AIRS Medical Launches Update of AI-Powered MRI Software SwiftMR

News
Article

The updated capabilities of SwiftMR include personalized scan settings within the software, artifact reduction and cloud integration.

SwiftMR, an AI-enabled software that reportedly facilitates up to a 50 percent reduction in MRI scan times, has a variety of newly updated capabilities.

AIRS Medical, the manufacturer of SwiftMR, emphasized enhanced adaptability with the ability to personalize MRI scan settings within the SwiftMR software and fine-tune protocols.

AIRS Medical Launches Update of AI-Powered MRI Software SwiftMR

Here one can see the use of SwiftMR for brain MRI. Newly released upgrades of the AI-powered software include personalized scan settings within the software, improved artifact reduction and cloud integration. (Images courtesy of AIRS Medical.)

Other key attributes of the SwiftMR software upgrade include improved artifact reduction, cloud integration and bolstered security enhancements, according to AIRS Medical.

"This update is about giving SwiftMR users the ability to adapt in real-time to both clinical and operational demands," said Jina Park, chief strategy officer and head of U.S. operations at AIRS Medical. "It reflects our commitment to helping imaging providers deliver faster, more personalized care."

Newsletter

Stay at the forefront of radiology with the Diagnostic Imaging newsletter, delivering the latest news, clinical insights, and imaging advancements for today’s radiologists.

Recent Videos
Can Generative AI Reinvent Radiology Reporting?: An Interview with Samir Abboud, MD
Combining Advances in Computed Tomography Angiography with AI to Enhance Preventive Care
Study: MRI-Based AI Enhances Detection of Seminal Vesicle Invasion in Prostate Cancer
What New Research Reveals About the Impact of AI and DBT Screening: An Interview with Manisha Bahl, MD
Can AI Assessment of Longitudinal MRI Scans Improve Prediction for Pediatric Glioma Recurrence?
A Closer Look at MRI-Guided Adaptive Radiotherapy for Monitoring and Treating Glioblastomas
New Mammography Studies Assess Image-Based AI Risk Models and Breast Arterial Calcification Detection
Can Deep Learning Provide a CT-Less Alternative for Attenuation Compensation with SPECT MPI?
Employing AI in Detecting Subdural Hematomas on Head CTs: An Interview with Jeremy Heit, MD, PhD
Pertinent Insights into the Imaging of Patients with Marfan Syndrome
Related Content
© 2025 MJH Life Sciences

All rights reserved.