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However, some of the authors are consultants for the medical industry and received grants not related to this study. Albert Hsiao is a founder and consultant for Arterys Inc. and receives grant support from GE Healthcare, Bayer AG, and the American Roentgen Ray Society as an ARRS Scholar, unrelated to this study. Brian Hurt provides consulting services to Imidex Inc unrelated to this study, and supported by the NIH T32EB005970. Amelie M. Lutz receives research funding from GE Healthcare and material support from Bracco Diagnostics Inc. for projects not related to this study. Kathryn J. Stevens receives research funding from GE Healthcare for projects not related to this study.","order":3,"name":"Ethics","group":{"name":"EthicsHeading","label":"Conflict of Interest"}}]}}