An efficient deep learning approach to detect diabetic retinopathy : analysis and severity prediction
Date
2024-01Publisher
Brac UniversityAuthor
Hossain, MD. TamzidBhowmik, Utsav
Mila, Riza Asmat
Chowdhury, Mahtab Shahriar
Karmakar, Ronak
Metadata
Show full item recordAbstract
Diabetic retinopathy is one complicated eye complication of diabetes and considered
one of the major causes of preventable blindness worldwide. Diabetic retinopathy
occurs when high glucose levels in the blood damage small blood vessels of the retina
over time continuously, resulting in various problems with vision. In its early stages,
DR typically shows no symptoms; thus, early detection is very important in order to
avoid permanent loss of vision. Given the importance of early diagnosis, advanced
machine learning systems, especially those applying deep learning, have been very
important in eye care in recent times. This work presents a new deep learning model
using ensemble learning combined with a hybrid architecture and proposes a deep
learning model named DRDetector. The proposed DRDetector combines ResNet50
for feature extraction with Vision Transformer ViT layers to understand the global
context. This methodology overcomes the challenge of diagnosis and prediction of
diabetic retinopathy with enhanced accuracy while minimizing false positive and
negative cases. DRDetector uses a Convolutional Neural Network (CNN) combined
with a Vision Transformer architecture, with transfer learning for detection of DR
stages. It classifies the retinal images into different classes including healthy, and
different stages of DR: mild, moderate, NPDR, and PDR. The aim of this paper is
to comprehensively assess the performance of DRDetector based on a large dataset
of retinal images, so that its efficacy can be shown in clinics. This would lead to
improved diagnosis with higher accuracy, reduction of diagnostic errors, and in effect,
help the ophthalmologists39; quest for perfection. Moreover, an advanced grading
system can assist healthcare practitioners in grading the severity of the disease for
better management and treatment options for DR. This study has pointed out that
optimized deep learning systems may support early detection, risk evaluation, and
personalized treatment for diabetic retinopathy patients.