全部 标题 作者
关键词 摘要

OALib Journal期刊
ISSN: 2333-9721
费用:99美元

查看量下载量

相关文章

更多...
-  2020 

Early Detection of Diabetic Eye Disease through Deep Learning using Fundus Images

DOI: 10.4108/eai.13-7-2018.164588

Keywords: Deep learning, Diabetic eye disease, Image classi?cation, Transfer learning

Full-Text   Cite this paper   Add to My Lib

Abstract:

INTRODUCTION: Diabetic eye disease (DED) is a group of eye problems that can a?ect diabetic people. Such disorders include diabetic retinopathy, diabetic macular edema, cataracts, and glaucoma. Diabetes can damage your eyes over time, which can lead to poor vision or even permanent blindness. Early detection of DED symptoms is therefore essential to prevent escalation of the disease and timely treatment. Research di?culties in early detection of DEDs can so far be summarized as follows: changes in the eye anatomy during its early stage are often untraceable by the human eye due to the subtle nature of the features, where large volumes of fundus images put tremendous pressure on scarce specialist resources, making manual analysis practically impossible. OBJECTIVES: Therefore, methods focused on deep learning have been practiced to promote early detection of DEDs and address the issues currently faced. Despite promising, highly accurate identi?cation of early anatomical changes in the eye using Deep Learning remains a challenge in wide-scale practical application. METHODS: We present conceptual system architecture with pre-trained Convolutional Neural Network combined with image processing techniques to construct an early DED detection system. The data was collected from various publicly available sources, such as Kaggle, Messidor, RIGA, and HEI-MED. The analysis was presented with 13 Convolutional Neural Networks models, trained and tested on a wide-scale imagenet dataset using the Transfer Learning concept. Numerous techniques for improving performance were discussed, such as (i) image processing,(ii) ?ne-tuning, (iii) volume increase in data. The parameters were recorded against the default Accuracy metric for the test dataset. RESULTS: After the extensive study about the various classi?cation system, and its methods, we found that creating an e?cient neural network classi?er demands careful consideration of both the network architecture and the data input. Hence, image processing plays a signi?cant role to develop high accuracy diabetic eye disease classi?ers. CONCLUSION: This article recognized speci?c work limitations in the early classi?cation of diabetic eye disease. First, early-stage classi?cation of DED, and second, classi?cation of DR, GL, and DME using a method that causes permanent blindness afterward. Lastly, this study was intended to propose the framework for early automatic DED detection of fundus images through deep learning addressing three main research gaps

Full-Text

Contact Us

service@oalib.com

QQ:3279437679

WhatsApp +8615387084133