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A Significance Test-Based Feature Selection Method for Diabetic Retinopathy Grading

Heba A. Elnemr, Alaa A. Hefnawy

Abstract


Diabetic retinopathy is the dangerous eye disease cause the blindness in worldwide. A fundus camera provides digitized data in the form of a fundus image that can be effectively used for the computerized automated detection of diabetic retinopathy. A completely automated screening system for the disease can largely reduces the burden of the speialist and saves cost. In this article, a computerized diabetic retinopathy grading system, which digitally analyses retinal fundus image, is implemented. The proposed system proceeds on four stages. The first stage points toward reducing noise and other disturbances that occur during image acquisition and may lead to false detection of the disease. This is accomplished by using various image processing techniques. Next, different statistical texture features are extracted which serves as the guideline to identify and grade the severity of the disease. The feature extraction stage is realized in two steps. In the first step, the gray level co-occurrence matrix (GLCM) is computed to extract texture images. We used contrast, energy, homogeneity and entropy measures based on GLCM to characterize texture images. Afterward, these images are combined and the statistical properties of their intensity histograms are obtained. The statistical features extracted are the mean, standard deviation, smoothness, third moment, uniformity and entropy which signify the important texture features of the retinal image. In the third stage,  the non-parametric statistical hypothesis test, Kruskal–Wallis test, is used to select the statistical significant features that are capable to distinguish among different diabetic retinopathy classes. Finally, the selected  features are fed  into the K Nearest Neighbor (K-NN) for classification. The performance of the proposed system is evaluated by using DIARETDB0 database. The images in the dataset are classified based on the lesion type (exudates, Microaneurysms and Hemorrhages) exists into four groups. The results show that the system has high ability to correctly detect retinopathy group 2 (red small dots, hemorrhages, hard exudates, soft exudates) against other groups and has good ability to correctly detect diabetic  retinopathy of group 3 (red small dots, hemorrhages, hard exudates) against group 4 (normal).


Keywords


Diabetic Retinopathy, Gray Level Co-Occurrence Matrix, K Nearest Neighbor (K-NN), Kruskal–Wallis Test, Texture Features.

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References


Christopher E. Hann, J. Geoffrey Chase, James A. Revie, Darren Hewett and Geoffrey M. Shaw," Diabetic Retinopathy Screening Using Computer Vision," Proceedings of the 7th IFAC Symposium on Modeling and Control in Biomedical Systems, Aalborg, Denmark, August 2009.

Paul Mitchell, Suriya Foran, Tien Y Wong, Brian Chua, Ilesh Patel and Elvis Ojaimi, “Guidelines for the Management of Diabetic Retinopathy," National Health and Medical Research Council, Commonwealth of Australia 2008, Publications Number: 4176.

Michel D. Abramoff, Meindert Niemeijer, Maria S.A. Suttorp-Schulten, Max A. Viergever, Stephen R. Russell and Bram Van Ginneken, "Evaluation of a System for Automatic Detection of Diabetic Retinopathy From Color Fundus Photographs in a Large Population of Patients With Diabetes," Diabets Care, Volume 31, Number 2, February 2008.

K. Narasimhan, Neha. V. C., K. Vjayarekha, " A Review of Automated Diabetic Retinopathy Diagnosis from Fundus Image," Journal of Theoretical and Applied Information Technology, 2012, Vol. 39, No.2.

N. Patton, T. M. Aslamc, M. MacGillivrayd, I. J. Dearye, B. Dhillonb, R. H. Eikelboomf, K. Yogesana and I. J. Constablea, “Retinal Image Analysis: Concepts, Applications and Potential,” Retinal and Eye Research, vol. 25, pp. 99-127, 2006, Available: www.elsevier.com/locate/prer

R.J. Windera, P.J. Morrowb, I.N. McRitchiea, J.R. Bailie c, P.M. Hart," Algorithms for Digital Image Processing in Diabetic Retinopathy," Computerized Medical Imaging and Graphics, 2009, Elsevier Ltd.

R. Vijayamadheswaran, M.Arthanari, M.Sivakumar, "Detection of Diabetic Retinopathy Using Radial Basis Function," International Journal of Innovative Technology & Creative Engineering (ISSN: 2045-8711), Vol.1 No.1 January 2011.

A.M Aibinu, M.I Iqbal , M. Nilsson and M.J.E Salami, "Automatic Diagnosis of Diabetic Retinopathy from Fundus Images Using Digital Signal and Image Processing Techniques," Proceedings of the International Conference on Robotics, Vision, Information and Signal Processing, Penang, 28-30 November 2007, pp. 510-515.

Ricci, E. and Perfetti, R. , "Retinal Blood Vessel Segmentation Using Line Operators and Support Vector Classification," Medical Imaging, IEEE Transactions, Volume 26 , Issue 10, PP. 1357 - 1365, Oct. 2007.

Akara Sopharak, Bunyarit Uyyanonvara, Sarah Barmanb and Thomas H. Williamson, "Automatic Detection of Diabetic Retinopathy Exudates from Non-Dilated Retinal Images Using Mathematical Morphology Methods," Computerized Medical Imaging and Graphics 32, pp. 720–727, 2008, Elsevier Ltd.

Saiprasad Ravishankar, Arpit Jain and Anurag Mittal, "Automated Feature Extraction for Early Detection of Diabetic Retinopathy in Fundus Images," Computer Vision and Pattern Recognition, 2009. CVPR 2009. IEEE Conference on 20-25 June 2009.

Christopher E. Hann, J. Geoffrey Chase, James A. Revie, Darren Hewett and Geoffrey M. Shaw " Diabetic Retinopathy Screening Using Computer Vision," Proceedings of the 7th IFAC Symposium on Modeling and Control in Biomedical Systems, Aalborg, Denmark, August 2009.

Kanika Verma, Prakash Deep and A. G. Ramakrishnan, "Detection and Classification of Diabetic Retinopathy Using Retinal Images," India Conference (INDICON), 2011 Annual IEEE, Dec. 2011.

Shirin HajebMohammad Alipour, Hossein Rabbani and Mohammad Reza Akhlaghi, "Diabetic Retinopathy Grading by Digital Curvelet Transform," Computational and Mathematical Methods in Medicine, 2012.

Maede Madanian, Abbas Vafaei and S. Amirhassan Monadjemi, "Texture Feature Extraction Inspired by Natural Vision System and HMAX Algorithm," Journal of Academic and Applied Studies, Vol. 2(4) April 2012, pp. 12-21.

J. S. Weszka, C. R. Dyer, and A. Rosenfeld., "A Comparative Study of Texture Measures for Terrain Classification," IEEE Trans. on SMC, SMC-6(4):269–285, April 1976.

Lim, Jae S., "Two-Dimensional Signal and Image Processing," Englewood Cliffs, NJ, Prentice Hall, 1990.

K. Shanmugam R. M. Haralick and I. H. Dinstein, "Textural Features for Image Classification," IEEE Transactions on Systems, Man and Cybernetics 3 (1973), 610-621.

R. C. Gonzalez and R. E. Woods, "Digital Image Processing (3rd Edition)". Upper Saddle River, NJ, USA: Prentice-Hall, Inc., 2006.

S. Yvan, I. Inaki, and L. Pedro, "A Review of Feature Selection Techniques in Bioinformatics," Bioinformatics, Vol. 23 no. 19, 2007, pp. 2507–2517.

T. Kauppi, V. Kalesnykiene, J. K. Kamarainen, L. Lensu, I. Sorri, H. Uusitalo, H. Kalviainen, and J. Pietila., "Diaretdb0: Evaluation Database and Methodology for Diabetic Retinopathy Algorithms. Technical Report," Lappeenranta University of Technology, Lappeenranta, Finland, 2006.


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