International Journal of Progressive Research in Engineering Management and Science
(Peer-Reviewed, Open Access, Fully Referred International Journal)

ISSN:2583-1062
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Paper Details

IMPROVING TUBERCULOSIS DETECTION IN CHEST X-RAY IMAGES THROUGH TRANSFER LEARNING AND DEEP LEARNING: A COMPARATIVE STUDY OF CNN ARCHITECTURES (KEY IJP************244)

  • Aishwarya Padmaraj Keshi,Aarti Basavantappa Valsang

Abstract

Introduction: Tuberculosis remains a significant global health challenge, necessitating more efficient andaccurate diagnostic methods.Methods: This study evaluates the performance of various convolutional neural network (CNN) architectures VGG16, VGG19, ResNet50, ResNet101, ResNet152, and Inception-ResNet-V2in classifying chest X-ray (CXR) images as either normal or TB-positive. The data set comprised 4,200 CXR images, with 700labeled as TB-positive and 3,500 as normal. We also examined the impact of data augmentation on model performance and analyzed the training times and the number of parameters for each architecture.Results: Our results showed that VGG16 outperformed the other models across all evaluation metrics, achieving an accuracy of 99.4%, precision of 97.9%, recall of 98.6%, F1-score of 98.3%, and AUC-ROC of 98.25%. Surprisingly, data augmentation did not improve performance, suggesting that the original datasets diversity was sufficient. Furthermore, models with large numbers of parameters, such as ResNet152 and Inception- ResNet-V2, required longer training times without yielding proportionally better performance.Discussion: These findings highlight the importance of selecting the appropriate model architecture based on task-specific requirements. While more complex models with larger parameter counts may seem advantageous, they do not necessarily offer superior performance and often come with increased computational costs.Conclusion: The study demonstrates the potential of simpler models such as VGG16 to effectively diagnose TB from CXR images, providing a balance between performance and computational efficiency. This insight can guide future research and practical implementations in medical image classification.

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