Calculation of sharpness in lung images of pleural effusion patients and normal lung images using the thresholding segmentation method

<p>Research on the calculation of tapering from lung's images of patients with pleural effusion and normal lungs has been carrying out using the thresholding segmentation method. The tapering calculation was done using the Matlab programming language by applying the thresholding segmentat...

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Main Authors: Indah Nurhidayati, Sinta M Siagian
Format: Article
Language:English
Published: Universitas Sultan Ageng Tirtayasa 2020-08-01
Series:Gravity: Jurnal Ilmiah Penelitian dan Pembelajaran Fisika
Subjects:
Online Access:http://jurnal.untirta.ac.id/index.php/Gravity/article/view/8384
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spelling doaj-fad62e12c8c94c318726673177d765822020-11-25T03:23:25ZengUniversitas Sultan Ageng TirtayasaGravity: Jurnal Ilmiah Penelitian dan Pembelajaran Fisika2442-515X2528-19762020-08-016210.30870/gravity.v6i2.83845811Calculation of sharpness in lung images of pleural effusion patients and normal lung images using the thresholding segmentation methodIndah Nurhidayati0Sinta M Siagian1Department of Physics, Institut Teknologi dan Sains Nahdlatul Ulama PekalonganDepartment of Electrical Engineering, Politeknik Negeri Medan<p>Research on the calculation of tapering from lung's images of patients with pleural effusion and normal lungs has been carrying out using the thresholding segmentation method. The tapering calculation was done using the Matlab programming language by applying the thresholding segmentation method's image processing theory. Images sharpness was obtaining from calculating the longest distance from all distances that were searching in the program. The steps taken in this research were image quality improvement, determination of the region of interest (ROI), thresholding segmentation, and calculating the tilt. Taper count was performing on eight lung images identified pleural effusion and eight lung images identified as normal. In 8 images of lungs pleural effusions, each taper was obtained 166; 159; 167; 167; 150; 157; 114; and 149. Whereas in 8 images of normal lungs, it was obtained that the respective curls were 187; 174; 181; 198; 199; 195; 179; and 195. The analysis showed that the lung's images of pleural effusion patients had a tapering of less than 171. In contrast, normal lung images had a tapering of more than 171, so that one characteristic was obtained that could distinguish between normal lungs and pleural effusions. It can facilitate medical personnel in the early detection of pleural effusion patients so that they can be handled quickly and accurately.</p>http://jurnal.untirta.ac.id/index.php/Gravity/article/view/8384pleural effusiontaperingthresholding segmentation
collection DOAJ
language English
format Article
sources DOAJ
author Indah Nurhidayati
Sinta M Siagian
spellingShingle Indah Nurhidayati
Sinta M Siagian
Calculation of sharpness in lung images of pleural effusion patients and normal lung images using the thresholding segmentation method
Gravity: Jurnal Ilmiah Penelitian dan Pembelajaran Fisika
pleural effusion
tapering
thresholding segmentation
author_facet Indah Nurhidayati
Sinta M Siagian
author_sort Indah Nurhidayati
title Calculation of sharpness in lung images of pleural effusion patients and normal lung images using the thresholding segmentation method
title_short Calculation of sharpness in lung images of pleural effusion patients and normal lung images using the thresholding segmentation method
title_full Calculation of sharpness in lung images of pleural effusion patients and normal lung images using the thresholding segmentation method
title_fullStr Calculation of sharpness in lung images of pleural effusion patients and normal lung images using the thresholding segmentation method
title_full_unstemmed Calculation of sharpness in lung images of pleural effusion patients and normal lung images using the thresholding segmentation method
title_sort calculation of sharpness in lung images of pleural effusion patients and normal lung images using the thresholding segmentation method
publisher Universitas Sultan Ageng Tirtayasa
series Gravity: Jurnal Ilmiah Penelitian dan Pembelajaran Fisika
issn 2442-515X
2528-1976
publishDate 2020-08-01
description <p>Research on the calculation of tapering from lung's images of patients with pleural effusion and normal lungs has been carrying out using the thresholding segmentation method. The tapering calculation was done using the Matlab programming language by applying the thresholding segmentation method's image processing theory. Images sharpness was obtaining from calculating the longest distance from all distances that were searching in the program. The steps taken in this research were image quality improvement, determination of the region of interest (ROI), thresholding segmentation, and calculating the tilt. Taper count was performing on eight lung images identified pleural effusion and eight lung images identified as normal. In 8 images of lungs pleural effusions, each taper was obtained 166; 159; 167; 167; 150; 157; 114; and 149. Whereas in 8 images of normal lungs, it was obtained that the respective curls were 187; 174; 181; 198; 199; 195; 179; and 195. The analysis showed that the lung's images of pleural effusion patients had a tapering of less than 171. In contrast, normal lung images had a tapering of more than 171, so that one characteristic was obtained that could distinguish between normal lungs and pleural effusions. It can facilitate medical personnel in the early detection of pleural effusion patients so that they can be handled quickly and accurately.</p>
topic pleural effusion
tapering
thresholding segmentation
url http://jurnal.untirta.ac.id/index.php/Gravity/article/view/8384
work_keys_str_mv AT indahnurhidayati calculationofsharpnessinlungimagesofpleuraleffusionpatientsandnormallungimagesusingthethresholdingsegmentationmethod
AT sintamsiagian calculationofsharpnessinlungimagesofpleuraleffusionpatientsandnormallungimagesusingthethresholdingsegmentationmethod
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