Segmentation of pulmonary cavity in lung CT scan for tuberculosis disease

The complexity of pulmonary tuberculosis (TB) lung cavity lesion features significantly increase the cost of semantic segmentation and labelling. However, the high cost of semantic segmentation has limited the development of TB automatic recognition to some extent. To address this issue, we develope...

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Main Authors: Tan, Zhuoyi, Madzin, Hizmawati, Khalid, Fatimah, Beng, Ng Seng
Format: Article
Language:English
Published: Semarak Ilmu Publishing 2024
Online Access:http://psasir.upm.edu.my/id/eprint/105835/1/ARASETV33_N2_P98_106.pdf
http://psasir.upm.edu.my/id/eprint/105835/
https://semarakilmu.com.my/journals/index.php/applied_sciences_eng_tech/article/view/3068
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Institution: Universiti Putra Malaysia
Language: English
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spelling my.upm.eprints.1058352024-07-12T08:13:08Z http://psasir.upm.edu.my/id/eprint/105835/ Segmentation of pulmonary cavity in lung CT scan for tuberculosis disease Tan, Zhuoyi Madzin, Hizmawati Khalid, Fatimah Beng, Ng Seng The complexity of pulmonary tuberculosis (TB) lung cavity lesion features significantly increase the cost of semantic segmentation and labelling. However, the high cost of semantic segmentation has limited the development of TB automatic recognition to some extent. To address this issue, we developed an algorithm that automatically generates a semantic segmentation mask of TB from the TB target detection boundary box. Pulmonologists only need to identify and label the location of TB, and the algorithm can automatically generate the semantic segmentation mask of TB lesions in the labelled area. The algorithm, first, calculates the optimal threshold for separating the lesion from the background region. Then, based on this threshold, the lesion tissue within the bounding box is extracted and forms a mask that can be used for semantic segmentation tasks. Finally, we use the generated TB semantic segmentation mask to train Unet and Vnet models to verify the effectiveness of the algorithm. The experimental results demonstrate that Unet and Vnet achieve mean Dice coefficients of 0.612 and 0.637, respectively, in identifying TB lesion tissue. Semarak Ilmu Publishing 2024 Article PeerReviewed text en http://psasir.upm.edu.my/id/eprint/105835/1/ARASETV33_N2_P98_106.pdf Tan, Zhuoyi and Madzin, Hizmawati and Khalid, Fatimah and Beng, Ng Seng (2024) Segmentation of pulmonary cavity in lung CT scan for tuberculosis disease. Journal of Advanced Research in Applied Sciences and Engineering Technology, 33 (2). pp. 98-106. ISSN 2462-1943 https://semarakilmu.com.my/journals/index.php/applied_sciences_eng_tech/article/view/3068 10.37934/araset.33.2.98106
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 The complexity of pulmonary tuberculosis (TB) lung cavity lesion features significantly increase the cost of semantic segmentation and labelling. However, the high cost of semantic segmentation has limited the development of TB automatic recognition to some extent. To address this issue, we developed an algorithm that automatically generates a semantic segmentation mask of TB from the TB target detection boundary box. Pulmonologists only need to identify and label the location of TB, and the algorithm can automatically generate the semantic segmentation mask of TB lesions in the labelled area. The algorithm, first, calculates the optimal threshold for separating the lesion from the background region. Then, based on this threshold, the lesion tissue within the bounding box is extracted and forms a mask that can be used for semantic segmentation tasks. Finally, we use the generated TB semantic segmentation mask to train Unet and Vnet models to verify the effectiveness of the algorithm. The experimental results demonstrate that Unet and Vnet achieve mean Dice coefficients of 0.612 and 0.637, respectively, in identifying TB lesion tissue.
format Article
author Tan, Zhuoyi
Madzin, Hizmawati
Khalid, Fatimah
Beng, Ng Seng
spellingShingle Tan, Zhuoyi
Madzin, Hizmawati
Khalid, Fatimah
Beng, Ng Seng
Segmentation of pulmonary cavity in lung CT scan for tuberculosis disease
author_facet Tan, Zhuoyi
Madzin, Hizmawati
Khalid, Fatimah
Beng, Ng Seng
author_sort Tan, Zhuoyi
title Segmentation of pulmonary cavity in lung CT scan for tuberculosis disease
title_short Segmentation of pulmonary cavity in lung CT scan for tuberculosis disease
title_full Segmentation of pulmonary cavity in lung CT scan for tuberculosis disease
title_fullStr Segmentation of pulmonary cavity in lung CT scan for tuberculosis disease
title_full_unstemmed Segmentation of pulmonary cavity in lung CT scan for tuberculosis disease
title_sort segmentation of pulmonary cavity in lung ct scan for tuberculosis disease
publisher Semarak Ilmu Publishing
publishDate 2024
url http://psasir.upm.edu.my/id/eprint/105835/1/ARASETV33_N2_P98_106.pdf
http://psasir.upm.edu.my/id/eprint/105835/
https://semarakilmu.com.my/journals/index.php/applied_sciences_eng_tech/article/view/3068
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