Deep learning model for binary classification of COVID-19 based on Chest X-Ray

R. Saeed, Bushra K. Oleiwi
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Abstract

COVID-19 is a novel virus infecting the upper respiratory tract and lungs. On a scale of the global pandemic, the number of cases and deaths had been increasing each day. Chest X-ray (CXR) images proved effective in monitoring a variety of lung illnesses, including the COVID-19 disease. In recent years, deep learning (DL) has become one of the most significant topics in the computing world and has been extensively applied in several medical applications. In terms of automatic diagnosis of COVID-19, those approaches had proven to be very effective. In this research, a DL technology based on convolution neural networks (CNN) models had been implemented with less number of layers with tuning parameters that will take less time for training for binary classification of COVID-19 based on CXR images. Experimental results had shown that the proposed model for training had achieved an accuracy of 96.68%, Recall of 94.12%, Precision of 93.49%, Specificity of 97.61%, and F1 Score of 93.8%. Those results had shown the high value of utilizing DL for early COVID-19 diagnosis, which can be utilized as a useful tool for COVID-19 screening.
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基于胸片的COVID-19二分类深度学习模型
COVID-19是一种感染上呼吸道和肺部的新型病毒。在全球大流行的规模上,病例和死亡人数每天都在增加。事实证明,胸部x射线(CXR)图像可有效监测多种肺部疾病,包括COVID-19疾病。近年来,深度学习(DL)已成为计算机世界中最重要的主题之一,并已广泛应用于多种医学应用。在COVID-19自动诊断方面,这些方法已被证明是非常有效的。在本研究中,基于卷积神经网络(CNN)模型的深度学习技术实现了更少的层数和可调参数,将花费更少的时间来训练基于CXR图像的COVID-19二分类。实验结果表明,该训练模型的准确率为96.68%,查全率为94.12%,查准率为93.49%,特异性为97.61%,F1分数为93.8%。这些结果表明DL在COVID-19早期诊断中的价值很高,可以作为COVID-19筛查的有用工具。
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