Deep Learning Model for COVID-19 Diagnosis: Improving Accuracy and Sensitivity in Early Detection

Authors

  • Munera A. Jabaar Middle Technical University
  • Nadia Mahmood Ali Middle Technical University
  • Ahmed Majid Taha University of Information Technology and Communications

DOI:

https://doi.org/10.25195/ijci.v51i1.588

Keywords:

COVID-19 , Deep Learning, Medical AI Viral Detection

Abstract

The continuous COVID-19 pandemic, caused by the SARS-CoV-2 virus, required fast and efficient diagnostic tools. This work presents a deep learning-based system, using convolutional neural networks, for the detection and diagnosis of COVID-19 through computed tomography tests, aiming to assist specialized medical professionals. A total of 746 Computed Tomography images (CT), were used in this work, one of the largest publicly available chest computed tomography dataset for research into COVID-19. Our proposed technique showed the accuracy of more than 99% for the training set, with high sensitivity and specificity, and achieved 97% on the validation set. Such results would hint at the very possible implementation of our deep CNN approach in clinical diagnostic settings, particularly for COVID-19 testing, to enhance early detection and management for patients.

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Author Biographies

Munera A. Jabaar, Middle Technical University

Institute of Medical Technology

Nadia Mahmood Ali, Middle Technical University

Institute of Medical Technology

Ahmed Majid Taha, University of Information Technology and Communications

Biomedical Informatics College

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Published

2025-06-29