Novel Comparative Study for the Detection of COVID-19 Using CT Scan and Chest X-ray Images

Int J Environ Res Public Health. 2023 Jan 10;20(2):1268. doi: 10.3390/ijerph20021268.

Abstract

The number of coronavirus disease (COVID-19) cases is constantly rising as the pandemic continues, with new variants constantly emerging. Therefore, to prevent the virus from spreading, coronavirus cases must be diagnosed as soon as possible. The COVID-19 pandemic has had a devastating impact on people's health and the economy worldwide. For COVID-19 detection, reverse transcription-polymerase chain reaction testing is the benchmark. However, this test takes a long time and necessitates a lot of laboratory resources. A new trend is emerging to address these limitations regarding the use of machine learning and deep learning techniques for automatic analysis, as these can attain high diagnosis results, especially by using medical imaging techniques. However, a key question arises whether a chest computed tomography scan or chest X-ray can be used for COVID-19 detection. A total of 17,599 images were examined in this work to develop the models used to classify the occurrence of COVID-19 infection, while four different classifiers were studied. These are the convolutional neural network (proposed architecture (named, SCovNet) and Resnet18), support vector machine, and logistic regression. Out of all four models, the proposed SCoVNet architecture reached the best performance with an accuracy of almost 99% and 98% on chest computed tomography scan images and chest X-ray images, respectively.

Keywords: COVID-19; CT scan; chest X-ray; deep learning; machine learning.

Publication types

  • Research Support, Non-U.S. Gov't

MeSH terms

  • COVID-19* / diagnostic imaging
  • Humans
  • Pandemics*
  • Thorax / diagnostic imaging
  • Tomography, X-Ray Computed
  • X-Rays

Grants and funding

Acknowledgment to the Bolsa de Investigação (BI) within Project BASE: BAnana Sensing (PRODERAM20-16.2.2-FEADER-1810). Acknowledgment to the LARSyS (Projeto—UIDB/50009/2020) for funding this Research. Acknowledgment to ARDITI—Agência Regional para o Desenvolvimento da Investigação, Tecnologia e Inovação under the scope of the project M1420-09-5369-FSE-000002—Post-Doctoral Fellowship, co-financed by the Madeira 14-20 Program—European Social Fund.