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Stock option holder of LVIS Corp. A.J. No relevant relationships. L.Y.C. No relevant relationships. H.S.N. No relevant relationships. M.P. No relevant relationships. C.G. No relevant relationships. B.A.A. No relevant relationships. A.K. No relevant relationships. D.L. No relevant relationships. A.W.C. No relevant relationships. M.I. No relevant relationships. D.B.L. Member of the Board of Chancellors of the American College of Radiology and Board of Trustees of the American Board of Radiology, shareholder in Bunkerhill Health; receives research funding from the Gordon and Betty Moore Foundation. A.S.C. receives research support from NIH grants R01 HL167974, R01HL169345, R01 AR077604, R01 EB002524, R01 AR079431, P41 EB027060; ARPA-H grants AY2AX000045 and 1AYSAX0000024-01; and NIH contracts 75N92020C00008 and 75N92020C00021.Unrelated to this work, A.S.C. receives research support from GE Healthcare, Philips, Microsoft, Amazon, Google, NVIDIA, Stability; has provided consulting services to Patient Square Capital, Chondrometrics GmbH, and Elucid Bioimaging; is co-founder of Cognita; has equity interest in Cognita, Subtle Medical, LVIS Corp, and Brain Key.","order":1,"name":"Ethics","group":{"name":"EthicsHeading","label":"Competing interests"}}],"article-number":"608"}}