Automated hard exudate segmentation using neural encoders and attention mechanisms for diabetic retinopathy diagnosis
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Date
2023
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Publisher
Inderscience Publishers
Abstract
Diabetic retinopathy (DR) is a complication caused by increased blood glucose levels, which causes retinal damage in diabetic patients’ eyes. If not discovered and treated early, it can lead to vision loss. Hard exudates (HE) are one of its characteristic signs. Identification of HE is a paramount step in early diagnosis of DR. In this work, the suitability of U-Net-based deep CNN with different encoder configurations and attention gates (AG) is experimented, for HE segmentation. The proposed models were benchmarked on the standard IDRiD dataset. To overcome the challenges related to the limited dataset, data augmentation techniques were also applied to generate image patches and used for model training. Extensive experiments on the dataset revealed that U-Net with AG achieved an accuracy of 98.8%. The U-Net with ResNet50 as the encoder backbone achieved an accuracy of 98.64%. The findings show that the presented models are effective and suitable for early-stage clinical diagnosis. © © 2023 Inderscience Enterprises Ltd.
Description
Keywords
Deep learning, Eye protection, Medical informatics, Signal encoding, Attention mechanisms, Diabetic retinopathy, Diabetic retinopathy prediction, Hard exudate segmentation, Hard exudates, Neural encoder, Diagnosis, Article, artificial neural network, benchmarking, convolutional neural network, data processing, deep neural network, diabetic retinopathy, diagnostic accuracy, early diagnosis, eye fundus, feature extraction, fuzzy c means clustering, hard exudate, human, image analysis, image segmentation, machine learning, methodology, ophthalmologist, prognosis, residual neural network, retina exudate, retina image, support vector machine, workflow
Citation
International Journal of Biomedical Engineering and Technology, 2023, 43, 1, pp. 60-75
