Deep learning-based Retinopathy Diagnosis Using Fundus photography (FP) and Optical Coherence Tomography (OCT) images
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University of Tlemcen
Abstract
Diabetic retinopathy (DR) is a dangerous complication of diabetes that affects
the retina and can lead to partial or complete vision loss. It progresses through five
clinical stages, and the majority of patients are diagnosed at a late stage, when their
vision is already severely impaired. Therefore, it is essential to diagnose DR in its
early stage in order to prevent irreversible damage. With the rise of artificial intel ligence, deep learning has proven to be a useful tool in medical imaging, delivering
accurate and fast diagnostic support.
In this work, we explored the use of deep learning models for automatic detection and
classification of diabetic retinopathy stages. We used two publicly available datasets:
the APTOS 2019 dataset from Kaggle, which involves a five-class classification prob lem, and OLIVES, a multimodal dataset published by research institutions, used for
binary classification between DR and Diabetic Macular Edema (DME).We tested
different convolutional neural network (CNN) architectures , including custom-built
and pre-trained models such as EfficientNet and InceptionResNetV2. To improve
performance and address class imbalance,we applied training techniques like data
augmentation, oversampling, and class weighting . Our results support that deep
learning can effectively assist in the early diagnosis of diabetic retinopathy and en able the development of reliable and scalable screening systems in clinical practice.