Using Deep Learning Architectures for Detection and Classification of Diabetic Retinopathy

Author:

Mohanty Cheena1,Mahapatra Sakuntala2,Acharya Biswaranjan3ORCID,Kokkoras Fotis4ORCID,Gerogiannis Vassilis C.4ORCID,Karamitsos Ioannis5ORCID,Kanavos Andreas6ORCID

Affiliation:

1. Department of Electronics and Telecommunication, Biju Patnaik University of Technology, Rourkela 769012, Odisha, India

2. Department of Electronics and Telecommunication Engineering, Trident Academy of Technology, Bhubaneswar 751016, Odisha, India

3. Department of Computer Engineering-AI, Marwadi University, Rajkot 360003, Gujarat, India

4. Department of Digital Systems, University of Thessaly, 41500 Larissa, Greece

5. Department of Graduate and Research, Rochester Institute of Technology, Dubai 341055, United Arab Emirates

6. Department of Informatics, Ionian University, 49100 Corfu, Greece

Abstract

Diabetic retinopathy (DR) is a common complication of long-term diabetes, affecting the human eye and potentially leading to permanent blindness. The early detection of DR is crucial for effective treatment, as symptoms often manifest in later stages. The manual grading of retinal images is time-consuming, prone to errors, and lacks patient-friendliness. In this study, we propose two deep learning (DL) architectures, a hybrid network combining VGG16 and XGBoost Classifier, and the DenseNet 121 network, for DR detection and classification. To evaluate the two DL models, we preprocessed a collection of retinal images obtained from the APTOS 2019 Blindness Detection Kaggle Dataset. This dataset exhibits an imbalanced image class distribution, which we addressed through appropriate balancing techniques. The performance of the considered models was assessed in terms of accuracy. The results showed that the hybrid network achieved an accuracy of 79.50%, while the DenseNet 121 model achieved an accuracy of 97.30%. Furthermore, a comparative analysis with existing methods utilizing the same dataset revealed the superior performance of the DenseNet 121 network. The findings of this study demonstrate the potential of DL architectures for the early detection and classification of DR. The superior performance of the DenseNet 121 model highlights its effectiveness in this domain. The implementation of such automated methods can significantly improve the efficiency and accuracy of DR diagnosis, benefiting both healthcare providers and patients.

Publisher

MDPI AG

Subject

Electrical and Electronic Engineering,Biochemistry,Instrumentation,Atomic and Molecular Physics, and Optics,Analytical Chemistry

Reference75 articles.

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2. Global and Regional Diabetes Prevalence Estimates for 2019 and Projections for 2030 and 2045: Results from the International Diabetes Federation Diabetes Atlas;Saeedi;Diabetes Res. Clin. Pract.,2019

3. Epidemiology of Type 2 Diabetes in India;Pradeepa;Indian J. Ophthalmol.,2021

4. (2023, March 27). IDF Diabetes Atlas. Available online: https://diabetesatlas.org/atlas/ninth-edition.

5. Chandrasekharan Kartha, C., Ramachandran, S., and Pillai, R.M. (2017). Mechanisms of Vascular Defects in Diabetes Mellitus, Springer. Advances in Biochemistry in Health and Disease.

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