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O.F. has received honoraria from the European Society of Medical Oncology (ESMO). O.F. is an Associated Editor for npj Digital Medicine. S.G. is an advisory group member of the Ernst & Young-coordinated \u201cStudy on Regulatory Governance and Innovation in the field of Medical Devices\u201d conducted on behalf of the Directorate-General for Health and Food Safety of the European Commission. S.G. has or has had consulting relationships with Una Health GmbH, Lindus Health Ltd, Flo Ltd, Thymia Ltd, FORUM Institut f\u00fcr Management GmbH, High-Tech Gr\u00fcnderfonds Management GmbH, and Ada Health GmbH, and he holds share options in Ada Health GmbH. S.G. is a News and Views Editor for npj Digital Medicine. S.Z. serves as chair of the Expert Panel on Medical Devices \u201cRespiratory system, anesthesiology, intensive care\u201d for the European Medicines Agency\/European Commission. All other authors declare no competing interests.","order":1,"name":"Ethics","group":{"name":"EthicsHeading","label":"Competing interests"}}],"article-number":"322"}}