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COVID-19 Detection System Using Chest CT Images and Multiple Kernels-Extreme Learning Machine Based on Deep Neural Network - 15/07/21

Doi : 10.1016/j.irbm.2021.01.004 
M. Turkoglu
 Computer Engineering Department, Engineering Faculty, Bingol University, 12000, Bingol, Turkey 

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Graphical abstract

El texto completo de este artículo está disponible en PDF.

Highlights

Chest CT scan images obtained from patients infected with the Coronavirus (COVID-19) were used.
In this study, we detected with ELM and Deep Neural Network using COVID-19, normal, and pneumonia chest CT scan data.
A novel Multiple Kernels-ELM-based Deep Neural Network model is presented.
The proposed model achieved 98.36% classification accuracy for COVID-19 detection by using lung CT scan images.

El texto completo de este artículo está disponible en PDF.

Abstract

Objectives

Coronavirus disease is a fatal epidemic that has originated in Wuhan, China in December 2019. This disease is diagnosed using radiological images taken with the help of basic scanning methods besides the test kits for Reverse Transcription Polymerase Chain Reaction (RT-PCR). Automatic analysis of chest Computed Tomography (CT) images that are based on image processing technology plays an important role in combating this infectious disease.

Material and methods

In this paper, a new Multiple Kernels-ELM-based Deep Neural Network (MKs-ELM-DNN) method is proposed for the detection of novel coronavirus disease - also known as COVID-19, through chest CT scanning images. In the model proposed, deep features are extracted from CT scan images using a Convolutional Neural Network (CNN). For this purpose, pre-trained CNN-based DenseNet201 architecture, which is based on the transfer learning approach is used. Extreme Learning Machine (ELM) classifier based on different activation methods is used to calculate the architecture's performance. Lastly, the final class label is determined using the majority voting method for prediction of the results obtained from each architecture based on ReLU-ELM, PReLU-ELM, and TanhReLU-ELM.

Results

In experimental works, a public dataset containing COVID-19 and Non-COVID-19 classes was used to verify the validity of the MKs-ELM-DNN model proposed. According to the results obtained, the accuracy score was obtained as 98.36% using the MKs-ELM-DNN model. The results have demonstrated that, when compared, the MKs-ELM-DNN model proposed is proven to be more successful than the state-of-the-art algorithms and previous studies.

Conclusion

This study shows that the proposed Multiple Kernels-ELM-based Deep Neural Network model can effectively contribute to the identification of COVID-19 disease.

El texto completo de este artículo está disponible en PDF.

Keywords : COVID-19, Chest CT images, Deep learning, Extreme learning machine, Convolutional neural network


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Vol 42 - N° 4

P. 207-214 - août 2021 Regresar al número
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