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.

A computer screen shows the user interface of mint Lesion™  on which the analytical evaluation of a scan can be seen

Brainlab and Mint Medical Enter Cooperation with the German Society for Orthopedics and Orthopedic Surgery

Today Mint Medical together with Brainlab entered into a cooperation with the German Society for Orthopedics and Orthopedic Surgery (DGOOC) and its non-profit subsidiary, RSG Register Solutions to develop a data protection-compliant registry infrastructure for patient data processing and thus strengthen medical research across healthcare institutions.

Mint Medical’s software is already being used in all 38 German university hospitals as part of the University Medicine Network RACOON project to record and categorize medical imaging and other data from Covid patients. Through the partnership with RSG, Mint Medical can now expand its registry offering and securely correlate patient data across hospitals and throughout patient treatment while maintaining strict data protection criteria.

Click here to read the full press release.

Related Resources

Related Resources

Medical personnel looking at a technical device to discuss diagnostic guidelines

2,237 Patients, 11 Hospitals, four HCC Criteria: A Comparison Study

A recent study, conducted across 11 South Korean hospitals, compared the diagnostic performance of four hepatocellular carcinoma (HCC) diagnostic…

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…