Abstract

This paper exploits the extreme learning machine (ELM) approach to address diabetic retinopathy (DR), a medical condition in which impairment occurs to the retina caused by diabetes. DR, a leading cause of blindness worldwide, is a sort of swelling leakage due to excessive blood sugar in the retina vessels. An early-stage diagnosis is therefore beneficial to prevent diabetes patients from losing their sight. This study introduced a novel method to detect DR for binary class and multiclass classification based on the APTOS-2019 blindness detection and Messidor-2 datasets. First, DR images have been pre-processed using Ben Graham’s approach. After that, contrast limited adaptive histogram equalization (CLAHE) has been used to get contrast-enhanced images with lower noise and more distinguishing features. Then a novel hybrid convolutional neural network-singular value decomposition model has been developed to reduce input features for classifiers. Finally, the proposed method uses an ELM algorithm as the classifier that minimizes the training time cost. The experiments focus on accuracy, precision, recall, and F1-score and demonstrate the feasibility of adopting the proposed scheme for DR diagnosis. The method outperforms the existing techniques and shows an optimistic accuracy and recall of 99.73% and 100%, respectively, for binary class. For five stages of DR classification, the proposed model achieved an accuracy of 98.09% and 96.26% for APTOS-2019 and Messidor-2 datasets, respectively, which outperformed the existing state-of-art models.

Highlights

  • D IABETES mellitus is known as diabetes which is a collection of metabolic illnesses that happen when a person’s blood sugar level is high, and the person does not make enough insulin to control it

  • EXPERIMENTS AND RESULTS The machine and deep learning algorithms have been implemented utilizing Keras, with TensorFlow as the backend running on the Pycharm Community Edition19 (2020.2.364) software

  • As diabetes has become more frequent over the world, diabetic retinopathy (DR) consequences are becoming more common as well

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Summary

INTRODUCTION

D IABETES mellitus is known as diabetes which is a collection of metabolic illnesses that happen when a person’s blood sugar level is high, and the person does not make enough insulin to control it. The number and types of lesions on the retina image define the stages. More than 0.4 million people lost their vision, and around 2.6 people are affected by severe vision damage [6]. These visual impairments can be prevented or minimized if it is diagnosed and treated promptly enough. Classified the five stages of DR by using a novel extreme learning machine (ELM) algorithm. These proposed framework performed well in the different datasets, showed an optimistic performance, and surpassed the existing state-of-art models The key conclusions are presented at the end of section V

RELATED WORK
PRE-PROCESSING
EXTREME LEARNING MACHINE
EXPERIMENTS AND RESULTS
RESULTS FOR FIVE STAGES OF DR CLASSIFICATION
CONCLUSION
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