AI Article Synopsis

  • The paper introduces a computer-aided diagnosis model called Cov-Net, designed for the early detection of COVID-19 in patients using chest X-ray images.
  • The model uses a modified residual network with advanced techniques like asymmetric convolution and attention mechanisms for effective feature extraction and fusion.
  • Experimental results show that Cov-Net achieves high accuracy rates (0.9966 and 0.9901) and outperforms six other existing algorithms, highlighting its potential for broader application in different diagnostic scenarios.

Article Abstract

In the context of global pandemic Coronavirus disease 2019 (COVID-19) that threatens life of all human beings, it is of vital importance to achieve early detection of COVID-19 among symptomatic patients. In this paper, a computer aided diagnosis (CAD) model Cov-Net is proposed for accurate recognition of COVID-19 from chest X-ray images via machine vision techniques, which mainly concentrates on powerful and robust feature learning ability. In particular, a modified residual network with asymmetric convolution and attention mechanism embedded is selected as the backbone of feature extractor, after which skip-connected dilated convolution with varying dilation rates is applied to achieve sufficient feature fusion among high-level semantic and low-level detailed information. Experimental results on two public COVID-19 radiography databases have demonstrated the practicality of proposed Cov-Net in accurate COVID-19 recognition with accuracy of 0.9966 and 0.9901, respectively. Furthermore, within same experimental conditions, proposed Cov-Net outperforms other six state-of-the-art computer vision algorithms, which validates the superiority and competitiveness of Cov-Net in building highly discriminative features from the perspective of methodology. Hence, it is deemed that proposed Cov-Net has a good generalization ability so that it can be applied to other CAD scenarios. Consequently, one can conclude that this work has both practical value in providing reliable reference to the radiologist and theoretical significance in developing methods to build robust features with strong presentation ability.

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Source
http://www.ncbi.nlm.nih.gov/pmc/articles/PMC9252868PMC
http://dx.doi.org/10.1016/j.eswa.2022.118029DOI Listing

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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.

View Article and Find Full Text PDF
Article Synopsis
  • The paper introduces a computer-aided diagnosis model called Cov-Net, designed for the early detection of COVID-19 in patients using chest X-ray images.
  • The model uses a modified residual network with advanced techniques like asymmetric convolution and attention mechanisms for effective feature extraction and fusion.
  • Experimental results show that Cov-Net achieves high accuracy rates (0.9966 and 0.9901) and outperforms six other existing algorithms, highlighting its potential for broader application in different diagnostic scenarios.
View Article and Find Full Text PDF

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