AI Imaging Enhancement
Products in the AI Imaging Enhancement category help upgrade existing imaging products by taking image outputs and using machine learning to reduce imaging time, enhance resolution, and reduce noise. This allows imaging labs to serve more customers while delivering high-quality, accurate results.
Areas of differentiation to consider include:
Body parts and conditions that the product is approved for
Interoperability across multiple imaging devices
Reduction in scan time enabled for quality images
Testing across multiple levels of field strength and contrast
3 Results
Sort
Filter
Customers Served
Headcount
Security Certifications
Want to see a product listed?
AIRS Medical
Claimed
AIRSMed SwiftMR
Company Info
Founded: 2018
Headcount: 51-200
Customers
Customers Served: Imaging Labs, Hospital / Health System
Product Overview
Security and Compliance Certifications: SOC 2 Type 1, ISO 13485, HIPAA, ISO 17018, ISO 27017, ISO 27001
SwiftMR by AIRS Medical is an FDA-approved AI imaging enhancement tool that reduces MRI scan times from 30-40 minutes to 15 minutes while both de-noising and enhancing image sharpness. SwiftMR does not require any hardware upgrades, and works on both Siemens and GE devices.
Medic Vision
Medic Vision iQMR
Company Info
Founded: 2006
Headcount: 11-50
Customers
Customers Served: Imaging Labs, Hospital / Health System
Product Overview
Security and Compliance Certifications: HIPAA
Medic Vision iQMR (Intelligent Quick Magnetic Resonance) employs proprietary 3D iterative image enhancement algorithms to speed up MRI scan times by 40% and enhance image quality. It is FDA-cleared for use on all body parts and compatible with all MRI scanners. This helps improves the efficiency of medical imaging and reduces scan time discomfort for patients.
Subtle Medical
Subtle Medical
Company Info
Founded: 2017
Headcount: 51-200
Customers
Customers Served: Imaging Labs, Hospital / Health System
Product Overview
Security and Compliance Certifications: SOC 2 Type 2, HIPAA
SubtleMR enhances the quality of MRI scans while decreasing scan times using deep learning, improving the clarity and detail of images. This allows for faster scanning processes, which can reduce patient discomfort and improve throughput in imaging facilities. The software integrates directly with existing MRI systems without needing hardware changes.