BIO Web of Conferences (Jan 2024)

Revolutionizing COVID-19 Diagnosis: Advancements in Chest X-ray Analysis through Customized Convolutional Neural Networks and Image Fusion Data Augmentation

  • Alzamili Zainab,
  • Danach Kassem,
  • Frikha Mondher

DOI
https://doi.org/10.1051/bioconf/20249700014
Journal volume & issue
Vol. 97
p. 00014

Abstract

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COVID-19 is produced by a new coronavirus called SARS-CoV-2, has wrought extensive damage. Globally, Patients present a wide range of challenges, which has forced medical professionals to actively seek out cutting-edge therapeutic approaches and technology advancements. Machine learning technologies have significantly enhanced the comprehension and control of the COVID-19 issue. Machine learning enables computers to emulate human-like behavior by efficiently recognizing patterns and extracting valuable insights. Cognitive capacity and aptitude for handling substantial quantities of data. Amidst the battle against COVID-19, firms have promptly employed machine-learning expertise in several ways, such as improving consumer communication, enhance comprehension of the COVID-19 transmission mechanism and expedite research and treatment. This work is centered around the utilization of deep learning techniques for predictive modeling. in individuals impacted with COVID-19. A data augmentation phase is included, utilizing multiexposure picture fusion techniques. Chest X-ray images of healthy individuals and COVID-19 patients make up our dataset.