Hybrid Neural Architectures Combining Convolutional and Recurrent Networks for the Early Detection of Retinal Pathologies

Authors

  • Orken Mamyrbayev Laboratory of Computer Engineering of Intelligent Systems, Institute of Information and Computational Technologies, Almaty, Kazakhstan
  • Sergii Pavlov Scientific Laboratory of Biomedical Optics and Photonics, Department of Biomedical Engineering and Department of Laser and Optoelectronic Engineering, Vinnytsia National Technical University, Vinnytsia, Ukraine
  • Oleksandr Poplavskyi Kyiv National University of Construction and Architecture, Kyiv, Ukraine
  • Kymbat Momynzhanova Faculty of Information Technology, Al-Farabi Kazakh National University, Almaty, Kazakhstan
  • Yulii Saldan Eye Diseases and Eye Microsurgery Department, National Pirogov Memorial Medical University, Vinnytsia, Ukraine
  • Ardan Zhanegiz Laboratory of Computer Engineering of Intelligent Systems, Institute of Information and Computational Technologies, Almaty, Kazakhstan
  • Sholpan Zhumagulova Faculty of Information Technology, Al-Farabi Kazakh National University, Almaty, Kazakhstan
  • Nurdaulet Zhumazhan U. Joldasbekov Institute of Mechanics and Engineering, Almaty, Kazakhstan
Volume: 15 | Issue: 4 | Pages: 25150-25157 | August 2025 | https://doi.org/10.48084/etasr.11521

Abstract

Early and accurate detection of retinal pathologies is critical for preventing vision loss and enabling timely clinical intervention. Traditional computer vision techniques, such as thresholding, edge detection, morphological filtering, and Hough transforms, have long been used to extract features from retinal fundus images, yet their performance is often constrained by image variability and complex pathological presentations. This study presents a hybrid deep learning architecture that integrates Convolutional Neural Networks (CNNs) for image-based classification with Recurrent Neural Networks (RNNs), specifically Long Short-Term Memory (LSTM) units, to model geometric and anatomical features derived from classical methods. This architecture allows for the fusion of pixel-level deep features with clinically interpretable descriptors, including optic disc-fovea distance, lesion spatial distribution, and vessel curvature sequences. Comparative analysis demonstrates that the proposed hybrid model achieves superior diagnostic accuracy, reaching 97%, significantly outperforming both conventional image processing approaches and CNN-only baselines. The results indicate that incorporating structured domain knowledge into neural models improves both performance and interpretability, offering a robust framework for real-world retinal disease screening applications.

Keywords:

retinal pathology detection, fundus imaging, convolutional neural networks, recurrent neural networks, deep learning, optic disc localization, vessel analysis, medical image classification

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[1]
O. Mamyrbayev, “Hybrid Neural Architectures Combining Convolutional and Recurrent Networks for the Early Detection of Retinal Pathologies”, Eng. Technol. Appl. Sci. Res., vol. 15, no. 4, pp. 25150–25157, Aug. 2025.

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