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Deep Learning Approaches for Detecting Pneumonia in COVID-19 Patients by Analyzing Chest X-Ray Images

机译:通过分析胸部X射线图像来检测Covid-19患者肺炎的深度学习方法

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The COVID-19 pandemic has wreaked havoc in the daily life of human beings and devastated many economies worldwide, claiming millions of lives so far. Studies on COVID-19 have shown that older adults and people with a history of various medical issues, specifically prior cases of pneumonia, are at a higher risk of developing severe complications from COVID-19. As pneumonia is a common type of infection that spreads in the lungs, doctors usually perform chest X-ray to identify the infected regions of the lungs. In this study, machine learning tools such as LabelBinarizer are used to perform one-hot encoding on the labeled chest X-ray images and transform them into categorical form using Python’s to_categorical tool. Subsequently, various deep learning features such as convolutional neural network (CNN), VGG16, AveragePooling2D, dropout, flatten, dense, and input are used to build a detection model. Adam is used as an optimizer, which can be further applied to predict pneumonia in COVID-19 patients. The model predicted pneumonia with an average accuracy of 91.69%, sensitivity of 95.92%, and specificity of 100%. The model also efficiently reduces training loss and increases accuracy.
机译:Covid-19 Pandemic在人类日常生活中造成严重破坏,并摧毁了全球许多经济体,迄今为止,索赔了数百万的生命。关于Covid-19的研究表明,老年人和具有各种医学问题的历史的人,特别是肺炎的前病例,患Covid-19产生严重并发症的风险较高。随着肺炎是肺部蔓延的常见感染类型,医生通常会表现胸部X射线以识别肺部受感染的区域。在这项研究中,诸如LabelBinarizer等机器学习工具用于在标记的胸部X射线图像上执行一次热编码,并使用Python的To_Categorical工具将它们变为分类形式。随后,使用诸如卷积神经网络(CNN),VGG16,ConseralPooling2D,辍学,扁平,密集和输入的各种深度学习特征来构建检测模型。 ADAM用作优化器,可以进一步应用于预测Covid-19患者的肺炎。该模型预测肺炎,平均精度为91.69%,敏感性为95.92%,特异性为100%。该模型还有效降低训练损失并提高准确性。

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