Stay Informed: Transforming Radiology with Structured Reporting and Data-Driven Approaches

Dive into our activities, projects, and product updates. Catch on the latest industry news and learn who we are as a company and as a team.

New Technique Speeds Up Whole-Body MRI for Children Without Sacrificing Image Quality, Study Finds

As we mark Childhood Cancer Awareness Month, we would like to highlight the progress achieved in the realm of cancer diagnostics. A recent study led by Dr. med. Paul-Christian Krüger and his team from the Universitätsklinikum Jena sheds light on an innovative approach to whole-body MRI in children and adolescents using an advanced sequence that significantly reduces the time needed for the imaging procedure without compromising the quality of the images.

Such steadfast dedication to securing young patients' safety and comfort is truly heartwarming. This commitment motivates researchers to continuously perfect and elevate diagnostic methods while paving the way for progress in the early detection and treatment of childhood cancer.

Learn more about this study with mint Lesion™.

Related Resources

Related Resources

The image serves as a graphical abstract, displaying visuals from the study, ranging from MRI scans to the analysis of delta-radiomics texture features

Heidelberg University Hospital: Delta-Radiomics Features from ADC Maps as Early Predictors of Treatment Success in Lung Cancer Therapy

In this prospective study conducted by Heidelberg University Hospital, researchers investigated whether changes in radiomic features from…

Doctors looking at MRI scans to evaluate a glioblastoma.

Optimizing Glioblastoma Imaging: Enhancing MRI Efficiency and Quality with Deep Learning

This study investigates the use of deep learning (DL) to optimize MRI protocols for glioblastoma patients, aiming to reduce scan time and improve…

Three important sequences (FLAIR, T2, T1 with contrast agent) in the assessment of glioblastoma

University Hospital Tübingen: Advancing MRI Efficiency in Glioblastoma Care with Deep Learning

This study explores the use of deep learning (DL) to optimize MRI protocols for glioblastoma patients. Glioblastomas, known for being the most…