Image preprocessing‐based ensemble deep learning classification of diabetic retinopathy

Author:

Macsik Peter1ORCID,Pavlovicova Jarmila1,Kajan Slavomir1,Goga Jozef1,Kurilova Veronika12

Affiliation:

1. Faculty of Electrical Engineering and Information Technology Slovak University of Technology Bratislava Slovakia

2. Department of Ophthalmology, Slovak Medical University University Hospital Bratislava Slovakia

Abstract

AbstractDiabetic retinopathy (DR) can cause irreversible eye damage, even blindness. The prognosis improves with early diagnosis. According to the International Classification of Diabetic Retinopathy Severity Scale (ICDRSS), DR has five stages. Modern, cost‐effective techniques for automatic DR screening and staging of fundus images are based on deep learning (DL). To obtain higher classification accuracy, the combination of several diverse individual DL models into one ensemble could be used. A new approach to model diversity in an ensemble is proposed by manipulating the training input data involving original and four variants of preprocessed image datasets. There are publicly available datasets with labels for all five stages, but some contain poor‐quality images. In contrast, this algorithm was trained on images from a six‐class DDR dataset, including the class of poor‐quality ungradable images, to enhance the classification performance. The solution was evaluated on the APTOS dataset, containing only ICDRSS classes. Classification results of the ensemble model were presented on two different ensemble convolutional neural network (CNN) models, based on Xception and EfficientNetB4 architectures using two fusion approaches. Our proposed ensemble models outperformed all other single deep learning architectures regarding overall accuracy and Cohen's Kappa, with the best results using the EfficientNetB4 architecture.

Funder

European Regional Development Fund

Publisher

Institution of Engineering and Technology (IET)

Subject

Electrical and Electronic Engineering,Computer Vision and Pattern Recognition,Signal Processing,Software

Reference77 articles.

1. International Diabetes Federation:Diabetes around the World in 2021.https://diabetesatlas.org/(2021). Accessed 4 October 2022

2. American Academy of Opthalmology:International clinical diabetic retinopathy disease severity scale.http://www.icoph.org/downloads/Diabetic‐Retinopathy‐Scale.pdf(2002). Accessed 1 October 2021

3. Panretinal Photocoagulation vs Intravitreous Ranibizumab for Proliferative Diabetic Retinopathy

4. Effects of Medical Therapies on Retinopathy Progression in Type 2 Diabetes

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