Early Tuberculosis Detection using Advanced Feature Extraction Techniques Integrated with a PSO-GWO-Based Neural Network Classifier

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Gitesh S. Gujrathi, Mukesh Yadav

Abstract

The global health challenge posed by Tuberculosis (TB) necessitates innovative solutions for early detection, especially in regions heavily burdened by the disease. This paper introduces a groundbreaking approach—an automated computer-aided diagnosis system aimed at reducing reliance on expert radiologists for early TB detection through chest X-ray images. The proposed technique leverages advanced feature extraction methods, including GLCM, HOG, and DWT-GIST Descriptor coefficients, and employs a PSO-GWO based Neural Network (NN) classifier. This integration of sophisticated techniques contributes to a comprehensive and accurate TB detection system. The evaluation results demonstrate an impressive accuracy of 97.12%, highlighting the potential of the proposed approach to significantly improve the efficiency and accessibility of TB diagnosis, particularly in resource-constrained settings where expert radiologists may be scarce. This innovative system represents a crucial step towards addressing the challenges associated with TB diagnosis, offering a promising solution for timely and accurate detection.

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