A Hybrid Convolutional Neural Network Model for Diagnosis of COVID-19 Using Chest X-ray Images

COVID-19 declared as a pandemic that has a faster rate of infection and has impacted the lives and the country's economy due to forced lockdowns. Its detection using RT-PCR is required long time and due to which its infection has grown exponentially. This creates havoc for the shortage of testi...

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Veröffentlicht in:International journal of environmental research and public health 2021-11, Vol.18 (22), p.12191, Article 12191
Hauptverfasser: Kaur, Prabhjot, Harnal, Shilpi, Tiwari, Rajeev, Alharithi, Fahd S., Almulihi, Ahmed H., Noya, Irene Delgado, Goyal, Nitin
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Sprache:eng
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Zusammenfassung:COVID-19 declared as a pandemic that has a faster rate of infection and has impacted the lives and the country's economy due to forced lockdowns. Its detection using RT-PCR is required long time and due to which its infection has grown exponentially. This creates havoc for the shortage of testing kits in many countries. This work has proposed a new image processing-based technique for the health care systems named "C19D-Net ", to detect "COVID-19 " infection from "Chest X-Ray " (XR) images, which can help radiologists to improve their accuracy of detection COVID-19. The proposed system extracts deep learning (DL) features by applying the InceptionV4 architecture and Multiclass SVM classifier to classify and detect COVID-19 infection into four different classes. The dataset of 1900 Chest XR images has been collected from two publicly accessible databases. Images are pre-processed with proper scaling and regular feeding to the proposed model for accuracy attainments. Extensive tests are conducted with the proposed model ( "C19D-Net ") and it has succeeded to achieve the highest COVID-19 detection accuracy as 96.24% for 4-classes, 95.51% for three-classes, and 98.1% for two-classes. The proposed method has outperformed well in expressions of "precision ", "accuracy ", "F1-score " and "recall " in comparison with most of the recent previously published methods. As a result, for the present situation of COVID-19, the proposed "C19D-Net " can be employed in places where test kits are in short supply, to help the radiologists to improve their accuracy of detection of COVID-19 patients through XR-Images.
ISSN:1660-4601
1661-7827
1660-4601
DOI:10.3390/ijerph182212191