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.

Radiological Cooperative Network (RACOON)

RACOON - What's Next?

Since mid-2020, mint Lesion™ has been successfully used within the Radiological Cooperative Network (RACOON), in the University Medicine Network which unites all 38 university hospitals in Germany. RACOON was the first project of this scale to establish a nationwide infrastructure for the structured collection of radiological data from COVID-19 cases.

As an industry partner, Mint Medical provides the technological basis ("RACOON Base") for the collection and analysis of radiological data. mint Lesion™ plays a central role in the project, forming the backbone of the RACOON infrastructure and making all patient information documented on site (e.g., lab values, treatment history, etc.) available to the users via interfaces between the reporting platform and other local data sources (RIS, HIS, etc.). The reporting process delivered by mint Lesion™ fulfils all requirements for data completeness, traceability and conformity with guidelines, thereby ensuring the implementation of good scientific practice.

The project initially started as a platform for the acquisition and analysis of radiological data from COVID-19 cases, however, it soon became evident that the created infrastructure has a high scaling potential and can also be extended to numerous other areas of application. The network will therefore be expanded in the coming years (2022 - 2024), both through further development of the basic infrastructure and through the integration of new application areas, e.g., in the fields of neurological, cardiological, and pediatric imaging.

Related Resources

Related Resources

mint Lesion screenshot with HCC diagnosis according to APASL, AASLD, LI-RADS, KLCA-NCC, and EASL guidelines

Multicentric Study: Comparison of Diagnostic Guidelines for Hepatocellular Carcinoma

Recent advancements in MRI techniques and tumor biology have led to updated hepatocellular carcinoma (HCC) diagnostic guidelines from various liver…

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…

Schematic visualization of the federated learning study and its data infrastructure

RACOON: A Guide to Bridging the Gap Between Simulated and Real-World Federated Learning Research

Deep learning (DL) has become an important part of radiological image analysis. To train these deep-learning models, access to large and diverse…