Convolutional Neural networks (DCNNs) to learn and make accurate predictions on the minority classes. Obtaining more data for minority groups is not feasible in medical research. Therefore, there is a need for a suitable method that can address class imbalance. To address class imbalance in DCNNs, this study proposes, Deep Convolutional Neural Networks with Augmentation. The results show that data augmentation can be applied to imbalanced dataset to increase the representation of the minority class by generating new images that are a slight variation of the original CXR images. This study further evaluates identifiability and consistency of the proposed model.
最近发布的大量胸部 X 光片(CXR)促使人们开始研究如何对胸部 X 光片进行自动分析,以改善医疗服务。DCNN 非常适合图像分类,因为它们能学会从图像中提取与当前任务相关的特征。然而,类别不平衡是胸部 X 光成像中的一个常见问题,即某些疾病类别的样本数量远远低于其他类别的样本数量。出现这种情况的原因可能是所研究的某些疾病非常罕见,或者只有特定疾病患者的子集才可能接受成像。类别不平衡会导致深度卷积神经网络(DCNN)难以学习和准确预测少数类别。在医学研究中,为少数群体获取更多数据是不可行的。因此,需要一种合适的方法来解决类不平衡问题。为了解决 DCNN 中的类不平衡问题,本研究提出了 "带增强的深度卷积神经网络"(Deep Convolutional Neural Networks with Augmentation)。结果表明,数据增强可应用于不平衡的数据集,通过生成与原始 CXR 图像略有不同的新图像来增加少数群体的代表性。这项研究进一步评估了所提模型的可识别性和一致性。