Early detection of pulmonary vessel nodule in low dose CT image using local adaptive thresholding / Sufia Mohd Hizam, Noor Shafini Mohamad

Small lung nodules are very subtle in the medical images, and less than 30% of them are connected to the pulmonary vessels. Most of the time, the findings of this disease are not optimal at the early stages. These small lung nodules have similar HU values as pulmonary vessels, therefore, making it a...

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Main Authors: Mohd Hizam, Sufia, Mohamad, Noor Shafini
Format: Article
Language:English
Published: Faculty of Health Sciences, Universiti Teknologi MARA 2020
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Online Access:https://ir.uitm.edu.my/id/eprint/64812/1/64812.pdf
https://ir.uitm.edu.my/id/eprint/64812/
http://healthscopefsk.com/
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spelling my.uitm.ir.648122022-08-05T07:42:51Z https://ir.uitm.edu.my/id/eprint/64812/ Early detection of pulmonary vessel nodule in low dose CT image using local adaptive thresholding / Sufia Mohd Hizam, Noor Shafini Mohamad Mohd Hizam, Sufia Mohamad, Noor Shafini Diseases of the circulatory (Cardiovascular) system Examination. Diagnosis. Including radiography Small lung nodules are very subtle in the medical images, and less than 30% of them are connected to the pulmonary vessels. Most of the time, the findings of this disease are not optimal at the early stages. These small lung nodules have similar HU values as pulmonary vessels, therefore, making it a challenge to separate these nodules. This study aimed to segment and suppress pulmonary vessels and detected nodules to improve the accuracy of diagnosing lung cancer by using local adaptive thresholding. This proposed framework consisted of the image enhancement process and three segmentation stages. Contrast stretching, median filter combined with closing morphological operator, and unsharp masking were employed to make the image more appealing. The first stage of image segmentation was extracting lung from the parenchyma by using a fast marching method and active contour. The second stage was to extract pulmonary vessels and nodules together using local adaptive thresholding. Extraction of the nodule from the pulmonary vessels using local adaptive thresholding was employed in the final stage. The sensitivity and specificity of this method were computed by calculating the number of pixels overlapped with the ground truth images. This proposed method presented high sensitivity and specificity for segmentation of pulmonary nodule (0.90 and 0.99) and segmentation of pulmonary vessels (0.87 and 0.99). After the suppression of the vessels, the mean CNR of the nodule increased from 3.27 to 3.61). The suppression and segmentation of pulmonary vessels in CT thorax images may reduce false-positive findings and misdiagnosis due to human error. Hence, the early discovery of lung nodules can reduce about half of the mortality rate. Faculty of Health Sciences, Universiti Teknologi MARA 2020-09 Article PeerReviewed text en https://ir.uitm.edu.my/id/eprint/64812/1/64812.pdf Early detection of pulmonary vessel nodule in low dose CT image using local adaptive thresholding / Sufia Mohd Hizam, Noor Shafini Mohamad. (2020) Health Scope, 3 (3). pp. 12-17. ISSN 2735-0649 http://healthscopefsk.com/
institution Universiti Teknologi Mara
building Tun Abdul Razak Library
collection Institutional Repository
continent Asia
country Malaysia
content_provider Universiti Teknologi Mara
content_source UiTM Institutional Repository
url_provider http://ir.uitm.edu.my/
language English
topic Diseases of the circulatory (Cardiovascular) system
Examination. Diagnosis. Including radiography
spellingShingle Diseases of the circulatory (Cardiovascular) system
Examination. Diagnosis. Including radiography
Mohd Hizam, Sufia
Mohamad, Noor Shafini
Early detection of pulmonary vessel nodule in low dose CT image using local adaptive thresholding / Sufia Mohd Hizam, Noor Shafini Mohamad
description Small lung nodules are very subtle in the medical images, and less than 30% of them are connected to the pulmonary vessels. Most of the time, the findings of this disease are not optimal at the early stages. These small lung nodules have similar HU values as pulmonary vessels, therefore, making it a challenge to separate these nodules. This study aimed to segment and suppress pulmonary vessels and detected nodules to improve the accuracy of diagnosing lung cancer by using local adaptive thresholding. This proposed framework consisted of the image enhancement process and three segmentation stages. Contrast stretching, median filter combined with closing morphological operator, and unsharp masking were employed to make the image more appealing. The first stage of image segmentation was extracting lung from the parenchyma by using a fast marching method and active contour. The second stage was to extract pulmonary vessels and nodules together using local adaptive thresholding. Extraction of the nodule from the pulmonary vessels using local adaptive thresholding was employed in the final stage. The sensitivity and specificity of this method were computed by calculating the number of pixels overlapped with the ground truth images. This proposed method presented high sensitivity and specificity for segmentation of pulmonary nodule (0.90 and 0.99) and segmentation of pulmonary vessels (0.87 and 0.99). After the suppression of the vessels, the mean CNR of the nodule increased from 3.27 to 3.61). The suppression and segmentation of pulmonary vessels in CT thorax images may reduce false-positive findings and misdiagnosis due to human error. Hence, the early discovery of lung nodules can reduce about half of the mortality rate.
format Article
author Mohd Hizam, Sufia
Mohamad, Noor Shafini
author_facet Mohd Hizam, Sufia
Mohamad, Noor Shafini
author_sort Mohd Hizam, Sufia
title Early detection of pulmonary vessel nodule in low dose CT image using local adaptive thresholding / Sufia Mohd Hizam, Noor Shafini Mohamad
title_short Early detection of pulmonary vessel nodule in low dose CT image using local adaptive thresholding / Sufia Mohd Hizam, Noor Shafini Mohamad
title_full Early detection of pulmonary vessel nodule in low dose CT image using local adaptive thresholding / Sufia Mohd Hizam, Noor Shafini Mohamad
title_fullStr Early detection of pulmonary vessel nodule in low dose CT image using local adaptive thresholding / Sufia Mohd Hizam, Noor Shafini Mohamad
title_full_unstemmed Early detection of pulmonary vessel nodule in low dose CT image using local adaptive thresholding / Sufia Mohd Hizam, Noor Shafini Mohamad
title_sort early detection of pulmonary vessel nodule in low dose ct image using local adaptive thresholding / sufia mohd hizam, noor shafini mohamad
publisher Faculty of Health Sciences, Universiti Teknologi MARA
publishDate 2020
url https://ir.uitm.edu.my/id/eprint/64812/1/64812.pdf
https://ir.uitm.edu.my/id/eprint/64812/
http://healthscopefsk.com/
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