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Dr. Wael Abdel-Rahman Mohamed Ahmed :: Publications:

Title:
Optimized Deep Learning Approach for Efficient Diabetic Retinopathy Classification Combining VGG16-CNN.
Authors: Heba M El-Hoseny, Heba F Elsepae, Wael A Mohamed, Ayman S Selmy
Year: 2023
Keywords: Not Available
Journal: Computers, materials & continua
Volume: 77
Issue: 2
Pages: Not Available
Publisher: Not Available
Local/International: International
Paper Link:
Full paper Wael Abdel-Rahman Mohamed Ahmed_Optimized Deep Learning Approach for Efficient Diabetic Retinopathy Classification Combining VGG16-CNN. _ EBSCOhost.pdf
Supplementary materials Not Available
Abstract:

Diabetic retinopathy is a critical eye condition that, if not treated, can lead to vision loss. Traditional methods of diagnosing and treating the disease are time-consuming and expensive. However, machine learning and deep transfer learning (DTL) techniques have shown promise in medical applications, including detecting, classifying, and segmenting diabetic retinopathy. These advanced techniques offer higher accuracy and performance. Computer-Aided Diagnosis (CAD) is crucial in speeding up classification and providing accurate disease diagnoses. Overall, these technological advancements hold great potential for improving the management of diabetic retinopathy. The study's objective was to differentiate between different classes of diabetes and verify the model's capability to distinguish between these classes. The robustness of the model was evaluated using other metrics such as accuracy

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