COVID-ConvNet: A Convolutional Neural Network Classifier for Diagnosing COVID-19 Infection

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Abstract

The novel coronavirus (COVID-19) pandemic still has a significant impact on the worldwide population’s health and well-being. Effective patient screening, including radiological examination employing chest radiography as one of the main screening modalities, is an important step in the battle against the disease. Indeed, the earliest studies on COVID-19 found that patients infected with COVID-19 present with characteristic anomalies in chest radiography. In this paper, we introduce COVID-ConvNet, a deep convolutional neural network (DCNN) design suitable for detecting COVID-19 symptoms from chest X-ray (CXR) scans. The proposed deep learning (DL) model was trained and evaluated using 21,165 CXR images from the COVID-19 Database, a publicly available dataset. The experimental results demonstrate that our COVID-ConvNet model has a high prediction accuracy at 97.43% and outperforms recent related works by up to 5.9% in terms of prediction accuracy.

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APA

Alablani, I. A. L., & Alenazi, M. J. F. (2023). COVID-ConvNet: A Convolutional Neural Network Classifier for Diagnosing COVID-19 Infection. Diagnostics, 13(10). https://doi.org/10.3390/diagnostics13101675

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