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Dr. Lubitz has received sponsored research support from Bristol Myers Squibb, Pfizer, Boehringer Ingelheim, Fitbit, Medtronic, Premier, and IBM, and has consulted for Bristol Myers Squibb, Pfizer, Blackstone Life Sciences, and Invitae. Dr. Anderson receives sponsored research support from Bayer AG and Massachusetts General Hospital and has consulted for ApoPharma. Dr. Weng receives sponsored research support from IBM to the Broad Institute. Dr. Ellinor has received sponsored research support from Bayer AG and IBM Health, and he has consulted for Bayer AG, Novartis and MyoKardia. Dr. Batra, Dr. Reeder and Dr. Friedman have received sponsored research support from Bayer AG and IBM Health. Dr. Ho and Dr. Khurshid have received sponsored research support from Bayer AG. The remaining authors declare no competing interests.","order":1,"name":"Ethics","group":{"name":"EthicsHeading","label":"Competing interests"}}],"article-number":"23"}}