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IJSTR >> Volume 9 - Issue 3, March 2020 Edition



International Journal of Scientific & Technology Research  
International Journal of Scientific & Technology Research

Website: http://www.ijstr.org

ISSN 2277-8616



Diabetic Retinopathy Detection & Classification Techniques: A Review

[Full Text]

 

AUTHOR(S)

Anil Kumar K.R., Megha P.M., Meenakshy K.

 

KEYWORDS

Blood vessels, Diabetic retinopathy, Exudates, Hemorrhages, Microaneurysms, Non-proliferative diabetic retinopathy, Proliferative diabetic retinopathy

 

ABSTRACT

Diabetic retinopathy (DR) – one of the most common reasons for blindness in modern days- is a visual disorder. DR is caused due to long-standing untreated diabetics, which in turn damage the retina cells. It takes place when pancreas cannot produce insulin sufficiently or body can’t utilize the produced insulin effectively. Early identification and proper treatment of DR can lower the loss of sight of patients. Diagnosis of DR is a vigorous process that include large amount of clinical study, which involves large amount of time, money and resources. The number of DR affected patients is much greater than the number of practitioners. So manual clinical diagnosis or screening takes considerable amount of time. Therefore, in order to keep away from such difficulty, follow-up screening is done regularly and automatic DR detection and severity classification are essential. Here several techniques for retinopathy detection and classification of its severity levels are discussed.

 

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