Thakur Samritika, Kumar Aman
Department of Electronics and Communication, National Institute of Technology, Hamirpur, India.
Biomed Signal Process Control. 2021 Aug;69:102920. doi: 10.1016/j.bspc.2021.102920. Epub 2021 Jun 30.
Covid-19 (Coronavirus Disease-2019) is the most recent coronavirus-related disease that has been announced as a pandemic by the World Health Organization (WHO). Furthermore, it has brought the whole planet to a halt as a result of the worldwide introduction of lockdown and killed millions of people. While this virus has a low fatality rate, the problem is that it is highly infectious, and as a result, it has infected a large number of people, putting a strain on the healthcare system, hence, Covid-19 identification in patients has become critical. The goal of this research is to use X-rays images and computed tomography (CT) images to introduce a deep learning strategy based on the Convolutional Neural Network (CNN) to automatically detect and identify the Covid-19 disease. We have implemented two different classifications using CNN, i.e., binary and multiclass classification. A total of 3,877 images dataset of CT and X-ray images has been utilised to train the model in binary classification, out of which the 1,917 images are of Covid-19 infected individuals . An overall accuracy of 99.64%, recall (or sensitivity) of 99.58%, the precision of 99.56%, F1-score of 99.59%, and ROC of 100% has been observed for the binary classification. For multiple classifications, the model has been trained using a total of 6,077 images, out of which 1,917 images are of Covid-19 infected people, 1,960 images are of normal healthy people, and 2,200 images are of pneumonia infected people. An accuracy of 98.28%, recall (or sensitivity) of 98.25%, the precision of 98.22%, F1-score of 98.23%, and ROC of 99.87% has been achieved for the multiclass classification using the proposed method. On the currently available dataset, the our proposed model produced the desired results, and it can assist healthcare workers in quickly detecting Covid-19 positive patients.
新冠病毒病(2019冠状病毒病)是世界卫生组织(WHO)宣布为大流行病的最新冠状病毒相关疾病。此外,由于全球实施封锁,它使整个地球陷入停顿,并导致数百万人死亡。虽然这种病毒的致死率较低,但问题在于它具有高度传染性,因此感染了大量人群,给医疗系统带来了压力,所以,对患者进行新冠病毒病的识别变得至关重要。本研究的目的是利用X射线图像和计算机断层扫描(CT)图像,引入一种基于卷积神经网络(CNN)的深度学习策略,以自动检测和识别新冠病毒病。我们使用CNN实现了两种不同的分类,即二分类和多分类。在二分类中,总共使用了3877张CT和X射线图像数据集来训练模型,其中1917张图像是新冠病毒感染个体的。二分类的总体准确率为99.64%,召回率(或敏感度)为99.58%,精确率为99.56%,F1分数为99.59%,ROC为100%。对于多分类,该模型总共使用了6077张图像进行训练,其中1917张图像是新冠病毒感染人群的,1960张图像是正常健康人群的,2200张图像是肺炎感染人群的。使用所提出的方法进行多分类时,准确率为98.28%,召回率(或敏感度)为98.25%,精确率为98.22%,F1分数为98.23%,ROC为99.87%。在所使用的现有数据集上,我们提出的模型产生了预期的结果,并且它可以帮助医护人员快速检测出新冠病毒阳性患者。