Barshooi Amir Hossein, Amirkhani Abdollah
School of Automotive Engineering, Iran University of Science and Technology, Tehran 16846-13114, Iran.
Biomed Signal Process Control. 2022 Feb;72:103326. doi: 10.1016/j.bspc.2021.103326. Epub 2021 Nov 9.
A dangerous infectious disease of the current century, the COVID-19 has apparently originated in a city in China and turned into a widespread pandemic within a short time. In this paper, a novel method has been presented for improving the screening and classification of COVID-19 patients based on their chest X-Ray (CXR) images. This method eliminates the severe dependence of the deep learning models on large datasets and the deep features extracted from them. In this approach, we have not only resolved the data limitation problem by combining the traditional data augmentation techniques with the generative adversarial networks (GANs), but also have enabled a deeper extraction of features by applying different filter banks such as the Sobel, Laplacian of Gaussian (LoG) and the Gabor filters. To verify the satisfactory performance of the proposed approach, it was applied on several deep transfer models and the results in each step were compared with each other. For training the entire models, we used 4560 CXR images of various patients with the viral, bacterial, fungal, and other diseases; 360 of these images are in the COVID-19 category and the rest belong to the non-COVID-19 diseases. According to the results, the Gabor filter bank achieves the highest growth in the values of the defined evaluation criteria and in just 45 epochs, it is able to elevate the accuracy by up to 32%. We then applied the proposed model on the DenseNet-201 model and compared its performance in terms of the detection accuracy with the performances of 10 existing COVID-19 detection techniques. Our approach was able to achieve an accuracy of 98.5% in the two-class classification procedure; which makes it a state-of-the-art method for detecting the COVID-19.
21世纪的一种危险传染病,新冠病毒病显然起源于中国的一个城市,并在短时间内演变成一场广泛的大流行。本文提出了一种基于胸部X光(CXR)图像改进新冠病毒病患者筛查和分类的新方法。该方法消除了深度学习模型对大型数据集及其提取的深度特征的严重依赖。在这种方法中,我们不仅通过将传统数据增强技术与生成对抗网络(GAN)相结合解决了数据限制问题,还通过应用不同的滤波器组(如索贝尔滤波器、高斯拉普拉斯滤波器(LoG)和伽柏滤波器)实现了更深入的特征提取。为了验证所提方法的良好性能,将其应用于多个深度迁移模型,并对每一步的结果进行相互比较。为了训练整个模型,我们使用了4560张患有病毒、细菌、真菌和其他疾病的不同患者的CXR图像;其中360张图像属于新冠病毒病类别,其余属于非新冠病毒病疾病。根据结果,伽柏滤波器组在定义的评估标准值方面实现了最高增长,并且在仅45个轮次中,就能将准确率提高多达32%。然后,我们将所提模型应用于DenseNet - 201模型,并将其在检测准确率方面的性能与10种现有的新冠病毒病检测技术的性能进行比较。我们的方法在二分类过程中能够达到98.5%的准确率;这使其成为检测新冠病毒病的一种先进方法。