A Review of COVID-19 Diagnostic Approaches in Computer Vision.

Curr Med Imaging

Department of Computer Engineering, Hacettepe University, Ankara, Turkey.

Published: May 2023

AI Article Synopsis

  • Computer vision has made significant advancements in healthcare, aiding in disease detection and patient monitoring.
  • Research focused on the application of computer vision in addressing COVID-19 is rapidly increasing, given its prominence as a global health crisis.
  • The study serves as a preliminary review of recent COVID-19 computer vision research, intended to support future researchers in the field.

Article Abstract

Computer vision has proven that it can solve many problems in the field of health in recent years. Processing the data obtained from the patients provided benefits in both disease detection and follow-up and control mechanisms. Studies on the use of computer vision for COVID-19, which is one of the biggest global health problems of the past years, are increasing daily. This study includes a preliminary review of COVID-19 computer vision research conducted in recent years. This review aims to help researchers who want to work in this field.

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Source
http://dx.doi.org/10.2174/1573405619666221222161832DOI Listing

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