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.

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 image quality.

Glioblastomas are aggressive brain tumors requiring frequent MRI monitoring, which can be challenging due to lengthy scan times and motion artifacts. Traditional methods to shorten scan times, like parallel acquisition techniques (PAT) and compressed sensing (CS), have limitations such as reduced signal-to-noise ratio and overly smooth images.

The study, involving 33 patients, found that DL-optimized MRI sequences reduced scan time by 30% while enhancing image quality and maintaining diagnostic accuracy. These improvements are particularly beneficial for patients who struggle with lengthy MRI procedures, offering a promising advancement in glioblastoma care.

Read more about the study here.

Related Resources

Related Resources

Image showing MR image analysis using the dedicated semiautomatic software tool mint Lesion™

LMU Klinikum Munich: Monitoring Prostate Cancer Treatments with VTP and HIFU - The Use of Multiparametric MRI

The prospective study conducted by LMU Klinikum Munich investigates the treatment of localized prostate cancer using two techniques: vascular-targeted…

RACOON FADEN: Pioneering Early Detection of Adenomyosis – Insights from Prof. Mechsner (Charité Berlin) and Prof. May (University Hospital Erlangen)

Adenomyosis is a gynecological condition of the uterus and a form of endometriosis. Approximately 10 percent of women of reproductive age are affected…

Virtual examination of human lungs on a modern interface screen

Early Detection of Treatment Response in Lung Cancer Using Delta-Radiomics Features

The study conducted by Heidelberg University Hospital investigates the use of diffusion-weighted MRI (DWI) to predict early treatment outcomes in…