Shah, ArpitPatel, WarishKoyuncu, Hakan2024-03-232024-03-232024Shah, A., Patel, W., Koyuncu, H. (2024). A hybrid ensemble learning approach for efficient diabetic retinopathy prediction and classification using machine learning and deep learning techniques. International Journal of Intelligent Systems and Applications in Engineering, 12(16s), 85-93.2147-6799https://hdl.handle.net/20.500.12939/4642AI is a crucial tool in early detection and classification of diabetic retinopathy, which is a leading cause of visual impairment globally. Transfer Learning (TL) was used to improve the accuracy of predictions and classifications within training datasets, surpassing existing methodologies. The study provides comprehensive insights into current databases, screening programs, performance evaluation metrics, relevant biomarkers, and challenges encountered in ophthalmology. The findings underscore the potential of AI-based approaches in enhancing diagnostic precision and offer a promising direction for future studies. The paper concludes by delineating opportunities for further research and development in integrating AI advancements in the field. Conclusion: The findings underscore the efficacy of Transfer Learning in significantly improving the accuracy of diabetic retinopathy image predictions. This research highlights the potential of AI-based approaches in enhancing diagnostic precision and offers a promising direction for future studies. The paper concludes by delineating opportunities for further research and development, emphasizing the continued integration of advanced AI methodologies in ophthalmology to advance diabetic retinopathy detection and management.eninfo:eu-repo/semantics/closedAccessArtificial IntelligenceBlood Sugar LevelsDiabetic RetinopathyEarly DetectionTransfer LearningVisual ImpairmentA hybrid ensemble learning approach for efficient diabetic retinopathy prediction and classification using machine learning and deep learning techniquesArticle1216s85932-s2.0-85185940582Q3