A hybrid deep transfer learning based approach for COVID-19 classification in chest X-ray images

K. Rezaee, Afsoon Badiei, S. Meshgini
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引用次数: 20

Abstract

As a contagious disease originating from a novel coronavirus, COVID-19 leads to swollen air sacs in the lungs. It can be diagnosed using a chest X-ray (CXR) images, which is usually cheaper and less harmful than a CT scan and is always available in small or rural hospitals. X-ray machines, however, sometimes cannot diagnose COVID-19. Since the COVID-19 dataset is small and cannot be diagnosed from CXR, pre-trained neural networks can be employed for coronavirus diagnosis. This paper mainly aims to use pre-trained deep transfer learning (DTL) architectures and conventional machine learning (ML) models as an automated instrument to diagnose COVID-19 from CXRs. To overcome the lack of a large number of images, DTL is utilized to extract image features for better classification. Then, to optimize the decision-making level for infectious diseases similar to bacterial and viral pneumonia, the extracted features are selected and classified. Our proposed method was validated by creating a new CXR database from Vasei Hospital in Sabzevar, Iran. Our hybrid model achieved hit rates above 99% and outperformed for CXR of COVID-19 and similar pneumonia classification. Comparative analysis shows the superiority of the proposed COVID-19 classification model based on DTL over other competitive methods.
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基于混合深度迁移学习的胸部x线图像COVID-19分类方法
COVID-19是一种源于新型冠状病毒的传染病,会导致肺部气囊肿胀。它可以通过胸部x射线(CXR)图像进行诊断,这种图像通常比CT扫描更便宜,危害更小,在小型或农村医院都可以使用。然而,x光机有时无法诊断COVID-19。由于COVID-19数据集较小,无法从CXR中诊断,因此可以使用预训练的神经网络进行冠状病毒诊断。本文的主要目的是使用预训练的深度迁移学习(DTL)架构和传统的机器学习(ML)模型作为自动化工具,从cxr中诊断COVID-19。为了克服图像数量不足的问题,利用DTL提取图像特征,进行更好的分类。然后,对提取的特征进行选择和分类,以优化对类似细菌性肺炎和病毒性肺炎的传染病的决策水平。通过创建来自伊朗Sabzevar Vasei医院的新的CXR数据库,验证了我们提出的方法。我们的混合模型实现了99%以上的命中率,并且在COVID-19和类似肺炎分类的CXR中表现出色。对比分析表明,本文提出的基于DTL的COVID-19分类模型优于其他竞争方法。
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