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Detecting COVID-19 From Lung Computed Tomography Images: A Swarm Optimized Artificial Neural Network Approach

Medicine and Health

Detecting COVID-19 From Lung Computed Tomography Images: A Swarm Optimized Artificial Neural Network Approach

S. Punitha, T. Stephan, et al.

This groundbreaking research introduces a Computer Aided Diagnosis (CAD) system for COVID-19 detection, leveraging an Artificial Bee Colony (ABC) optimized Artificial Neural Network (ABCNN). The method accurately classifies lung CT images as COVID-19 or non-COVID-19 with an impressive accuracy of 92.37%. Conducted by esteemed authors S Punitha, Thompson Stephan, Ramani Kannan, MUFTI Mahmud, M Shamim Kaiser, and SAMIR Brahim Belhaouari, this study pushes the boundaries of medical image analysis.

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~3 min • Beginner • English
Abstract
COVID-19 has affected many people across the globe. Though vaccines are available now, early detection of the disease plays a vital role in the better management of COVID-19 patients. An Artificial Neural Network (ANN) powered Computer Aided Diagnosis (CAD) system can automate the detection pipeline accounting for accurate diagnosis, overcoming the limitations of manual methods. This work proposes a CAD system for COVID-19 that detects and classifies abnormalities in lung CT images using Artificial Bee Colony (ABC) optimised ANN (ABCNN). The proposed ABCNN approach works by segmenting the suspicious regions from the CT images of non-COVID and COVID patients using an ABC optimised region growing process and extracting the texture and intensity features from those suspicious regions. Further, an optimised ANN model whose input features, initial weights and hidden nodes are optimised using ABC optimisation classifies those abnormal regions into COVID and non-COVID classes. The proposed ABCNN approach is evaluated using the lung CT images collected from the public datasets. In comparison to other available techniques, the proposed ABCNN approach achieved a high classification accuracy of 92.37% when evaluated using a set of 470 lung CT images. INDEX TERMS Artificial neural networks, artificial bee colony algorithm, multilayer perceptron, resilient backpropagation, texture features, feature extraction, classification accuracy.
Publisher
IEEE Access
Published On
Jan 13, 2023
Authors
S Punitha, Thompson Stephan, Ramani Kannan, MUFTI Mahmud, M Shamim Kaiser, SAMIR Brahim Belhaouari
Tags
COVID-19
Artificial Neural Network
Computer Aided Diagnosis
Lung CT images
Image segmentation
Machine learning
Artificial Bee Colony
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