Advances in disease detection through retinal imaging: A systematic review.

Journal: Computers in biology and medicine
Published Date:

Abstract

Ocular and non-ocular diseases significantly impact millions of people worldwide, leading to vision impairment or blindness if not detected and managed early. Many individuals could be prevented from becoming blind by treating these diseases early on and stopping their progression. Despite advances in medical imaging and diagnostic tools, the manual detection of these diseases remains labor-intensive, time-consuming, and dependent on the expert's experience. Computer-aided diagnosis (CAD) has been transformed by machine learning (ML), providing promising methods for the automated detection and grading of diseases using various retinal imaging modalities. In this paper, we present a comprehensive systematic literature review that discusses the use of ML techniques to detect diseases from retinal images, utilizing both single and multi-modal imaging approaches. We analyze the efficiency of various Deep Learning and classical ML models, highlighting their achievements in accuracy, sensitivity, and specificity. Even with these advancements, the review identifies several critical challenges. We propose future research directions to address these issues. By overcoming these challenges, the potential of ML to enhance diagnostic accuracy and patient outcomes can be fully realized, opening the way for more reliable and effective ocular and non-ocular disease management.

Authors

  • Hazrat Bilal
    CRT-AI, School of Computer Science, University of Galway, Galway, Ireland. Electronic address: h.bilal1@universityofgalway.ie.
  • Ayse Keles
    Department of Computer Engineering, Faculty of Engineering and Natural Sciences, Ankara Medipol University, Ankara, Turkey. ayseinan@gmail.com.
  • Malika Bendechache
    School of Computing, Faculty of Engineering and Computing, Dublin City University, Ireland.