4.2 Article

A CNN based coronavirus disease prediction system for chest X-rays

Publisher

SPRINGER HEIDELBERG
DOI: 10.1007/s12652-022-03775-3

Keywords

COVID-19; X-ray Images; Deep learning; Convolutional neural network

Funding

  1. Fareed Computing Research Center, Department of Computer Science under Khwaja Fareed University of Engineering and Information Technology(KFUEIT), Punjab, Rahim Yar Khan, Pakistan

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This study proposes a CNN-based Coronavirus Disease Prediction System that automatically extracts features from chest X-ray images for disease prediction. By addressing challenges in radiological reporting through image preprocessing and data augmentation, the proposed model outperforms other classification models with high accuracy.
Coronavirus disease (COVID-19) proliferated globally in early 2020, causing existential dread in the whole world. Radiography is crucial in the clinical staging and diagnosis of COVID-19 and offers high potential to improve healthcare plans for tackling the pandemic. However high variations in infection characteristics and low contrast between normal and infected regions pose great challenges in preparing radiological reports. To address these challenges, this study presents CODISC-CNN (CNN based Coronavirus DIsease Prediction System for Chest X-rays) that can automatically extract the features from chest X-ray images for the disease prediction. However, to get the infected region of X-ray, edges of the images are detected by applying image preprocessing. Furthermore, to attenuate the shortage of labeled datasets data augmentation has been adapted. Extensive experiments have been performed to classify X-ray images into two classes (Normal and COVID), three classes (Normal, COVID, and Virus Bacteria), and four classes (Normal, COVID, and Virus Bacteria, and Virus Pneumonia) with the accuracy of 97%, 89%, and 84% respectively. The proposed CNN-based model outperforms many cutting-edge classification models and boosts state-of-the-art performance.

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