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  • Communications Faculty of Sciences University Ankara Series A2-A3 Physical and Engineering
  • Volume:65 Issue:2
  • ML based prediction of COVID-19 diagnosis using statistical tests

ML based prediction of COVID-19 diagnosis using statistical tests

Authors : Şifa Özsari, Fatma Zehra Ortak, Mehmet Serdar Güzel, Mükerrem Bahar Başkir, Gazi Erkan Bostanci
Pages : 79-99
Doi:10.33769/aupse.1227857
View : 188 | Download : 190
Publication Date : 2023-12-29
Article Type : Research Paper
Abstract :The first case of the novel Coronavirus disease (COVID-19), which is a respiratory disease, was seen in Wuhan city of China, in December 2019. From there, it spread to many countries and significantly affected human life. Deep learning, which is a very popular method today, is also widely used in the field of healthcare. In this study, it was aimed to determine the most suitable Deep Learning (DL) model for diagnosis of COVID-19. A popular public data set, which consists of 2482 scans was employed to select the best DL model. The success of the models was evaluated by using different performance evaluation metrics such as accuracy, sensitivity, specificity, precision, F1 score, kappa and AUC. According to the experimental results, it has been observed that DenseNet models, AdaGrad and NADAM optimizers are effective and successful. Also, whether there are statistically significant differences in each performance measure/score of the architectures by the optimizers was observed with statistical tests.
Keywords : COVID 19, deep learning, CT images, statistical analysis

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