A study on effective data preprocessing and augmentation method in diabetic retinopathy classification using pre-trained deep learning approaches

被引:0
作者
Ramazan İncir
Ferhat Bozkurt
机构
[1] Gümüşhane University,Department of Computer Technology, Kelkit Aydın Doğan Vocational School
[2] Ataturk University,Department of Computer Engineering, Faculty of Engineering
来源
Multimedia Tools and Applications | 2024年 / 83卷
关键词
Deep learning; Diabetic retinopathy; Classification; Data augmentation;
D O I
暂无
中图分类号
学科分类号
摘要
High glucose levels in the blood not only damage different tissues and organs of the body, but also cause adverse effects on the eye. This condition is called diabetic retinopathy (DR). DR can cause blurred vision, darkening of the field of vision, and severe vision loss. The number of people infected with the disease is increasing in our country and worldwide. The time-consuming physician check-ups and the presence of small lesions indicate the need to develop diagnostic systems. Deep learning-based applications have become the trend for diagnosing and grading diseases from images. This study aims to create a meaningful and sufficient dataset using effective data preprocessing and affine transformation techniques in diabetic retinopathy classification. In this study, classification was performed using seven different pre-trained deep learning architectures. An experimental study of each technique was performed on the EyePACS dataset. An overfitting problem was encountered in the experimental results with the original data set. Thus, data preprocessing and data augmentation processes were carried out in order to eliminate overfitting by considering the imbalance between classes in the dataset. The classification performance obtained from each architecture was observed according to performance metrics of precision, recall, F1 Score, accuracy, and loss. In this study, the best performance was achieved with 97.65% test accuracy with the proposed EfficientNetV2-M network model.
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页码:12185 / 12208
页数:23
相关论文
共 75 条
[1]  
Al-Antary MT(2021)Multi-scale attention network for diabetic retinopathy classification IEEE Access 9 54190-54200
[2]  
Arafa Y(2022)Features extraction using encoded local binary pattern for detection and grading diabetic retinopathy Health Information Science and Systems 10 1-13
[3]  
Berbar MA(2022)AI-Based Automatic Detection and Classification of Diabetic Retinopathy Using U-Net and Deep Learning Symmetry 14 1427-253
[4]  
Bilal A(2020)Explainable end-to-end deep learning for diabetic retinopathy detection across multiple datasets J Medical Imaging 7 044503-530
[5]  
Zhu L(1993)Histopathology of diabetic retinopathy in man Eye 7 250-64
[6]  
Deng A(2022)Transfer Learning-Based Model for Diabetic Retinopathy Diagnosis Using Retinal Images Brain Sciences 12 535-140767
[7]  
Lu H(2021)Adversarial attack and defence through adversarial training and feature fusion for diabetic retinopathy recognition Sensors 21 3922-11721
[8]  
Wu N(2019)Detection of severity level of diabetic retinopathy using Bag of features model IET Computer Vision 13 523-12
[9]  
Chetoui M(2021)Facial expression recognition via ResNet-50 Int J Cogn Comput Eng 2 57-7
[10]  
Akhloufi MA(2020)Classification of breast cancer histopathological images using interleaved DenseNet with SENet (IDSNet) PloS one 15 e0232127-282