Abstract

Irretrievable loss of vision is the predominant result of Glaucoma in the retina. Recently, multiple approaches have paid attention to the automatic detection of glaucoma on fundus images. Due to the interlace of blood vessels and the herculean task involved in glaucoma detection, the exactly affected site of the optic disc of whether small or big size cup, is deemed challenging. Spatially Based Ellipse Fitting Curve Model (SBEFCM) classification is suggested based on the Ensemble for a reliable diagnosis of Glaucoma in the Optic Cup (OC) and Optic Disc (OD) boundary correspondingly. This research deploys the Ensemble Convolutional Neural Network (CNN) classification for classifying Glaucoma or Diabetes Retinopathy (DR). The detection of the boundary between the OC and the OD is performed by the SBEFCM, which is the latest weighted ellipse fitting model. The SBEFCM that enhances and widens the multi-ellipse fitting technique is proposed here. There is a pre-processing of input fundus image besides segmentation of blood vessels to avoid interlacing surrounding tissues and blood vessels. The ascertaining of OC and OD boundary, which characterized many output factors for glaucoma detection, has been developed by Ensemble CNN classification, which includes detecting sensitivity, specificity, precision, and Area Under the receiver operating characteristic Curve (AUC) values accurately by an innovative SBEFCM. In terms of contrast, the proposed Ensemble CNN significantly outperformed the current methods.

Highlights

  • The diagnostic speed is optimized, and computer-aided diagnostics assist the location of a specific area

  • If there is a growth of blood vessels on the iris, eyes are blocked by fluid flows and high pressure in the eyes, indicating Neo-vascular Glaucoma

  • The following Tab. 2 illustrated the proposed glaucoma detection’s Sensitivity, Specificity, Accuracy, and Area Under the Curve (AUC) result associated with the existing methods

Read more

Summary

Introduction

The diagnostic speed is optimized, and computer-aided diagnostics assist the location of a specific area. The damage of blood vessels by prolonged Diabetes mellitus causes Diabetic Retinopathy (DR), affecting the eye’s (retina) rear side. The retina produces new and abnormal blood vessels. If there is a growth of blood vessels on the iris, eyes are blocked by fluid flows and high pressure in the eyes, indicating Neo-vascular Glaucoma. Glaucoma Detection (CD) is very challenging since there will not be any pains or symptoms, and the vision is normal at the initial stage. In the advanced stage will patients lose 70.19% of their vision. It is inevitable to do periodical screening of the eye to detect glaucoma early. Ophthalmologists extensively use Fundus photography for DR detection [1]

Methods
Results
Conclusion
Full Text
Published version (Free)

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