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M.D.: Grants: EU (EC-GA 603266 in HEALTH.2013.2.4.2-2) DFG (DE 1361\/14-1, DE 1361\/18-1\/2, BIOQIC GRK 2260\/1, Radiomics DE 1361\/19-1 [428222922] and 20-1 [428223139] in SPP 2177\/1), GUIDE-IT (DE 1361\/24-1), Berlin University Alliance (GC_SC_PC 27), G-BA (01NVF23002), Berlin Institute of Health (Digital Health Accelerator). Editor: Cardiac CT (Springer Nature). Other: Hands-on cardiac CT courses (www.ct-kurs.de) Institutional research agreements: Siemens, General Electric, Philips, Canon. Patent on fractal analysis of perfusion imaging (jointly with Florian Michallek, EPO 2022 EP3350773A1, and USPTO 2021 10,991,109, approved) M.D. is European Society of Radiology (ESR) Publications Chair (2022-2025); the opinions expressed in this presentation are the author\u2019s own and do not represent the view of ESR. 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