Since this COVID-19 pandemic thrives, the utilization of X-Ray images of the Chest (CXR) as a complementary screening technique to RT-PCR testing grows to its clinical use for respiratory complaints. Many new deep learning approaches have developed as a consequence. The goal of this research is to assess the convolutional neural networks (CNNs) to diagnosis COVID-19 utisizing X-ray images of chest. The performance of CNN with one, three, and four convolution layers has been evaluated in this research. A dataset of 13,808 CXR photographs are used in this research. When evaluated on X-ray images with three splits of the dataset, our preliminary experimental results show that the CNN model with three convolution layers can reliably detect with 96 percent accuracy (precision being 96 percent). This fact indicates the commitment of our suggested model for reliable screening of COVID-19.
翻译:自这种COVID-19大流行以来,将Chest(CXR)X射线图像用作RT-PCR测试的一种补充筛选技术,已发展成为用于呼吸道投诉的临床应用。许多新的深层次学习方法因此得到发展。这项研究的目的是评估革命神经网络(CNNs),以诊断COVID-19对胸腔X射线图像的使用。在这项研究中,对CNN的一、三和四个卷层的性能进行了评估。在这项研究中使用了13,808 CXR照片的数据集。在用三组数据集对X射线图像进行评估时,我们的初步实验结果显示,具有三层卷态的CNN模型可以可靠地检测96%的精确度(精确度为96% ) 。这一事实表明,我们建议的COVID-19可靠筛选模型的承诺。