Search engine for discovering works of Art, research articles, and books related to Art and Culture
ShareThis
Javascript must be enabled to continue!

Deep Ensemble Learning Based Objective Grading of Macular Edema by Extracting Clinically Significant Findings from Fused Retinal Imaging Modalities

View through CrossRef
Macular edema (ME) is a retinal condition in which central vision of a patient is affected. ME leads to accumulation of fluid in the surrounding macular region resulting in a swollen macula. Optical coherence tomography (OCT) and the fundus photography are the two widely used retinal examination techniques that can effectively detect ME. Many researchers have utilized retinal fundus and OCT imaging for detecting ME. However, to the best of our knowledge, no work is found in the literature that fuses the findings from both retinal imaging modalities for the effective and more reliable diagnosis of ME. In this paper, we proposed an automated framework for the classification of ME and healthy eyes using retinal fundus and OCT scans. The proposed framework is based on deep ensemble learning where the input fundus and OCT scans are recognized through the deep convolutional neural network (CNN) and are processed accordingly. The processed scans are further passed to the second layer of the deep CNN model, which extracts the required feature descriptors from both images. The extracted descriptors are then concatenated together and are passed to the supervised hybrid classifier made through the ensemble of the artificial neural networks, support vector machines and naïve Bayes. The proposed framework has been trained on 73,791 retinal scans and is validated on 5100 scans of publicly available Zhang dataset and Rabbani dataset. The proposed framework achieved the accuracy of 94.33% for diagnosing ME and healthy subjects and achieved the mean dice coefficient of 0.9019 ± 0.04 for accurately extracting the retinal fluids, 0.7069 ± 0.11 for accurately extracting hard exudates and 0.8203 ± 0.03 for accurately extracting retinal blood vessels against the clinical markings.
Title: Deep Ensemble Learning Based Objective Grading of Macular Edema by Extracting Clinically Significant Findings from Fused Retinal Imaging Modalities
Description:
Macular edema (ME) is a retinal condition in which central vision of a patient is affected.
ME leads to accumulation of fluid in the surrounding macular region resulting in a swollen macula.
Optical coherence tomography (OCT) and the fundus photography are the two widely used retinal examination techniques that can effectively detect ME.
Many researchers have utilized retinal fundus and OCT imaging for detecting ME.
However, to the best of our knowledge, no work is found in the literature that fuses the findings from both retinal imaging modalities for the effective and more reliable diagnosis of ME.
In this paper, we proposed an automated framework for the classification of ME and healthy eyes using retinal fundus and OCT scans.
The proposed framework is based on deep ensemble learning where the input fundus and OCT scans are recognized through the deep convolutional neural network (CNN) and are processed accordingly.
The processed scans are further passed to the second layer of the deep CNN model, which extracts the required feature descriptors from both images.
The extracted descriptors are then concatenated together and are passed to the supervised hybrid classifier made through the ensemble of the artificial neural networks, support vector machines and naïve Bayes.
The proposed framework has been trained on 73,791 retinal scans and is validated on 5100 scans of publicly available Zhang dataset and Rabbani dataset.
The proposed framework achieved the accuracy of 94.
33% for diagnosing ME and healthy subjects and achieved the mean dice coefficient of 0.
9019 ± 0.
04 for accurately extracting the retinal fluids, 0.
7069 ± 0.
11 for accurately extracting hard exudates and 0.
8203 ± 0.
03 for accurately extracting retinal blood vessels against the clinical markings.

Related Results

Emerging Evidence of IgG4-Related Disease in Pericarditis: A Systematic Review
Emerging Evidence of IgG4-Related Disease in Pericarditis: A Systematic Review
Abstract Introduction Immunoglobulin G4-related disease (IgG4-RD) is a recently identified immune-mediated condition that is debilitating and often overlooked. While IgG4-RD has be...
Retinal Oximetry
Retinal Oximetry
Abstract.Purpose:Malfunction of retinal blood flow or oxygenation is believed to be involved in various diseases. Among them are retinal vessel occlusions, diabetic retinopathy and...
Association of Types of Diabetic Macular Edema with Different Anti-Diabetic Therapies
Association of Types of Diabetic Macular Edema with Different Anti-Diabetic Therapies
ABSTRACT Objective: To evaluate and assess the association of diabetic macular edema with different anti-diabetic therapy regimens. Material and Methods: We recruited 340 patients...
ASSOCIATION BETWEEN THE DEGREE OF DIABETIC RETINOPATHY AND DIABETIC MACULAR EDEMA
ASSOCIATION BETWEEN THE DEGREE OF DIABETIC RETINOPATHY AND DIABETIC MACULAR EDEMA
INTRODUCTION: WHO estimates more than 150 million diabetes patients worldwide. One of the complications of diabetes is diabetic retinopathy which is recognized as the leading cause...
Anatomical and functional correlates of cystic macular edema in retinitis pigmentosa
Anatomical and functional correlates of cystic macular edema in retinitis pigmentosa
Cystoid macular edema (CME) is a major cause of central visual deterioration in retinitis pigmentosa. The exact reason for CME and its prognostic significance in this patient popul...
Progressive and Severe Proliferative Diabetic Retinopathy
Progressive and Severe Proliferative Diabetic Retinopathy
Introduction Proliferative diabetic retinopathy (PDR) is a progressive condition leading to blindness.  PDR develops in twenty percent of patients with diabetes mellitus (DM) with ...
Retinal oximetry in patients with ischaemic retinal diseases
Retinal oximetry in patients with ischaemic retinal diseases
AbstractThe retinal oximeter is a new tool for non‐invasive measurement of retinal oxygen saturation in humans. Several studies have investigated the associations between retinal o...
OCT-A Choroidal and Retinal Findings in Patients with Retinal Vein Obstruction
OCT-A Choroidal and Retinal Findings in Patients with Retinal Vein Obstruction
This chapter provides an overview of various retinal abnormalities, pathophysiologies, structural and vascular findings, and therapeutic modalities used to address retinal vein obs...

Back to Top