Abstract
In this study, which aims at early diagnosis of Covid-19 disease using X-ray images, the deep-learning approach, a state-of-the-art artificial intelligence method, was used, and automatic classification of images was performed using convolutional neural networks (CNN). In the first training-test data set used in the study, there were 230 X-ray images, of which 150 were Covid-19 and 80 were non-Covid-19, while in the second training-test data set there were 476 X-ray images, of which 150 were Covid-19 and 326 were non-Covid-19. Thus, classification results have been provided for two data sets, containing predominantly Covid-19 images and predominantly non-Covid-19 images, respectively. In the study, a 23-layer CNN architecture and a 54-layer CNN architecture were developed. Within the scope of the study, the results were obtained using chest X-ray images directly in the training-test procedures and the sub-band images obtained by applying dual tree complex wavelet transform (DT-CWT) to the above-mentioned images. The same experiments were repeated using images obtained by applying local binary pattern (LBP) to the chest X-ray images. Within the scope of the study, four new result generation pipeline algorithms having been put forward additionally, it was ensured that the experimental results were combined and the success of the study was improved. In the experiments carried out in this study, the training sessions were carried out using the k-fold cross validation method. Here the k value was chosen as 23 for the first and second training-test data sets. Considering the average highest results of the experiments performed within the scope of the study, the values of sensitivity, specificity, accuracy, F-1 score, and area under the receiver operating characteristic curve (AUC) for the first training-test data set were 0,9947, 0,9800, 0,9843, 0,9881 and 0,9990 respectively; while for the second training-test data set, they were 0,9920, 0,9939, 0,9891, 0,9828 and 0,9991; respectively. Within the scope of the study, finally, all the images were combined and the training and testing processes were repeated for a total of 556 X-ray images comprising 150 Covid-19 images and 406 non-Covid-19 images, by applying 2-fold cross. In this context, the average highest values of sensitivity, specificity, accuracy, F-1 score, and AUC for this last training-test data set were found to be 0,9760, 1,0000, 0,9906, 0,9823 and 0,9997; respectively.
Highlights
In the last few months of 2019, a new type of virus, which is a member of the family Coronaviridae, emerged
Within the scope of the study, the highest mean sensitivity, specificity, accuracy, F-1 score, and AUC values obtained without using the pipeline algorithms were, respectively; Table 21 Results obtained by using the LL, LH, HL real and imaginary sub-bands obtained by applying dual tree complex wavelet transform (DT-CWT) to the chest X-ray images
It can be seen that the achievements of the first and second convolutional neural networks (CNN) architectures are generally close to each other
Summary
In the last few months of 2019, a new type of virus, which is a member of the family Coronaviridae, emerged. The. Electrical and Electronics Engineering, Konya Technical University, Konya, Turkey virus that emerged in the city of Wuhan in Hubei province in China affected this region first and spread all over the world in a short time. The virus generally affects the upper and lower respiratory tract, lungs, and, less frequently, the heart muscles [2]. While the virus generally affects young and middle-aged people and people who do not have any chronic diseases to a lesser extent, it can cause severe consequences, resulting in death, in people who suffer from diseases such as hypertension, cardiovascular disease, and diabetes [3].
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