4.5 Article

Recognition and Detection of Diabetic Retinopathy Using Densenet-65 Based Faster-RCNN

Journal

CMC-COMPUTERS MATERIALS & CONTINUA
Volume 67, Issue 2, Pages 1333-1351

Publisher

TECH SCIENCE PRESS
DOI: 10.32604/cmc.2021.014691

Keywords

Deep learning; medical informatics; diabetic retinopathy; healthcare; computer vision

Funding

  1. Deanship of Scientific Research, Qassim University

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Diabetes leads to a retinal complication called diabetic retinopathy, which is one of the four main causes of blindness globally. Developing an automated method for DR sample classification is cost-effective and improves accuracy. The custom Faster-RCNN technique with DenseNet-65 achieved outstanding results in DR lesion recognition and classification.
Diabetes is a metabolic disorder that results in a retinal complication called diabetic retinopathy (DR) which is one of the four main reasons for sightlessness all over the globe. DR usually has no clear symptoms before the onset, thus making disease identification a challenging task. The healthcare industry may face unfavorable consequences if the gap in identifying DR is not filled with effective automation. Thus, our objective is to develop an automatic and cost-effective method for classifying DR samples. In this work, we present a custom Faster-RCNN technique for the recognition and classification of DR lesions from retinal images. After pre-processing, we generate the annotations of the dataset which is required for model training. Then, introduce DenseNet-65 at the feature extraction level of Faster-RCNN to compute the representative set of key points. Finally, the Faster-RCNN localizes and classifies the input sample into five classes. Rigorous experiments performed on a Kaggle dataset comprising of 88,704 images show that the introduced methodology outperforms with an accuracy of 97.2%. We have compared our technique with state-of-the-art approaches to show its robustness in term of DR localization and classification. Additionally, we performed cross-dataset validation on the Kaggle and APTOS datasets and achieved remarkable results on both training and testing phases.

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