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Interview with Prof. Timm Denecke about the RACOON-MARDER project and AI-powered early detection of liver cancer using MRI

Rethinking Early Detection: How RACOON-MARDER Aims to Spot Liver Cancer Sooner

Hepatocellular carcinoma (HCC) is often diagnosed too late, limiting treatment options and survival. The RACOON-MARDER project aims to change that. By combining MRI imaging, clinical data, and AI-based risk stratification, researchers hope to identify high-risk patients earlier and enable personalized, intensified surveillance beyond what traditional ultrasound can offer.

In this interview, Prof. Dr. Timm Denecke (University Hospital Leipzig) explains how AI can make the invisible visible - and why the RACOON infrastructure is key to advancing liver cancer research.

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Image of doctor looking at a prostate in mint Lesion.
Prof. Dr. Thorsten Persigehl from University Hospital Cologne discusses the use of structured reporting and AI in prostate diagnostics with mint Lesion.
Structured Reporting and AI in Radiology: Efficiency and Quality in Prostate Diagnostics
How are structured reporting and artificial intelligence transforming radiology practice? Prof. Dr. Thorsten Persigehl from University Hospital…
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Dr. Madelaine Hettler from University Medical Center Mannheim discusses the RACOON-SAGA project and how it improves sarcoma diagnostics.
The interdisciplinary research project RACOON-SAGA combines functional MRI data and clinical information to enhance the pre-therapeutic characterization of soft tissue sarcomas.
Rare Tumors, Big Goals: How RACOON-SAGA Aims to Improve Therapy Decisions
Rare tumors, major challenges: The RACOON-SAGA project explores how imaging and clinical data can improve the pre-therapeutic characterization of soft…
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The Template Designer in Use: Interview with Dr. Madelaine Hettler
Structured, well-organized data are the foundation of meaningful research. But how can they be captured effectively in practice? Dr. Madelaine…
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