Application of higher-order spectra for automated grading of diabetic maculopathy

Diabetic macular edema (DME) is one of the most common causes of visual loss among diabetes mellitus patients. Early detection and successive treatment may improve the visual acuity. DME is mainly graded into non-clinically significant macular edema (NCSME) and clinically significant macular edema a...

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Main Authors: Mookiah, M.R.K., Acharya, U.R., Chandran, V., Martis, R.J., Tan, J.H., Koh, J.E.W., Chua, C.K., Tong, L., Laude, A.
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Published: 2015
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Online Access:http://eprints.um.edu.my/16529/
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Institution: Universiti Malaya
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spelling my.um.eprints.165292016-09-29T01:25:16Z http://eprints.um.edu.my/16529/ Application of higher-order spectra for automated grading of diabetic maculopathy Mookiah, M.R.K. Acharya, U.R. Chandran, V. Martis, R.J. Tan, J.H. Koh, J.E.W. Chua, C.K. Tong, L. Laude, A. QA75 Electronic computers. Computer science Diabetic macular edema (DME) is one of the most common causes of visual loss among diabetes mellitus patients. Early detection and successive treatment may improve the visual acuity. DME is mainly graded into non-clinically significant macular edema (NCSME) and clinically significant macular edema according to the location of hard exudates in the macula region. DME can be identified by manual examination of fundus images. It is laborious and resource intensive. Hence, in this work, automated grading of DME is proposed using higher-order spectra (HOS) of Radon transform projections of the fundus images. We have used third-order cumulants and bispectrum magnitude, in this work, as features, and compared their performance. They can capture subtle changes in the fundus image. Spectral regression discriminant analysis (SRDA) reduces feature dimension, and minimum redundancy maximum relevance method is used to rank the significant SRDA components. Ranked features are fed to various supervised classifiers, viz. Naive Bayes, AdaBoost and support vector machine, to discriminate No DME, NCSME and clinically significant macular edema classes. The performance of our system is evaluated using the publicly available MESSIDOR dataset (300 images) and also verified with a local dataset (300 images). Our results show that HOS cumulants and bispectrum magnitude obtained an average accuracy of 95.56 and 94.39 % for MESSIDOR dataset and 95.93 and 93.33 % for local dataset, respectively. 2015 Article PeerReviewed Mookiah, M.R.K. and Acharya, U.R. and Chandran, V. and Martis, R.J. and Tan, J.H. and Koh, J.E.W. and Chua, C.K. and Tong, L. and Laude, A. (2015) Application of higher-order spectra for automated grading of diabetic maculopathy. Medical & Biological Engineering & Computing, 53 (12, SI). pp. 1319-1331. ISSN 0140-0118 DOI: 10.1007/s11517-015-1278-7
institution Universiti Malaya
building UM Library
collection Institutional Repository
continent Asia
country Malaysia
content_provider Universiti Malaya
content_source UM Research Repository
url_provider http://eprints.um.edu.my/
topic QA75 Electronic computers. Computer science
spellingShingle QA75 Electronic computers. Computer science
Mookiah, M.R.K.
Acharya, U.R.
Chandran, V.
Martis, R.J.
Tan, J.H.
Koh, J.E.W.
Chua, C.K.
Tong, L.
Laude, A.
Application of higher-order spectra for automated grading of diabetic maculopathy
description Diabetic macular edema (DME) is one of the most common causes of visual loss among diabetes mellitus patients. Early detection and successive treatment may improve the visual acuity. DME is mainly graded into non-clinically significant macular edema (NCSME) and clinically significant macular edema according to the location of hard exudates in the macula region. DME can be identified by manual examination of fundus images. It is laborious and resource intensive. Hence, in this work, automated grading of DME is proposed using higher-order spectra (HOS) of Radon transform projections of the fundus images. We have used third-order cumulants and bispectrum magnitude, in this work, as features, and compared their performance. They can capture subtle changes in the fundus image. Spectral regression discriminant analysis (SRDA) reduces feature dimension, and minimum redundancy maximum relevance method is used to rank the significant SRDA components. Ranked features are fed to various supervised classifiers, viz. Naive Bayes, AdaBoost and support vector machine, to discriminate No DME, NCSME and clinically significant macular edema classes. The performance of our system is evaluated using the publicly available MESSIDOR dataset (300 images) and also verified with a local dataset (300 images). Our results show that HOS cumulants and bispectrum magnitude obtained an average accuracy of 95.56 and 94.39 % for MESSIDOR dataset and 95.93 and 93.33 % for local dataset, respectively.
format Article
author Mookiah, M.R.K.
Acharya, U.R.
Chandran, V.
Martis, R.J.
Tan, J.H.
Koh, J.E.W.
Chua, C.K.
Tong, L.
Laude, A.
author_facet Mookiah, M.R.K.
Acharya, U.R.
Chandran, V.
Martis, R.J.
Tan, J.H.
Koh, J.E.W.
Chua, C.K.
Tong, L.
Laude, A.
author_sort Mookiah, M.R.K.
title Application of higher-order spectra for automated grading of diabetic maculopathy
title_short Application of higher-order spectra for automated grading of diabetic maculopathy
title_full Application of higher-order spectra for automated grading of diabetic maculopathy
title_fullStr Application of higher-order spectra for automated grading of diabetic maculopathy
title_full_unstemmed Application of higher-order spectra for automated grading of diabetic maculopathy
title_sort application of higher-order spectra for automated grading of diabetic maculopathy
publishDate 2015
url http://eprints.um.edu.my/16529/
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