基于迁移学习方法的肺部ct扫描图像COVID-19检测

A. Halder, B. Datta
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引用次数: 27

摘要

自2020年初以来,冠状病毒病(COVID-19)在全球的传播速度迅速加快,已进入严重大流行状态。截至撰写本文时,COVID-19已感染2900多万人,造成90多万人死亡。由于它具有高度传染性,它会引起爆炸性的社区传播。因此,由于缺乏检测包,卫生保健服务受到干扰和损害。covid -19感染患者表现为严重急性呼吸综合征。与此同时,科学界一直在利用计算机断层扫描(CT)肺部扫描来诊断COVID-19的深度学习(DL)技术的实施,因为CT在识别早期肺炎变化方面具有更高的灵敏度,是一种相关的筛查工具。然而,由于隐私问题,ct扫描图像的大型数据集无法公开获取,并且很难获得非常准确的模型。因此,为了克服这一缺点,在本文提出的方法中使用迁移学习预训练模型对COVID-19(阳性)和COVID-19(阴性)患者进行分类。我们描述了一个DL框架的开发,该框架包括预训练模型(DenseNet201, VGG16, ResNet50V2和MobileNet)作为其主干,称为KarNet。为了广泛测试和分析框架,每个模型都在原始(即未增强)和操纵(即增强)数据集上进行训练。在KarNet的四个预训练模型中,使用DenseNet201的模型表现出出色的诊断能力,在未增强和增强数据集上训练的模型的AUC得分分别为1.00和0.99。即使在对图像(即增强数据集)进行了相当大的失真之后,DenseNet201对测试数据集的准确率也达到了97%,其次是ResNet50V2, MobileNet和VGG16(分别达到了96%,95%和94%的准确率)。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
COVID-19 detection from lung CT-scan images using transfer learning approach
Since the onset of 2020, the spread of coronavirus disease (COVID-19) has rapidly accelerated worldwide into a state of severe pandemic. COVID-19 has infected more than 29 million people and caused more than 900 thousand deaths at the time of writing. Since it is highly contagious, it causes explosive community transmission. Thus, health care delivery has been disrupted and compromised by the lack of testing kits. COVID-19-infected patients show severe acute respiratory syndrome. Meanwhile, the scientific community has been involved in the implementation of deep learning (DL) techniques to diagnose COVID-19 using computed tomography (CT) lung scans, since CT is a pertinent screening tool due to its higher sensitivity in recognizing early pneumonic changes. However, large datasets of CT-scan images are not publicly available due to privacy concerns and obtaining very accurate models has become difficult. Thus, to overcome this drawback, transfer-learning pre-trained models are used in the proposed methodology to classify COVID-19 (positive) and COVID-19 (negative) patients. We describe the development of a DL framework that includes pre-trained models (DenseNet201, VGG16, ResNet50V2, and MobileNet) as its backbone, known as KarNet. To extensively test and analyze the framework, each model was trained on original (i.e. unaugmented) and manipulated (i.e. augmented) datasets. Among the four pre-trained models of KarNet, the one that used DenseNet201 demonstrated excellent diagnostic ability, with AUC scores of 1.00 and 0.99 for models trained on unaugmented and augmented data sets, respectively. Even after considerable distortion of the images (i.e. the augmented dataset) DenseNet201 achieved an accuracy of 97% for the test dataset, followed by ResNet50V2, MobileNet, and VGG16 (which achieved accuracies of 96%, 95%, and 94%, respectively).
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