Neural network-based strategies for automatically diagnosing of COVID-19 from X-ray images utilizing different feature extraction algorithms

被引:0
作者
Farida Siddiqi Prity
Nishu Nath
Antara Nath
K. M. Aslam Uddin
机构
[1] Noakhali Science and Technology University,Department of Information and Communication Engineering
[2] Montana State University,Gianforte School of Computing
[3] Mainamoti Medical College,undefined
来源
Network Modeling Analysis in Health Informatics and Bioinformatics | / 12卷
关键词
COVID-19; X-ray image; Neural network; Feature extraction algorithm; Dimensionality reduction algorithm; Feature selection algorithm;
D O I
暂无
中图分类号
学科分类号
摘要
The COVID-19 pandemic has had an obliterating impact on the health and well-being of the worldwide populace. It has recently become one of the most severe and acute diseases and has spread globally. Therefore, an automated detection system should be implemented as the fastest diagnostic option to control the spread of COVID-19. This study aims to introduce neural network-based strategies for classifying and detecting COVID-19 early through image processing utilizing X-ray images. Despite the extensive use of directly fed X-ray images into the classifier, there is a lack of comparative analysis between the feature-based system and the direct imaging system in the classification of COVID-19 to evaluate the efficiency of feature extraction methods. Therefore, the proposed system represents introductory experiments of feature-based system using image Feature Extraction Algorithms [Texture, Grey-Level Co-occurrence Matrix (GLCM), Grey-Level Dependence Matrix (GLDM), Fast Fourier Transform (FFT), and Discrete Wavelet Transform (DWT)], Dimensionality Reduction Algorithms (Principal Component Analysis (PCA), Kernel Principal Component Analysis (KPCA), Sparse Autoencoder, and Stacked Autoencoder), Feature Selection Algorithms (Anova F-measure, Chi-square Test, and Random Forest), and Neural Networks [Feed-Forward Neural Network (FFNN) and Convolutional Neural Network (CNN)] on generated datasets consisting of Normal, COVID-19, and Pneumonia-infected chest X-ray images. Tenfold Cross-Validations are implemented during the classification process. A baseline model is created where no Feature Extraction Algorithm is implemented. Accuracy, sensitivity, specificity, precision, and F-measure metrics are utilized to assess classification performance. Finally, a comprehensive comparison of the success of the Feature-based system (Feature Extraction Algorithms, Dimensionality Reduction Algorithms, and Feature Selection Algorithms) in COVID-19 classification from X-ray images is made with the baseline model. The highest classification accuracy (95.44 ± 0.03%), sensitivity (96%), specificity (98%), precision (96%), and F-measure (96%) are achieved for Feature-based systems using Principal Component Analysis. The aim is to lay the foundation for the potential creation of a system that can automatically distinguish COVID-19 infection based on chest X-ray images using the Feature-based model.
引用
收藏
相关论文
共 371 条
[21]  
Apostolopoulos ID(2022)Contamination of CT scanner surfaces with SARS-CoV-2 and infective potential after examination of invasively ventilated, non-invasively ventilated and non-ventilated patients with positive throat swabs: prospective investigation using real-time reverse-transcription PCR and viral cell culture Insights Imaging 129 610-440
[22]  
Mpesiana TA(2021)Knowledge distillation: a survey Int J Comput Vision 10 3728-44
[23]  
Avinash S(2019)Deep convolutional neural network VGG-16 model for differential diagnosing of papillary thyroid carcinomas in cytological images: a pilot study J Cancer 80 129-73
[24]  
Naveen Kumar HN(2021)Deep learning based detection of COVID-19 from chest X-ray images Multimedia Tools Appl 80 11185-1220
[25]  
Guru Prasad MS(2023)Deep learning models-based CT-scan image classification for automated screening of COVID-19 Biomed Signal Process Control 6 20150202-120
[26]  
Mohan Naik R(1973)Textural features for image classification IEEE Trans Syst Man Cybern 22 648-792
[27]  
Parveen G(2022)FedSGDCOVID: federated SGD COVID-19 detection under local differential privacy using chest X-ray images and symptom information Sensors 24 101-15
[28]  
Bachri OS(2014)Texture feature extraction based on wavelet transform and gray-level co-occurrence matrices applied to osteosarcoma diagnosis Bio-Med Mater Eng 146 179-780
[29]  
Kusnadi HM(2022)A lightweight CNN-based network on COVID-19 detection using X-ray and CT images Comput Biol Med 99 425-1381
[30]  
Nurhayati OD(2019)Patient clustering improves efficiency of federated machine learning to predict mortality and hospital stay time using distributed electronic medical records J Biomed Inform 20 35-236