Classification of eye abnormality using statistical parameters in texture features of corneal arcus image
The corneal arcus (CA), is the white-gray sediments, exist within the iris-limbus like a circle ring, caused by the occurrence of lipid disorder, in the bloodstream. This sign shows, the indication to diseases such as the coronary heart disease, diabetes, and hypertension. This paper demonstrates th...
Main Authors: | , , , , |
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Format: | Article |
Language: | English |
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American Scientific Publishers
2018
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Online Access: | http://psasir.upm.edu.my/id/eprint/73406/1/CORNEAL.pdf |
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author | Ramli, Abdul Rahman Hanafi, Marsyita Ramlee, Ridza Azri Mohd Noh, Zarina Khmag, Asem |
author_facet | Ramli, Abdul Rahman Hanafi, Marsyita Ramlee, Ridza Azri Mohd Noh, Zarina Khmag, Asem |
author_sort | Ramli, Abdul Rahman |
collection | UPM |
description | The corneal arcus (CA), is the white-gray sediments, exist within the iris-limbus like a circle ring, caused by the occurrence of lipid disorder, in the bloodstream. This sign shows, the indication to diseases such as the coronary heart disease, diabetes, and hypertension. This paper demonstrates the classification of the CA as an indicator of hyperlipidemia. The experiment, uses two sets of sample data, consisting of the normal and abnormal eyes (i.e., CA), for classifies each group. The step for this classification, begin with the normalization of the eye images (as part of pre-processing), to achieve the region of interest (ROI). The next process is to extract the image texture using the grey level co-occurrence matrix (GLCM) technique, and calculate the extraction of the image texture using the statistical method. These features, then will be fed into the classifier, as the input for several processes, namely as the data training, data testing and validation data. In these experiments, we have obtained the excellent result using the proposed framework. This proves that, by using a Bayesian regularization (BR) classifier, the results of this classification given by the sensitivity (94%), specificity (100%), and accuracy (97.78%). Applications/Improvements: Based on the results obtained, the proposed system is successfully to classify the images with the CA signs. This show that, this proposed method can be applied to identify the presence of the hypercholesterolemia in a non-invasive test, to classify and detect the image of the CA. |
first_indexed | 2024-03-06T10:10:50Z |
format | Article |
id | upm.eprints-73406 |
institution | Universiti Putra Malaysia |
language | English |
last_indexed | 2024-03-06T10:10:50Z |
publishDate | 2018 |
publisher | American Scientific Publishers |
record_format | dspace |
spelling | upm.eprints-734062020-11-10T07:46:10Z http://psasir.upm.edu.my/id/eprint/73406/ Classification of eye abnormality using statistical parameters in texture features of corneal arcus image Ramli, Abdul Rahman Hanafi, Marsyita Ramlee, Ridza Azri Mohd Noh, Zarina Khmag, Asem The corneal arcus (CA), is the white-gray sediments, exist within the iris-limbus like a circle ring, caused by the occurrence of lipid disorder, in the bloodstream. This sign shows, the indication to diseases such as the coronary heart disease, diabetes, and hypertension. This paper demonstrates the classification of the CA as an indicator of hyperlipidemia. The experiment, uses two sets of sample data, consisting of the normal and abnormal eyes (i.e., CA), for classifies each group. The step for this classification, begin with the normalization of the eye images (as part of pre-processing), to achieve the region of interest (ROI). The next process is to extract the image texture using the grey level co-occurrence matrix (GLCM) technique, and calculate the extraction of the image texture using the statistical method. These features, then will be fed into the classifier, as the input for several processes, namely as the data training, data testing and validation data. In these experiments, we have obtained the excellent result using the proposed framework. This proves that, by using a Bayesian regularization (BR) classifier, the results of this classification given by the sensitivity (94%), specificity (100%), and accuracy (97.78%). Applications/Improvements: Based on the results obtained, the proposed system is successfully to classify the images with the CA signs. This show that, this proposed method can be applied to identify the presence of the hypercholesterolemia in a non-invasive test, to classify and detect the image of the CA. American Scientific Publishers 2018 Article PeerReviewed text en http://psasir.upm.edu.my/id/eprint/73406/1/CORNEAL.pdf Ramli, Abdul Rahman and Hanafi, Marsyita and Ramlee, Ridza Azri and Mohd Noh, Zarina and Khmag, Asem (2018) Classification of eye abnormality using statistical parameters in texture features of corneal arcus image. Advanced Science Letters, 24 (6). 4063 - 4069. ISSN 1936-6612; ESSN: 1936-7317 https://www.ingentaconnect.com/contentone/asp/asl/2018/00000024/00000006/art00052 10.1166/asl.2018.11542 |
spellingShingle | Ramli, Abdul Rahman Hanafi, Marsyita Ramlee, Ridza Azri Mohd Noh, Zarina Khmag, Asem Classification of eye abnormality using statistical parameters in texture features of corneal arcus image |
title | Classification of eye abnormality using statistical parameters in texture features of corneal arcus image |
title_full | Classification of eye abnormality using statistical parameters in texture features of corneal arcus image |
title_fullStr | Classification of eye abnormality using statistical parameters in texture features of corneal arcus image |
title_full_unstemmed | Classification of eye abnormality using statistical parameters in texture features of corneal arcus image |
title_short | Classification of eye abnormality using statistical parameters in texture features of corneal arcus image |
title_sort | classification of eye abnormality using statistical parameters in texture features of corneal arcus image |
url | http://psasir.upm.edu.my/id/eprint/73406/1/CORNEAL.pdf |
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