Gopatoti Anandbabu, Vijayalakshmi P
Department of Electronics and Communication Engineering, Hindusthan College of Engineering and Technology, Coimbatore, Tamil Nadu, India.
Anna University, Chennai, Tamil Nadu, India.
Biomed Signal Process Control. 2022 Aug;77:103860. doi: 10.1016/j.bspc.2022.103860. Epub 2022 Jun 6.
The coronavirus disease 2019 (COVID-19) epidemic had a significant impact on daily life in many nations and global public health. COVID's quick spread has become one of the biggest disruptive calamities in the world. In the fight against COVID-19, it's critical to keep a close eye on the initial stage of infection in patients. Furthermore, early COVID-19 discovery by precise diagnosis, especially in patients with no evident symptoms, may reduce the patient's death rate and can stop the spread of COVID-19. When compared to CT images, chest X-ray (CXR) images are now widely employed for COVID-19 diagnosis since CXR images contain more robust features of the lung. Furthermore, radiologists can easily diagnose CXR images because of its operating speed and low cost, and it is promising for emergency situations and therapy. This work proposes a tri-stage CXR image based COVID-19 classification model using deep learning convolutional neural networks (DLCNN) with an optimal feature selection technique named as enhanced grey-wolf optimizer with genetic algorithm (EGWO-GA), which is denoted as CXGNet. The proposed CXGNet is implemented as multiple classes, such as 4-class, 3-class, and 2-class models based on the diseases. Extensive simulation outcome discloses the superiority of the proposed CXGNet model with enhanced classification accuracy of 94.00% for the 4-class model, 97.05% of accuracy for the 3-class model, and 100% accuracy for the 2-class model as compared to conventional methods.
2019年冠状病毒病(COVID-19)疫情对许多国家的日常生活和全球公共卫生产生了重大影响。COVID的快速传播已成为世界上最大的破坏性灾难之一。在抗击COVID-19的斗争中,密切关注患者感染的初始阶段至关重要。此外,通过精确诊断早期发现COVID-19,尤其是在没有明显症状的患者中,可以降低患者的死亡率,并能阻止COVID-19的传播。与CT图像相比,胸部X线(CXR)图像目前被广泛用于COVID-19诊断,因为CXR图像包含更强大的肺部特征。此外,放射科医生可以很容易地诊断CXR图像,因为其操作速度快且成本低,并且在紧急情况和治疗中很有前景。这项工作提出了一种基于CXR图像的三阶段COVID-19分类模型,该模型使用深度学习卷积神经网络(DLCNN)以及一种名为增强灰狼优化算法与遗传算法(EGWO-GA)的最优特征选择技术,该模型被称为CXGNet。所提出的CXGNet被实现为基于疾病的多类模型,如4类、3类和2类模型。广泛的仿真结果表明,与传统方法相比,所提出的CXGNet模型具有优越性,4类模型的分类准确率提高到94.00%,3类模型的准确率为97.05%,2类模型的准确率为100%。