You may be trying to access this site from a secured browser on the server. Please enable scripts and reload this page.
Turn on more accessible mode
Turn off more accessible mode
Skip Ribbon Commands
Skip to main content
Turn off Animations
Turn on Animations
Sign In
QU Home
العربية
عربي
It looks like your browser does not have JavaScript enabled. Please turn on JavaScript and try again.
MWC Economic Forum
Currently selected
Image Viewer
CardioVision
Page Content
Tag Name: CardioVision
Transforming echo into MRI precision.
An AI-powered cardiac imaging platform that converts echocardiography into high-quality MRI-style heart views.
Discover CardioVision — Redefining Cardiac Imaging Intelligence
CardioVision is a pioneering artificial intelligence platform designed to transform standard echocardiography (ultrasound) images into high-quality synthetic cardiac MRI views — without requiring MRI hardware.
By leveraging advanced deep-learning transformer architecture, CardioVision synthesizes artifact-free, high-contrast cardiac MRI-style images directly from ultrasound data, enhancing clarity, contrast, and diagnostic interpretability.
This innovation bridges the gap between accessibility and advanced imaging — delivering MRI-level visual insight from widely available ultrasound systems.
Introduction
Echocardiography is widely used due to its affordability, portability, and safety. However, it is often limited by:
Operator dependency
Acoustic artifacts
Lower contrast resolution
Limited structural clarity
Cardiac MRI, on the other hand, provides superior soft-tissue contrast and anatomical detail but requires expensive equipment, long acquisition times, and specialized facilities.
CardioVision combines the strengths of both.
Using AI-driven image transformation, the platform converts echo images into synthetic MRI-style views, offering enhanced visualization of cardiac structures without additional hardware.
Inventors
1
Serkan Kiranyaz
2
Ilke Adalioglu
3
Mete Ahishali
4
Aysen Degerli
5
Tahir Hamid
6
Rahmat Ghaffar
7
Ridha Hamila
8
Moncef Gabbouj
Main Features
AI-Based Image Transformation
Transforms standard ultrasound into synthetic cardiac MRI views using deep learning models.
Artifact Reduction
Generates clearer, high-contrast images with reduced noise and distortion.
Hardware-Free Upgrade
Requires no MRI scanner — works with existing echocardiography systems.
Enhanced Diagnostic Visualization
Improves structural clarity for better cardiac assessment.
Scalable Software Integration
Can be integrated into hospital PACS systems and ultrasound devices.
Strategic Opportunities
Hospital & Clinical Imaging
Enhances diagnostic capabilities without additional capital equipment.
Telemedicine & Remote Care
Provides advanced imaging insight in resource-limited settings.
Healthcare Cost Optimization
Reduces need for expensive MRI referrals when appropriate.
AI-Driven Medical Imaging
Aligns with digital hospital transformation and smart healthcare initiatives.
Value Proposition
MRI-Level Insight, Without MRI Hardware
Brings advanced imaging quality to standard ultrasound systems.
Increased Accessibility
Enables advanced cardiac imaging in regions lacking MRI infrastructure.
Faster Clinical Workflow
Reduces patient waiting time and imaging bottlenecks.
Cost-Effective Innovation
Software-based solution with high scalability and low deployment cost.
Proof of Concept Ready
Validated transformation pipeline demonstrating feasibility.
Status of the Invention
Intellectual Property Filed (QU2025-004)
Proof of Concept Completed
Early-stage validation achieved
Invitation to Industry — Collaborate With Us
Join us in transforming cardiac diagnostics. CardioVision is ready for:
Licensing & commercialization
Medical imaging software integration
Hospital pilot deployment
AI-health partnerships
Clinical validation studies
With strong research backing from Qatar University, CardioVision represents a breakthrough in AI-powered cardiac imaging — expanding access to advanced diagnostic clarity worldwide.
Connect With Us
Innovation Office — Qatar University |
+974-4403-7197 |
QU.IP@qu.edu.qa
IP Number:
QU2025-004