COVIDetectioNet: COVID-19 diagnosis system based on X-ray images using features selected from pre-learned deep features ensemble
Özet
The recent novel coronavirus (also known as COVID-19) has rapidly spread
worldwide, causing an infectious respiratory disease that has killed
hundreds of thousands and infected millions. While test kits are used
for diagnosis of the disease, the process takes time and the test kits
are limited in their availability. However, the COVID-19 disease is also
diagnosable using radiological images taken through lung X-rays. This
process is known to be both faster and more reliable as a form of
identification and diagnosis. In this regard, the current study proposes
an expert-designed system called COVIDetectioNet model, which utilizes
features selected from combination of deep features for diagnosis of
COVID-19. For this purpose, a pretrained Convolutional Neural Network
(CNN)-based AlexNet architecture that employed the transfer learning
approach, was used. The effective features that were selected using the
Relief feature selection algorithm from all layers of the architecture
were then classified using the Support Vector Machine (SVM) method. To
verify the validity of the model proposed, a total of 6092 X-ray images,
classified as Normal (healthy), COVID-19, and Pneumonia, were obtained
from a combination of public datasets. In the experimental results, an
accuracy of 99.18\% was achieved using the model proposed. The results
demonstrate that the proposed COVIDetectioNet model achieved a superior
level of success when compared to previous studies.
Koleksiyonlar
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