DiaRet: A browser-based application for the grading of Diabetic
Retinopathy with Integrated Gradients
- URL: http://arxiv.org/abs/2103.08501v2
- Date: Tue, 16 Mar 2021 19:26:55 GMT
- Title: DiaRet: A browser-based application for the grading of Diabetic
Retinopathy with Integrated Gradients
- Authors: Shaswat Patel, Maithili Lohakare, Samyak Prajapati, Shaanya Singh,
Nancy Patel
- Abstract summary: Diabetes is a metabolic disorder that results from defects in autoimmune beta-cell destruction in Type 1, peripheral resistance to insulin action in Type 2 or, most commonly, both.
Patients with long-standing diabetes often fall prey to Diabetic Retinopathy resulting in changes in the retina of the human eye, which may lead to loss of vision in extreme cases.
The aim of this study is two-fold: (a) create deep learning models that were trained to grade degraded retinal fundus images and (b) to create a browser-based application that will aid in diagnostic procedures by highlighting the key features of the fundus image.
- Score: 0.0
- License: http://creativecommons.org/licenses/by/4.0/
- Abstract: Diabetes is a metabolic disorder that results from defects in autoimmune
beta-cell destruction in Type 1, peripheral resistance to insulin action in
Type 2 or, most commonly, both. Patients with long-standing diabetes often fall
prey to Diabetic Retinopathy (DR) resulting in changes in the retina of the
human eye, which may lead to loss of vision in extreme cases. The aim of this
study is two-fold: (a) create deep learning models that were trained to grade
degraded retinal fundus images and (b) to create a browser-based application
that will aid in diagnostic procedures by highlighting the key features of the
fundus image. Deep learning has proven to be a success for computer-aided DR
diagnosis resulting in early-detection and prevention of blindness. In this
research work, we have emulated the images plagued by distortions by degrading
the images based on multiple different combinations of Light Transmission
Disturbance, Image Blurring and insertion of Retinal Artifacts. These degraded
images were used for the training of multiple Deep Learning based Convolutional
Neural Networks. We have trained InceptionV3, ResNet-50 and InceptionResNetV2
on multiple datasets. The models were used to classify retinal fundus images
based on their severity level and then further used in the creation of a
browser-based application, which demonstrates the models prediction and the
probability associated with each class. It will also show the Integration
Gradient (IG) Attribution Mask superimposed onto the input image. The creation
of the browser-based application would aid in the diagnostic procedures
performed by ophthalmologists by highlighting the key features of the fundus
image based on an educated prediction made by the model.
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