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metadata
title: Diabetic Retinopathy Detection App
emoji: 🐢
colorFrom: blue
colorTo: purple
sdk: gradio
sdk_version: 4.22.0
app_file: app.py
license: mit

diabetic-retinopathy-detection

Diabetic Retinopathy Detection: Utilizing Multiprocessing for Processing Large Datasets and Transfer Learning to Fine-Tune Deep Learning Models

Efficiently process large datasets & develop advanced model pipelines for diabetic retinopathy detection. Streamlining diagnosis.

TL;DR:

In this project, we handle large datasets efficiently by downloading, extracting, and preparing them for analysis. Next, we use PyTorch Lightning to develop a powerful system for diabetic retinopathy detection, categorizing images into different stages of the disease. We enhance our model pipeline with various pretrained backbone models and track progress using TensorBoard. Additionally, we create a user-friendly web app to demonstrate our model's capabilities. Our approach aims to streamline both data processing and model development for accurate and accessible diabetic retinopathy diagnosis.

Gradio - Diabetic Retinopathy Detection App

Overview

Welcome to our Diabetic Retinopathy Detection App! This app utilizes deep learning models to detect diabetic retinopathy in retinal images. Diabetic retinopathy is a common complication of diabetes and early detection is crucial for effective treatment.

Try It Out

Use the interactive interface below to upload retinal images and get predictions on diabetic retinopathy severity.

Open Diabetic Retinopathy Detection App

Gradio App

How to Use

  1. Click on the "Open Diabetic Retinopathy Detection App" button above.
  2. Upload a retinal image by clicking on the "Upload Image" button.
  3. Once the image is uploaded, the model will process it and provide predictions on the severity of diabetic retinopathy.
  4. Interpret the results provided by the model.

License

MIT

Authors