Abstract

Automatic grading of retinal blood vessels from fundus image can be a useful tool for diagnosis, planning and treatment of eye. Automatic diagnosis of retinal images for early detection of glaucoma, stroke, and blindness is emerging in intelligent health care system. The method primarily depends on various abnormal signs, such as area of hard exudates, area of blood vessels, bifurcation points, texture, and entropies. The development of an automated screening system based on vessel width, tortuosity, and vessel branching are also used for grading. However, the automated method that directly can come to a decision by taking the fundus images got less attention. Detecting eye problems based on the tortuosity of the vessel from fundus images is a complicated task for opthalmologists. So automated grading algorithm using deep learning can be most valuable for grading retinal health. The aim of this work is to develop an automatic computer aided diagnosis system to solve the problem. This work approaches to achieve an automatic grading method that is opted using Convolutional Neural Network (CNN) model. In this work we have studied the state-of-the-art machine learning algorithms and proposed an attention network which can grade retinal images. The proposed method is validated on a public dataset EIARG1, which is only publicly available dataset for such task as per our knowledge.

Highlights

  • The major cause of poor eye health is Diabetes

  • Grading fundus images based on the tortuosity is common in diabetic ratinopathy

  • It is complex and need special doctors. Automatic grading of such fundus images can be useful tool in various automatic diagnosis system

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Summary

Introduction

The major cause of poor eye health is Diabetes. This is a dangerous malady, which affect the human eye and the cause of several heart problems. In many cases the main cause of blindness is diabetic retinopathy (DR) [1, 2]. Diabetic retinopathy (die-uhBET-ik ret-ih-NOP-uh-thee) is caused by long term diabetes that affects eyes. It’s caused by damaging the blood vessels of the light-sensitive tissue at the back of the eye (retina)[3]. Retinal picture examination is a helpful instrument for the non-invasive

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