BloodEye: Blood Group Detection Using Eye Images

Abstract: BloodEye enables non-invasive detection of blood group from retinal/eye images via a convolutional neural network, providing rapid screening and risk assessment for transfusion compatibility and health monitoring.

ABSTRACT

BloodEye is a novel solution designed to predict individuals’ blood groups using retinal or ocular images, employing deep learning (CNN) algorithms and image-processing techniques. By analysing retina scans captured via standard fundus photography or eye-imaging devices, BloodEye produces accurate blood group classification, reduces dependency on invasive blood testing, and supports rapid health screening workflows.

EXISTING SYSTEM

  • Traditional blood group detection requires a blood draw, lab reagents and manual serological testing.
  • No image-based or non-invasive method widely available for blood group classification.
  • Limited screening accessibility in mobile or remote-clinic settings.

These limitations lead to delays, logistical burdens, and restricted access to rapid blood typing for donor screening, transfusion preparation or emergency use.

OVERVIEW OF BLOODEYE

BloodEye integrates:

  • 🧠 Convolutional Neural Network (CNN) for classifying blood groups (A, B, AB, O) from ocular images
  • 📸 Retinal / Eye-Image Capture Module enabling fundus or retina photo input
  • 📈 Result Dashboard showing classification probabilities and confidence scores
  • ⚠️ Automated Alerts when image quality is insufficient or classification confidence is low

PROPOSED SYSTEM

BloodEye supports non-invasive blood group detection and quick screening for transfusion, donation and clinical workflows. Data inputs include high-resolution eye or retina images, patient metadata (age, gender), and optionally fundus image metadata. A trained CNN model analyses these images to output a predicted blood group along with probability/confidence metrics and recommends the next steps (e.g., confirm with lab test, donor match).

MODULES

  • 📸 Image Capture & Pre-processing Module
  • 🧠 CNN-Based Blood Group Prediction Engine
  • 📊 Results Dashboard with blood-group classification probabilities and trend graphs
  • 📧 Notification & Alert System (email/SMS for low confidence or poor image quality)
  • 👩‍⚕️ Clinician Panel for review, verification and integration into donation / transfusion workflow

ADVANTAGES

  • ✅ Non-invasive blood group detection via eye images
  • ✅ Faster screening, reduced need for blood draw and reagents
  • ✅ Portable and scalable for mobile clinics or remote settings
  • ✅ Dashboard with confidence metrics helps in decision-support
  • ✅ Enhances donor screening, transfusion prep and rapid health workflows

SOFTWARE & TECH STACK

  • Backend: Python (Flask or Django)
  • ML Frameworks: TensorFlow / Keras (CNN models)
  • Image Processing: OpenCV, PIL
  • Frontend: React.js or HTML/CSS/JS
  • Database: MySQL or MongoDB

HARDWARE REQUIREMENTS

  • Processor: Intel i3 / AMD Ryzen 3 or higher
  • RAM: Minimum 4 GB (8 GB recommended for training CNNs)
  • Storage: 100 GB (for image datasets and model checkpoints)

DEMO VIDEO

Watch the demo for an overview and walk-through:

YouTube: https://youtu.be/PQzQFiYHLZc?si=PqQrPWk-i4oHAVwX

INCLUDED PACKAGE

The package includes: Base Paper, Complete Source Code, Complete Documentation, Presentation Slides (PPT), Flow Diagram (UML), Database File, Screenshots, Execution Procedure, ReadMe File, Add-ons & Supporting Software, Video Tutorials.

SUPPORT & SPECIALIZATION

  • Support via Ticketing System
  • Voice Conference Assistance
  • Video On Demand for Setup & Training
  • Remote Connectivity Support
  • Code Customization on Request
  • Document Customization Assistance
  • Live Chat Support

Contact: xpertieee@gmail.com

Explore more AI & ML healthcare projects at ieeexpert.com

CONCLUSION

BloodEye delivers a breakthrough non-invasive method for blood group detection via eye images, harnessing deep learning to speed up screening, enable remote deployment, and support clinical workflows.

Disclaimer: BloodEye is a decision-support tool, not a replacement for laboratory serology. Clinical validation and regulatory clearance are recommended before diagnostic use.

FAQ

How does BloodEye detect blood group from eye images?

It uses a CNN trained on large datasets of retinal/eye images labelled with known blood groups; image features are learned and mapped to classification outputs.Can this replace standard blood tests?

Not yet for definitive diagnosis—this is a screening and decision-support system. Confirmatory serology is still recommended.What types of images are required?

High-resolution fundus or retinal images captured via eye-imaging devices. Good lighting, focus and minimal artefact improve accuracy.

Published by: ieeexpert • Support: xpertieee@gmail.com