Shankar K, Mohanty Sachi Nandan, Yadav Kusum, Gopalakrishnan T, Elmisery Ahmed M
Teresina, Brazil Federal University of Piauí.
Hyderabad, India Department of Computer Science and Engineering, Vardhaman College of Engineering (Autonomous).
Cogn Neurodyn. 2023 Jun;17(3):1-14. doi: 10.1007/s11571-021-09712-y. Epub 2021 Sep 10.
COVID-19 was first identified in December 2019 at Wuhan, China. At present, the outbreak of COVID-19 pandemic has resulted in severe consequences on both economic and social infrastructures of the developed and developing countries. Several studies have been conducted and ongoing still to design efficient models for diagnosis and treatment of COVID-19 patients. The traditional diagnostic models that use reverse transcription-polymerase chain reaction (rt-qPCR) is a costly and time-consuming process. So, automated COVID-19 diagnosis using Deep Learning (DL) models becomes essential. The primary intention of this study is to design an effective model for diagnosis and classification of COVID-19. This research work introduces an automated COVID-19 diagnosis process using Convolutional Neural Network (CNN) with a fusion-based feature extraction model, called FM-CNN. FM-CNN model has three major phases namely, pre-processing, feature extraction, and classification. Initially, Wiener Filtering (WF)-based preprocessing is employed to discard the noise that exists in input chest X-Ray (CXR) images. Then, the pre-processed images undergo fusion-based feature extraction model which is a combination of Gray Level Co-occurrence Matrix (GLCM), Gray Level Run Length Matrix (GLRM), and Local Binary Patterns (LBP). In order to determine the optimal subset of features, Particle Swarm Optimization (PSO) algorithm is employed. At last, CNN is deployed as a classifier to identify the existence of binary and multiple classes of CXR images. In order to validate the proficiency of the proposed FM-CNN model in terms of its diagnostic performance, extension experimentation was carried out upon CXR dataset. As per the results attained from simulation, FM-CNN model classified multiple classes with the maximum sensitivity of 97.22%, specificity of 98.29%, accuracy of 98.06%, and F-measure of 97.93%.
2019年12月,新型冠状病毒肺炎(COVID-19)首次在中国武汉被发现。目前,COVID-19大流行的爆发已对发达国家和发展中国家的经济和社会基础设施造成了严重影响。已经开展了多项研究,并且仍在进行中,以设计针对COVID-19患者的高效诊断和治疗模型。使用逆转录聚合酶链反应(rt-qPCR)的传统诊断模型是一个成本高昂且耗时的过程。因此,使用深度学习(DL)模型进行COVID-19的自动化诊断变得至关重要。本研究的主要目的是设计一种有效的COVID-19诊断和分类模型。这项研究工作引入了一种使用卷积神经网络(CNN)和基于融合的特征提取模型(称为FM-CNN)的COVID-19自动化诊断过程。FM-CNN模型有三个主要阶段,即预处理、特征提取和分类。首先,采用基于维纳滤波(WF) 的预处理来去除输入胸部X光(CXR)图像中存在的噪声。然后,预处理后的图像经过基于融合的特征提取模型,该模型是灰度共生矩阵(GLCM)、灰度游程长度矩阵(GLRM)和局部二值模式(LBP)的组合。为了确定特征的最优子集,采用了粒子群优化(PSO)算法。最后,部署CNN作为分类器来识别CXR图像的二元和多类别存在情况。为了验证所提出的FM-CNN模型在诊断性能方面的有效性,对CXR数据集进行了扩展实验。根据模拟结果,FM-CNN模型对多类别的分类具有最高灵敏度97.22%、特异性98.29%、准确率98.06%和F值97.93%。