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Automatic recognition of severity level for diagnosis of diabetic retinopathy using deep visual features

Author Affiliations
Imam Mohammad ibn Saud Islamic University, Islamic University, Universidad de Sevilla, Hospital Universitario Puerta del Mar
Published InMedical & Biological Engineering & Computing
Year2017
Citations152

Abstract

Diabetic retinopathy (DR) is leading cause of blindness among diabetic patients. Recognition of severity level is required by ophthalmologists to early detect and diagnose the DR. However, it is a challenging task for both medical experts and computer-aided diagnosis systems due to requiring extensive domain expert knowledge. In this article, a novel automatic recognition system for the five severity level of diabetic retinopathy (SLDR) is developed without performing any pre- and post-processing steps on retinal fundus images through learning of deep visual features (DVFs). These DVF features are extracted from each image by using color dense in scale-invariant and gradient location-orientation histogram techniques. To learn these DVF features, a semi-supervised multilayer deep-learning algorithm is utilized along with a new compressed…
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