Potential of using structured data from clinical trials and routine for AI and radiomics research

Dr. Nils Grosse Hokamp shares his experience of using mint Lesion™ at the University Hospital Cologne in this brief interview. He talks about how they have expanded their usage of mint Lesion™ over the years, how it has changed their clinical studies, and his view on the potential of structured data for research.

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