COVID-19 Diagnosis in Chest X-ray Images by Combining Pre-trained CNN Models with Flat and Hierarchical Classification Approaches

M. Daoud, Yara Alrahahleh, Samir Abdel-Rahman, B. Alsaify, R. Alazrai
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引用次数: 2

Abstract

Novel coronavirus disease 2019 (COVID-19) is highly contagious and can lead to serious medical complications. Early detection of COVID-19 is important to control the spread of the disease and reduce the associated mortality rates. The reverse transcription polymerase chain reaction (RT-PCR) is commonly used for COVID-19 diagnosis. However, the RT-PCR is time consuming, requires special materials, and might have limited detection sensitivity in mild cases. One of the promising complementary modalities to improve the detection and tracking of COVID-19 is X-ray imaging of the chest, but the task of interpreting chest X-ray images is challenging. Convolutional neural networks (CNNs) provide an effective computational tool for classifying chest X-ray images with the goal of achieving accurate COVID-19 diagnosis. This study investigates the application of two pre-trained CNN models, namely AlexNet and ResNet-50, using transfer learning to classify chest X-ray images as normal, pneumonia (non-COVID-19 pneumonia), and COVID-19. The transfer learning process was applied based on two classification approaches, which are the flat classification approach and the hierarchical classification approach. The performance of the proposed CNN-based classification schemes has been evaluated using a dataset that includes 8,703 chest X-ray images. The results indicate that the pre-trained CNN models combined with the hierarchical classification approach achieved effective classification of chest X-ray images. In particular, the pre-trained AlexNet model that is combined with the hierarchical classification approach obtained macro-averaged classification specificity, sensitivity, and F1 score of 98.3%, 89.1%, and 91.4%, respectively. Furthermore, the pre-trained ResNet-50 model that is combined with the hierarchical classification approach achieved macro-averaged specificity, sensitivity, and F1 score of 97.4%, 95.2%, and 94.9%, respectively.
结合预训练CNN模型与平面和分层分类方法在胸部x线图像中的COVID-19诊断
新型冠状病毒病2019 (COVID-19)具有高度传染性,可导致严重的医疗并发症。及早发现COVID-19对于控制疾病传播和降低相关死亡率至关重要。逆转录聚合酶链反应(RT-PCR)是诊断COVID-19的常用方法。然而,RT-PCR耗时长,需要特殊的材料,并且在轻度病例中可能检测灵敏度有限。改善COVID-19检测和跟踪的一种有希望的补充方式是胸部x射线成像,但解释胸部x射线图像的任务具有挑战性。卷积神经网络(cnn)为胸部x线图像分类提供了一种有效的计算工具,目的是实现COVID-19的准确诊断。本研究探讨了AlexNet和ResNet-50两个预训练CNN模型的应用,利用迁移学习将胸部x线图像分类为正常、肺炎(非COVID-19肺炎)和COVID-19。迁移学习过程基于两种分类方法,即平面分类方法和分层分类方法。使用包含8,703张胸部x射线图像的数据集对提出的基于cnn的分类方案的性能进行了评估。结果表明,预训练的CNN模型与分层分类方法相结合,实现了胸部x线图像的有效分类。其中,结合分层分类方法的预训练AlexNet模型的宏观平均分类特异性、灵敏度和F1评分分别为98.3%、89.1%和91.4%。此外,预训练的ResNet-50模型与分层分类方法相结合,宏观平均特异性、敏感性和F1评分分别为97.4%、95.2%和94.9%。
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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