Journal of Imaging (Sep 2022)

Comprehensive Survey of Machine Learning Systems for COVID-19 Detection

  • Bayan Alsaaidah,
  • Moh’d Rasoul Al-Hadidi,
  • Heba Al-Nsour,
  • Raja Masadeh,
  • Nael AlZubi

DOI
https://doi.org/10.3390/jimaging8100267
Journal volume & issue
Vol. 8, no. 10
p. 267

Abstract

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The last two years are considered the most crucial and critical period of the COVID-19 pandemic affecting most life aspects worldwide. This virus spreads quickly within a short period, increasing the fatality rate associated with the virus. From a clinical perspective, several diagnosis methods are carried out for early detection to avoid virus propagation. However, the capabilities of these methods are limited and have various associated challenges. Consequently, many studies have been performed for COVID-19 automated detection without involving manual intervention and allowing an accurate and fast decision. As is the case with other diseases and medical issues, Artificial Intelligence (AI) provides the medical community with potential technical solutions that help doctors and radiologists diagnose based on chest images. In this paper, a comprehensive review of the mentioned AI-based detection solution proposals is conducted. More than 200 papers are reviewed and analyzed, and 145 articles have been extensively examined to specify the proposed AI mechanisms with chest medical images. A comprehensive examination of the associated advantages and shortcomings is illustrated and summarized. Several findings are concluded as a result of a deep analysis of all the previous works using machine learning for COVID-19 detection, segmentation, and classification.

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