Automatic diagnosis of tuberculosis disease based on plasmonic ELISA and color-based image classification

Tuberculosis (TB) remains one of the most devastating infectious diseases and its treatment efficiency is majorly influenced by the stage at which infection with the TB bacterium is diagnosed. The available methods for TB diagnosis are either time consuming, costly or not efficient. This study emplo...

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Main Authors: Abuhassan, Kamal J., Mohd Bakhori, Noremylia, Kusnin, Norzila, Mohd Azmi, Umi Zulaikha, Tania, Marzia Hoque, Evans, Benjamin Andrew, Yusof, Nor Azah, Hossain, Mohammed Alamgir
Format: Conference or Workshop Item
Language:English
Published: IEEE 2017
Online Access:http://psasir.upm.edu.my/id/eprint/65347/1/65347.pdf
http://psasir.upm.edu.my/id/eprint/65347/
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spelling my.upm.eprints.653472018-10-05T09:55:06Z http://psasir.upm.edu.my/id/eprint/65347/ Automatic diagnosis of tuberculosis disease based on plasmonic ELISA and color-based image classification Abuhassan, Kamal J. Mohd Bakhori, Noremylia Kusnin, Norzila Mohd Azmi, Umi Zulaikha Tania, Marzia Hoque Evans, Benjamin Andrew Yusof, Nor Azah Hossain, Mohammed Alamgir Tuberculosis (TB) remains one of the most devastating infectious diseases and its treatment efficiency is majorly influenced by the stage at which infection with the TB bacterium is diagnosed. The available methods for TB diagnosis are either time consuming, costly or not efficient. This study employs a signal generation mechanism for biosensing, known as Plasmonic ELISA, and computational intelligence to facilitate automatic diagnosis of TB. Plasmonic ELISA enables the detection of a few molecules of analyte by the incorporation of smart nanomaterials for better sensitivity of the developed detection system. The computational system uses k-means clustering and thresholding for image segmentation. This paper presents the results of the classification performance of the Plasmonic ELISA imaging data by using various types of classifiers. The five-fold cross-validation results show high accuracy rate (>97%) in classifying TB images using the entire data set. Future work will focus on developing an intelligent mobile-enabled expert system to diagnose TB in real-time. The intelligent system will be clinically validated and tested in collaboration with healthcare providers in Malaysia. IEEE 2017 Conference or Workshop Item PeerReviewed text en http://psasir.upm.edu.my/id/eprint/65347/1/65347.pdf Abuhassan, Kamal J. and Mohd Bakhori, Noremylia and Kusnin, Norzila and Mohd Azmi, Umi Zulaikha and Tania, Marzia Hoque and Evans, Benjamin Andrew and Yusof, Nor Azah and Hossain, Mohammed Alamgir (2017) Automatic diagnosis of tuberculosis disease based on plasmonic ELISA and color-based image classification. In: 2017 39th Annual International Conference of the IEEE Engineering in Medicine and Biology Society (EMBC), 11-15 July 2017, Seogwipo, South Korea. (pp. 4512-4515). 10.1109/EMBC.2017.8037859
institution Universiti Putra Malaysia
building UPM Library
collection Institutional Repository
continent Asia
country Malaysia
content_provider Universiti Putra Malaysia
content_source UPM Institutional Repository
url_provider http://psasir.upm.edu.my/
language English
description Tuberculosis (TB) remains one of the most devastating infectious diseases and its treatment efficiency is majorly influenced by the stage at which infection with the TB bacterium is diagnosed. The available methods for TB diagnosis are either time consuming, costly or not efficient. This study employs a signal generation mechanism for biosensing, known as Plasmonic ELISA, and computational intelligence to facilitate automatic diagnosis of TB. Plasmonic ELISA enables the detection of a few molecules of analyte by the incorporation of smart nanomaterials for better sensitivity of the developed detection system. The computational system uses k-means clustering and thresholding for image segmentation. This paper presents the results of the classification performance of the Plasmonic ELISA imaging data by using various types of classifiers. The five-fold cross-validation results show high accuracy rate (>97%) in classifying TB images using the entire data set. Future work will focus on developing an intelligent mobile-enabled expert system to diagnose TB in real-time. The intelligent system will be clinically validated and tested in collaboration with healthcare providers in Malaysia.
format Conference or Workshop Item
author Abuhassan, Kamal J.
Mohd Bakhori, Noremylia
Kusnin, Norzila
Mohd Azmi, Umi Zulaikha
Tania, Marzia Hoque
Evans, Benjamin Andrew
Yusof, Nor Azah
Hossain, Mohammed Alamgir
spellingShingle Abuhassan, Kamal J.
Mohd Bakhori, Noremylia
Kusnin, Norzila
Mohd Azmi, Umi Zulaikha
Tania, Marzia Hoque
Evans, Benjamin Andrew
Yusof, Nor Azah
Hossain, Mohammed Alamgir
Automatic diagnosis of tuberculosis disease based on plasmonic ELISA and color-based image classification
author_facet Abuhassan, Kamal J.
Mohd Bakhori, Noremylia
Kusnin, Norzila
Mohd Azmi, Umi Zulaikha
Tania, Marzia Hoque
Evans, Benjamin Andrew
Yusof, Nor Azah
Hossain, Mohammed Alamgir
author_sort Abuhassan, Kamal J.
title Automatic diagnosis of tuberculosis disease based on plasmonic ELISA and color-based image classification
title_short Automatic diagnosis of tuberculosis disease based on plasmonic ELISA and color-based image classification
title_full Automatic diagnosis of tuberculosis disease based on plasmonic ELISA and color-based image classification
title_fullStr Automatic diagnosis of tuberculosis disease based on plasmonic ELISA and color-based image classification
title_full_unstemmed Automatic diagnosis of tuberculosis disease based on plasmonic ELISA and color-based image classification
title_sort automatic diagnosis of tuberculosis disease based on plasmonic elisa and color-based image classification
publisher IEEE
publishDate 2017
url http://psasir.upm.edu.my/id/eprint/65347/1/65347.pdf
http://psasir.upm.edu.my/id/eprint/65347/
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