A Deep Learning Grading Classification of Diabetic Retinopathy on Retinal Fundus Images with Bio-inspired Optimization

Diabetic Retinopathy (DR) is considered the major cause of impaired vision for diabetic patients, particularly in developing counties. Treatment includes maintaining the patient’s present grade of vision as the illness can be irreparable. Initial recognition of DR is highly important to effectively...

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Main Authors: Radhakrishnan Ramesh, Selvarajan Sathiamoorthy
Format: Article
Language:English
Published: D. G. Pylarinos 2023-08-01
Series:Engineering, Technology & Applied Science Research
Subjects:
Online Access:https://etasr.com/index.php/ETASR/article/view/6033
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author Radhakrishnan Ramesh
Selvarajan Sathiamoorthy
author_facet Radhakrishnan Ramesh
Selvarajan Sathiamoorthy
author_sort Radhakrishnan Ramesh
collection DOAJ
description Diabetic Retinopathy (DR) is considered the major cause of impaired vision for diabetic patients, particularly in developing counties. Treatment includes maintaining the patient’s present grade of vision as the illness can be irreparable. Initial recognition of DR is highly important to effectively sustain the vision of the patients. The main problem in DR recognition is that the manual diagnosis procedure consumes time, effort, and money and also includes an ophthalmologist’s analysis of retinal fundus imaging. Machine Learning (ML)-related medical image analysis is proven to be capable of evaluating retinal fundus images, and by using Deep Learning (DL) techniques. The current research presents an Automated DR detection method by utilizing the Glowworm Swarm Optimization (GSO) with Deep Learning (ADR-GSODL) approach on retinal fundus images. The main aim of the ADR-GSODL technique relies on the recognizing and classifying process of DR in retinal fundus images. To obtain this, the introduced ADR-GSODL method enforces Median Filtering (MF) as a pre-processing step. Besides, the ADR-GSODL technique utilizes the NASNetLarge method for deriving the GSO, and feature vectors are applied for parameter tuning. For the DR classification process, the Variational Autoencoder (VAE) technique is exploited. The supremacy of the ADR-GSODL approach was confirmed by a comparative simulation study. 
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spelling doaj.art-640203cb35164f8481a1c149b8ac35132023-08-10T05:33:23ZengD. G. PylarinosEngineering, Technology & Applied Science Research2241-44871792-80362023-08-0113410.48084/etasr.6033A Deep Learning Grading Classification of Diabetic Retinopathy on Retinal Fundus Images with Bio-inspired OptimizationRadhakrishnan Ramesh0Selvarajan Sathiamoorthy1Department of Computer Application, Government Arts and Science College for Women, IndiaAnnamalai University PG Extension Centre, India Diabetic Retinopathy (DR) is considered the major cause of impaired vision for diabetic patients, particularly in developing counties. Treatment includes maintaining the patient’s present grade of vision as the illness can be irreparable. Initial recognition of DR is highly important to effectively sustain the vision of the patients. The main problem in DR recognition is that the manual diagnosis procedure consumes time, effort, and money and also includes an ophthalmologist’s analysis of retinal fundus imaging. Machine Learning (ML)-related medical image analysis is proven to be capable of evaluating retinal fundus images, and by using Deep Learning (DL) techniques. The current research presents an Automated DR detection method by utilizing the Glowworm Swarm Optimization (GSO) with Deep Learning (ADR-GSODL) approach on retinal fundus images. The main aim of the ADR-GSODL technique relies on the recognizing and classifying process of DR in retinal fundus images. To obtain this, the introduced ADR-GSODL method enforces Median Filtering (MF) as a pre-processing step. Besides, the ADR-GSODL technique utilizes the NASNetLarge method for deriving the GSO, and feature vectors are applied for parameter tuning. For the DR classification process, the Variational Autoencoder (VAE) technique is exploited. The supremacy of the ADR-GSODL approach was confirmed by a comparative simulation study.  https://etasr.com/index.php/ETASR/article/view/6033diabetic retinopathy screeningfundus imagesdeep learningDiabetic Retinopathy (DRmetaheuristics
spellingShingle Radhakrishnan Ramesh
Selvarajan Sathiamoorthy
A Deep Learning Grading Classification of Diabetic Retinopathy on Retinal Fundus Images with Bio-inspired Optimization
Engineering, Technology & Applied Science Research
diabetic retinopathy screening
fundus images
deep learning
Diabetic Retinopathy (DR
metaheuristics
title A Deep Learning Grading Classification of Diabetic Retinopathy on Retinal Fundus Images with Bio-inspired Optimization
title_full A Deep Learning Grading Classification of Diabetic Retinopathy on Retinal Fundus Images with Bio-inspired Optimization
title_fullStr A Deep Learning Grading Classification of Diabetic Retinopathy on Retinal Fundus Images with Bio-inspired Optimization
title_full_unstemmed A Deep Learning Grading Classification of Diabetic Retinopathy on Retinal Fundus Images with Bio-inspired Optimization
title_short A Deep Learning Grading Classification of Diabetic Retinopathy on Retinal Fundus Images with Bio-inspired Optimization
title_sort deep learning grading classification of diabetic retinopathy on retinal fundus images with bio inspired optimization
topic diabetic retinopathy screening
fundus images
deep learning
Diabetic Retinopathy (DR
metaheuristics
url https://etasr.com/index.php/ETASR/article/view/6033
work_keys_str_mv AT radhakrishnanramesh adeeplearninggradingclassificationofdiabeticretinopathyonretinalfundusimageswithbioinspiredoptimization
AT selvarajansathiamoorthy adeeplearninggradingclassificationofdiabeticretinopathyonretinalfundusimageswithbioinspiredoptimization
AT radhakrishnanramesh deeplearninggradingclassificationofdiabeticretinopathyonretinalfundusimageswithbioinspiredoptimization
AT selvarajansathiamoorthy deeplearninggradingclassificationofdiabeticretinopathyonretinalfundusimageswithbioinspiredoptimization