Optimizing chest tuberculosis image classification with oversampling and transfer learning

Author:

Alqahtani Ali1,Abu Al‐Haija Qasem2ORCID,Alsulami Abdulaziz A.3,Alturki Badraddin4,Alqahtani Nayef5,Alsini Raed3

Affiliation:

1. Department of Networks and Communications Engineering Najran University Najran Saudi Arabia

2. Department of Cybersecurity Princess Sumaya University for Technology (PSUT) Amman Jordan

3. Department of Information Systems King Abdulaziz University Jeddah Saudi Arabia

4. Department of Information Technology King Abdulaziz University Jeddah Saudi Arabia

5. Department of Electrical Engineering King Faisal University Al‐Hofuf Al‐Ahsa Saudi Arabia

Abstract

AbstractTuberculosis (TB) is an extremely contagious illness caused by Mycobacterium tuberculosis. Chest tuberculosis classification is conducted based on a deep convolutional neural network architecture. In this research, a pre‐trained network is utilized to demonstrate the advantage of using the oversampling technique on the classification of TB and compare results with recent research that used the same dataset. Therefore, the dataset consists of 3500 uninfected TB cases and 700 infected with TB. This paper circumvents the imbalance by using the oversampling technique in X‐ray TB images to be fed into several pre‐trained networks for TB classification. The oversampling technique is crucial in enhancing the performance of TB classification compared with other pre‐trained models reported here. Inceptionv3 shows a promising result compared to other pre‐trained models; it achieves 99.94% accuracy, 99.88% precision, 100% recall, and 99.94% F1‐Score.

Publisher

Institution of Engineering and Technology (IET)

Subject

Electrical and Electronic Engineering,Computer Vision and Pattern Recognition,Signal Processing,Software

Reference71 articles.

1. Mycobacterium tuberculosis: ecology and evolution of a human bacterium

2. World Health Organization (WHO):Global tuberculosis report 2020: Executive summary(2020).https://reliefweb.int/report/world/global‐tuberculosis‐report‐2020?gad_source=1&gclid=Cj0KCQiAyeWrBhDDARIsAGP1mWRT‐3Lnt3ZyYB1P61‐8URdvtQ_Hf6Q63yhGsaKSXv1wa6FhYl1NrqMaAjZXEALw_wcB

3. Hybrid deep learning for detecting lung diseases from X-ray images

4. Clinical relevance of the routine daily chest X-Ray in the surgical intensive care unit

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