An Empirical Approach Towards Detection of Tuberculosis Using Deep Convolutional Neural Network
Mansoor Ahmed Khuhro, Syed Azeem Inam, Daniyal Iqbal, Hassan Hashim
International Journal of Data Mining Modelling and Management · 2024-01
Abstract
Tuberculosis remains among the top disease, causing death all over the globe and its timely detection is a major concern for medical practitioners, especially after the emergence of the SARS-CoV-2 pandemic.Even with the recent advances in the methods for medical image classification, it is still challenging to diagnose tuberculosis without considering the associated historical and biological factors.There has been a great contribution of unsupervised learning in the development of techniques for image classification and the present study has utilised a deep convolutional neural network for detecting tuberculosis.It proposes a network comprising 54 layers having 59 connections.After computations, our proposed deep convolutional neural network attained an accuracy of 99.79%, 99.46%, and 99.5% for the classes of healthy, sick, and tuberculosis (TB) respectively for a public dataset, achieving higher accuracy as compared to other pre-trained network models.
MeSH terms
- Convolutional neural network
- Computer science
- Artificial intelligence
- Tuberculosis