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Paper Title

An advanced deep neural network for fundus image analysis and enhancing diabetic retinopathy detection

Authors

Francis M. Bui
Francis M. Bui
F M Javed Mehedi Shamrat
F M Javed Mehedi Shamrat
Kawsar Ahmed
Kawsar Ahmed
Sharmin Sharmin
Sharmin Sharmin
Rashiduzzaman Shakil
Rashiduzzaman Shakil
Nazmul Hoque ovy
Nazmul Hoque ovy
Bonna Akter
Bonna Akter
Md Zunayed Ahmed
Md Zunayed Ahmed

Article Type

Research Article

Research Impact Tools

Issue

Volume : 5 | Page No : 100303

Published On

June, 2024

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Abstract

Diabetic retinopathy (DR) involves retina damage due to diabetes, often leading to blindness. It is diagnosed via color fundus injections, but the manual analysis is cumbersome and error-prone. While computer vision techniques can predict DR stages, they are computationally intensive and struggle with complex data extraction. In this research, our prime objective was to automate the process of DR classification into its various stages using convolutional neural network (CNN) models. We employed the performance of fifteen pre-trained models with our novel proposed diabetic retinopathy network (DRNet13) model. We aimed to discern the most efficient model for accurate diabetic retinopathy (DR) staging based on fundus images from five DR classes. We preprocessed the image using a median filter for noise reduction and Gamma correction for image enhancement. We expanded our dataset from 3662 to 7500 images to create a more generalized training model through various augmentation techniques. We also evaluated multiple evaluation metrics, including accuracy, precision, F1-score, Sensitivity, Specificity, Area under the curve (AUC), Mean Squared Error (MSE), False Positive Rate (FPR), False Negative Rate (FNR), in addition to confusion matrices for an in-depth comparison of the performance of these models. Feature maps were employed to illuminate decision making areas in the DRNet13 model, which achieved a 97 % accuracy rate for DR detection, surpassing other CNN architectures in speed and efficiency. Despite a few misclassifications, the model's capability to identify critical features demonstrates its potential as an impactful diagnostic tool for timely and accurate identification of diabetic retinopathy.

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