Advanced deep learning approaches for early detection and localization of ocular diseases

https://doi.org/10.55214/25768484.v8i6.2813

Authors

  • Ali Mohammed Ridha College of Medicine, University of Al-Ameed, 56001 Karbala, Iraq
  • Mohammed Jamal Mohammed College of Medicine, University of Al-Ameed, 56001 Karbala, Iraq
  • Hussban Abood Saber Department of Electrical and Electronic Engineering, University of Kerbala, 56001 Karbala, Iraq
  • Mustafa Habeeb Chyad University of Warith Al-Anbiyaa, 56001 Karbala, Iraq
  • Maryam Hussein Abdulameer University of Warith Al-Anbiyaa, 56001 Karbala, Iraq

Rece with t advancements in modern technology have significantly enhanced the transmission of information, particularly in image processing, utilizing deep learning algorithms. This study aims to propose a a robust deep-learning strategy for detecting and recognizing eye defects and diseases from medical images. We present a detailed practical simulation of hybrid deep learning techniques designed for medical image classification based on multi-descriptor algorithms. The focus is on the classification of eye diseases by applying an advanced deep-learning algorithm to a dataset comprising various pathological eye conditions. Training operations for the proposed algorithm were conducted following the initialization phase, which included the extraction of multi-specification features. This enables the deep learning model to effectively analyze input eye images and accurately diagnose conditions. Our results demonstrate a diagnostic efficiency of 99%, with an error rate not exceeding 0.015%. The findings underscore the high efficiency and accuracy of deep learning algorithms in classifying and analyzing image data, thereby significantly reducing the workload for healthcare professionals.

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How to Cite

Ridha, A. M. ., Mohammed, M. J. ., Saber, H. A. ., Chyad, M. H. ., & Abdulameer, M. H. . (2024). Advanced deep learning approaches for early detection and localization of ocular diseases. Edelweiss Applied Science and Technology, 8(6), 3708–3721. https://doi.org/10.55214/25768484.v8i6.2813

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Published

2024-11-04