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Original Articles

Automatic detection of age-related macular degeneration pathologies in retinal fundus images

Pages 425-434 | Received 28 Jul 2011, Accepted 12 Sep 2011, Published online: 29 Feb 2012
 

Abstract

Advanced techniques in image processing and analysis are being extensively studied to assist clinical diagnoses. Digital colour retinal fundus images are widely utilised to investigate various eye diseases. In this paper, we describe the detection of optic disc (OD), macula and age-related macular degeneration (ARMD) pathologies of the macular regions in colour fundus images. ARMD causes the loss of central vision in older adults. If the disease is detected early and treated promptly, much of the vision loss can be prevented. Eighty colour retinal fundus images were tested using our proposed algorithm. The Hough transform was employed for OD determination. A fundus coordinate system was established based on the macula location. An ARMD pathology detection methodology using a subtraction process after contrast-limited adaptive histogram equalisation operations was proposed. The accuracies of the automated segmentations of the OD, macula and ARMD pathologies obtained were 100%, 100% and 95.49%, respectively. These results show that our algorithm is a useful tool for detecting ARMD in retinal fundus images. The application of our method may reduce the time needed by ophthalmologists to diagnose ARMD pathology while providing dependable detection precision. Integration of our technique into traditional software could be used in clinical implementations as an aid in disease diagnosis and as a tool for quantitative evaluation of treatment effectiveness.

Acknowledgements

The author would like to thank Dr Ayşe Öztürk Öner, an ophthalmologist at Erciyes University hospital, for her valuable technical assistance.

Conflict of interest statement: I certify that there is no conflict of interest with any financial organisation regarding the material discussed in the manuscript.

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