Life (Oct 2022)

Computer Aided COVID-19 Diagnosis in Pandemic Era Using CNN in Chest X-ray Images

  • Ali Alqahtani,
  • Mirza Mumtaz Zahoor,
  • Rimsha Nasrullah,
  • Aqil Fareed,
  • Ahmad Afzaal Cheema,
  • Abdullah Shahrose,
  • Muhammad Irfan,
  • Abdulmajeed Alqhatani,
  • Abdulaziz A. Alsulami,
  • Maryam Zaffar,
  • Saifur Rahman

DOI
https://doi.org/10.3390/life12111709
Journal volume & issue
Vol. 12, no. 11
p. 1709

Abstract

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Early detection of abnormalities in chest X-rays is essential for COVID-19 diagnosis and analysis. It can be effective for controlling pandemic spread by contact tracing, as well as for effective treatment of COVID-19 infection. In the proposed work, we presented a deep hybrid learning-based framework for the detection of COVID-19 using chest X-ray images. We developed a novel computationally light and optimized deep Convolutional Neural Networks (CNNs) based framework for chest X-ray analysis. We proposed a new COV-Net to learn COVID-specific patterns from chest X-rays and employed several machine learning classifiers to enhance the discrimination power of the presented framework. Systematic exploitation of max-pooling operations facilitates the proposed COV-Net in learning the boundaries of infected patterns in chest X-rays and helps for multi-class classification of two diverse infection types along with normal images. The proposed framework has been evaluated on a publicly available benchmark dataset containing X-ray images of coronavirus-infected, pneumonia-infected, and normal patients. The empirical performance of the proposed method with developed COV-Net and support vector machine is compared with the state-of-the-art deep models which show that the proposed deep hybrid learning-based method achieves 96.69% recall, 96.72% precision, 96.73% accuracy, and 96.71% F-score. For multi-class classification and binary classification of COVID-19 and pneumonia, the proposed model achieved 99.21% recall, 99.22% precision, 99.21% F-score, and 99.23% accuracy.

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