| Literature DB >> 29295157 |
Manoj Raju1, Venkatesh Pagidimarri1, Ryan Barreto1, Amrit Kadam1, Vamsichandra Kasivajjala1, Arun Aswath1.
Abstract
This paper mainly focuses on the deep learning application in classifying the stage of diabetic retinopathy and detecting the laterality of the eye using funduscopic images. Diabetic retinopathy is a chronic, progressive, sight-threatening disease of the retinal blood vessels. Ophthalmologists diagnose diabetic retinopathy through early funduscopic screening. Normally, there is a time delay in reporting and intervention, apart from the financial cost and risk of blindness associated with it. Using a convolutional neural network based approach for automatic diagnosis of diabetic retinopathy, we trained the prediction network on the publicly available Kaggle dataset. Approximately 35,000 images were used to train the network, which observed a sensitivity of 80.28% and a specificity of 92.29% on the validation dataset of ~53,000 images. Using 8,810 images, the network was trained for detecting the laterality of the eye and observed an accuracy of 93.28% on the validation set of 8,816 images.Entities:
Keywords: Artificial Intelligence; Diabetic Retinopathy; Neural Networks (Computer)
Mesh:
Year: 2017 PMID: 29295157
Source DB: PubMed Journal: Stud Health Technol Inform ISSN: 0926-9630