SARS n-CoV2-19 detection from chest x-ray images using deep neural networks

Mohammad Khalid Pandit, S. A. Banday
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引用次数: 15

Abstract

Purpose: Novel coronavirus is fast spreading pathogen worldwide and is threatening billions of lives. SARS n-CoV2 is known to affect the lungs of the COVID-19 positive patients. Chest x-rays are the most widely used imaging technique for clinical diagnosis due to fast imaging time and low cost. The purpose of this study is to use deep learning technique for automatic detection of COVID-19 using chest x-rays. Design/methodology/approach: The authors used a data set containing confirmed COVID-19 positive, common bacterial pneumonia and healthy cases (no infection). A collection of 1,428 x-ray images is used in this study. The authors used a pre-trained VGG-16 model for the classification task. Transfer learning with fine-tuning was used in this study to effectively train the network on a relatively small chest x-ray data set. Initial experiments show that the model achieves promising results and can be greatly used to expedite COVID-19 detection. Findings: The authors achieved an accuracy of 96% and 92.5% in two and three output class cases, respectively. Based on these findings, the medical community can access using x-ray images as possible diagnostic tool for faster COVID-19 detection to complement the already testing and diagnosis methods. Originality/value: The proposed method can be used as initial screening which can help health-care professionals to better treat the COVID patients by timely detecting and screening the presence of disease.
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利用深度神经网络从胸部x射线图像中检测SARS n-CoV2-19
目的:新型冠状病毒是全球范围内快速传播的病原体,威胁着数十亿人的生命。已知SARS n-CoV2会影响COVID-19阳性患者的肺部。胸部x线由于成像时间快、成本低,是临床诊断中应用最广泛的影像学技术。本研究的目的是利用深度学习技术通过胸部x射线自动检测COVID-19。设计/方法/方法:作者使用的数据集包含确诊的COVID-19阳性、常见细菌性肺炎和健康病例(无感染)。本研究使用了1428张x射线图像。作者使用预训练的VGG-16模型进行分类任务。本研究使用带有微调的迁移学习在相对较小的胸部x射线数据集上有效地训练网络。初步实验表明,该模型取得了令人满意的结果,可以大大加快COVID-19的检测速度。结果:作者在2个和3个输出类病例中分别达到了96%和92.5%的准确率。基于这些发现,医学界可以使用x射线图像作为可能的诊断工具,以更快地检测COVID-19,以补充现有的检测和诊断方法。原创性/价值:该方法可作为初始筛查,帮助医护人员通过及时发现和筛查疾病的存在,更好地治疗COVID患者。
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