Abstract

Image recognition and understanding is considered as a remarkable subfield of Artificial Intelligence (AI). In practice, retinal image data have high dimensionality leading to enormous size data. As the morphological retinal image datasets can be analyzed in an expansive and non-invasive way, AI more precisely Deep Learning (DL) methods are facilitating in developing intelligent retinal image analysis tools. The most recently developed DL technique, Convolutional Neural Network (CNN) showed remarkable efficiency in identifying, localizing, and quantifying the complex and hierarchical image features that are responsible for severe cardiovascular diseases. Different deep layered CNN architectures such as LeeNet, AlexNet, and ResNet have been developed exploiting CNN morphology. This wide variety of CNN structures can iteratively learn complex data structures of different datasets through supervised or unsupervised learning and perform exquisite analysis for feature recognition independently to diagnose threatening cardiovascular diseases. In modern ophthalmic practice, DL based automated methods are being used in retinopathy screening, grading, identifying, and quantifying the pathological features to employ further therapeutic approaches and offering a wide potentiality to get rid of ophthalmic system complexity. In this review, the recent advances of DL technologies in retinal image segmentation and feature extraction are extensively discussed. To accomplish this study the pertinent materials were extracted from different publicly available databases and online sources deploying the relevant keywords that includes retinal imaging, artificial intelligence, deep learning and retinal database. For the associated publications the reference lists of selected articles were further investigated.

Highlights

  • In recent years retinal imaging has drawn up tremendous attention of ophthalmologists and scientists who are dedicated to developing novel diagnostic tools, as retinal imaging is important for predicting cardiovascular diseases

  • One of the most important sub-fields of biomedical engineering is the analysis of fundus retinal images that have become the key point of diagnosing life-threatening cardiovascular diseases such as Diabetic Retinopathy (DR), Hypertensive Retinopathy (HR), and stroke because of the simple and non-invasive visualization of retinal microvascular structure [4]–[8]

  • Development of Artificial Intelligence (AI)-assisted automated applications and tools for medical image analysis to-date is on the point of interest as it is potentially offering the feasibility in disease diagnostic and treatment systems

Read more

Summary

Introduction

In recent years retinal imaging has drawn up tremendous attention of ophthalmologists and scientists who are dedicated to developing novel diagnostic tools, as retinal imaging is important for predicting cardiovascular diseases. AI technology especially DL is being employed widely to develop smart tools for diagnosing the severe disease through retinal image analysis. One of the most important sub-fields of biomedical engineering is the analysis of fundus retinal images that have become the key point of diagnosing life-threatening cardiovascular diseases such as DR, HR, and stroke because of the simple and non-invasive visualization of retinal microvascular structure [4]–[8]. The consecutive sections of this paper manifest 1) the background of DL, 2) latest advancements of DL, CNN technologies in biomedical imaging, ophthalmology and 3) the contributions, performances, limitations, and challenges of recently introduced DL algorithms for retinal image segmentation and feature detection. As a powerful data processing tool, CNN is being employed massively in medical imaging specially in eye image processing task

DL in ophthalmology
DL in retinal image segmentation and feature detection
Discussion
Findings
Authors
Full Text
Paper version not known

Talk to us

Join us for a 30 min session where you can share your feedback and ask us any queries you have

Schedule a call

Disclaimer: All third-party content on this website/platform is and will remain the property of their respective owners and is provided on "as is" basis without any warranties, express or implied. Use of third-party content does not indicate any affiliation, sponsorship with or endorsement by them. Any references to third-party content is to identify the corresponding services and shall be considered fair use under The CopyrightLaw.