Intelligent computational model for the classification of Covid-19 with chest radiography compared to other respiratory diseases
Paula Santos

TL;DR
This paper presents an intelligent computational model that uses statistical feature extraction and clustering techniques to accurately classify COVID-19 from lung X-ray images, outperforming traditional methods.
Contribution
It introduces a novel approach combining PCA and X-means clustering with BIC for rapid and accurate COVID-19 detection from X-ray images, distinguishing it from other respiratory diseases.
Findings
Average recognition accuracy of COVID-19 was 93%.
The model effectively distinguished COVID-19 from other respiratory diseases.
The method demonstrated high sensitivity in classification.
Abstract
Lung X-ray images, if processed using statistical and computational methods, can distinguish pneumonia from COVID-19. The present work shows that it is possible to extract lung X-ray characteristics to improve the methods of examining and diagnosing patients with suspected COVID-19, distinguishing them from malaria, dengue, H1N1, tuberculosis, and Streptococcus pneumonia. More precisely, an intelligent computational model was developed to process lung X-ray images and classify whether the image is of a patient with COVID-19. The images were processed and extracted their characteristics. These characteristics were the input data for an unsupervised statistical learning method, PCA, and clustering, which identified specific attributes of X-ray images with Covid-19. The introduction of statistical models allowed a fast algorithm, which used the X-means clustering method associated with the…
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Taxonomy
MethodsPrincipal Components Analysis
