IVCVLGDec 23, 2020

Diabetic Retinopathy Grading System Based on Transfer Learning

arXiv:2012.12515v113 citations
AI Analysis

This system aims to provide an automated, accurate diagnosis of diabetic retinopathy for ophthalmologists, potentially preventing blindness.

This paper presents a deep learning-based CAD system utilizing a customized EfficientNet model for multi-label classification of diabetic retinopathy (DR) grades. The system achieved an accuracy of 86% and a Dice similarity coefficient of 78.45% on the IDRiD dataset for detecting and grading DR.

Much effort is being made by the researchers in order to detect and diagnose diabetic retinopathy (DR) accurately automatically. The disease is very dangerous as it can cause blindness suddenly if it is not continuously screened. Therefore, many computers aided diagnosis (CAD) systems have been developed to diagnose the various DR grades. Recently, many CAD systems based on deep learning (DL) methods have been adopted to get deep learning merits in diagnosing the pathological abnormalities of DR disease. In this paper, we present a full based-DL CAD system depending on multi-label classification. In the proposed DL CAD system, we present a customized efficientNet model in order to diagnose the early and advanced grades of the DR disease. Learning transfer is very useful in training small datasets. We utilized IDRiD dataset. It is a multi-label dataset. The experiments manifest that the proposed DL CAD system is robust, reliable, and deigns promising results in detecting and grading DR. The proposed system achieved accuracy (ACC) equals 86%, and the Dice similarity coefficient (DSC) equals 78.45.

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