Tuberculosis Disease Detection through CXR Images based on Deep Neural Network Approach

Main Article Content

Dipali Himmatrao Patil
Amit Gadekar

Abstract

Tuberculosis (TB) is a disease that, if left untreated for an extended period of time, can ultimately be fatal. Early TB detection can be aided by using a deep learning ensemble. In previous work, ensemble classifiers were only trained on images that shared similar characteristics. It is necessary for an ensemble to produce a diverse set of errors in order for it to be useful; this can be accomplished by making use of a number of different classifiers and/or features. In light of this, a brand-new framework has been constructed in this study for the purpose of segmenting and identifying TB in human Chest X-ray. It was determined that searching traditional web databases for chest X-ray was necessary. At this point, we pass the photos that we have collected over to Swin ResUnet3 so that they may be segmented. After the segmented chest X-ray have been provided to it, the Multi-scale Attention-based Densenet with Extreme Learning Machine (MAD-ELM) model will be applied in the detection stage in order to effectively diagnose tuberculosis from human chest X-ray. This will be done in order to maximize efficiency. Because it increased the variety of errors made by the basic classifiers, the supplied variation of the approach that was proposed was able to detect tuberculosis more effectively. The proposed ensemble method produced results with an accuracy of 94.2 percent, which are comparable to those obtained by past efforts.

Article Details

How to Cite
Patil, D. H. ., & Gadekar, A. . (2023). Tuberculosis Disease Detection through CXR Images based on Deep Neural Network Approach. International Journal on Recent and Innovation Trends in Computing and Communication, 11(7s), 96–106. https://doi.org/10.17762/ijritcc.v11i7s.6981
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