Litcius/Paper detail

A deep transfer learning approach for identification of diabetic retinopathy using data augmentation

Yerrarapu Sravani Devi, S. Phani Kumar

2022IAES International Journal of Artificial Intelligence19 citationsDOIOpen Access PDF

Abstract

In ophthalmology, deep learning acts as a computer-based tool with numerous potential capabilities and efficacy. Throughout the world, diabetic retinopathy (DR) is considered as a principal cause of disease however loss of sight cannot be seen in adults aged 20-74 years. The primary objective for early detection of DR is screening on a regular basis at separate intervals which should have a time difference of every ten to twenty months for the patients with no or mild case of DR. Regular screening plays a major role to prevent vision loss, the expected cases increase from 415 million in 2015 to 642 million in 2040 means is a challenging task of ophthalmologists to do screening and follow-up representations. In this research, a transfer learning model was proposed with data augmentation techniques and gaussian-blur, circle-crop pre-processing techniques combination to identify every stage of DR using Resnet 50 with top layers. Models are prepared with Kaggle Asia Pacific Tele-Ophthalmology Society blindness dataset on a top line graphical processing data. The result depicts- the comparison of classification metrics using synthetic and non-synthetic images and achieve accuracy of 91% using the synthetic data and 86% accuracy without using synthetic data.

Topics & Concepts

Computer scienceDiabetic retinopathyArtificial intelligenceBlindnessDeep learningTransfer of learningTask (project management)OptometryMachine learningMedicineEndocrinologyDiabetes mellitusManagementEconomicsRetinal Imaging and AnalysisArtificial Intelligence in HealthcareMedical Imaging and Analysis