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.

Radiologist using for medical image analysis

Advancing Real-World Federated Learning in Radiology

Federated Learning (FL) enables collaborative model training without data centralization – a crucial aspect for radiological image analysis where privacy regulations would otherwise hinder the use of centralized data lakes. Despite its promise, however, FL has largely been confined to simulated environments.

This study aims to bridge the gap between simulated and real-world FL research by developing an FL infrastructure within the German Radiological Cooperative Network (RACOON), a project by the Netzwerk Universitätsmedizin (NUM).

Using mint Lesion™ to process radiological images, the study’s results show FL outperforms these methods, underscoring its value in practical applications. The study also provides a guide for establishing FL initiatives, highlighting strategic organization and robust data management to aid future researchers in implementing FL in clinical settings.

Read more about the study here.

Related Resources

Related Resources

AI-powered quantification of bone metastasis in prostate cancer

Prostate cancer is the second most common cancer among men, and there are now effective treatments for the disease. New therapies available on the…

Radiologist’s AI-powered workflow

We all have been exposed to the riveting news of artificial intelligence tools taking over diagnostic imaging. Due to the rapid increase in global…

New mint Lesion 3.4 Software presented at RSNA 2017

With mint Lesion 3.4, reproducible assessment and structured reporting of significant image observations are easier than ever. Numerous improvements…