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ERG is an advisory board member for Blue Earth Diagnostics. BR is on the advisory board for ARIA, Butterfly, Inc., DGMIF (Daegu-Gyeongbuk Medical Innovation Foundation), QMENTA, Subtle Medical, Inc., is a consultant for Broadview Ventures, Janssen Scientific, ECRI Institute, GlaxoSmithKine, Hyperfine Research, Inc., Peking University, Wolf Greenfield, Superconducting Systems, Inc., Robins Kaplin, LLC, Millennium Pharmaceuticals, GE Healthcare, Siemens, Quinn Emanuel Trial Lawyers, Samsung, Shenzhen Maternity and Child Healthcare Hospital, and is a founder of BLINKAI Technologies, Inc. PB is a consultant for Angiochem, Lilly, Tesaro, Genentech-Roche; has received honoraria from Genentech-Roche and Merckl and has received institutional funding from Merck and Pfizer. SMT receives institutional research funding from Novartis, Genentech, Eli Lilly, Pfizer, Merck, Exelixis, Eisai, Bristol Meyers Squibb, AstraZeneca, Cyclacel, Immunomedics, Odenate, and Nektar. 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