Integrating metabolic expenditure information from wearable fitness sensors into an AI-augmented automated insulin delivery system: a randomised clinical trial
Peter G. Jacobs(Oregon Health & Science University), Jessica R. Castle(Oregon Health & Science University), Joseph Leitschuh(Oregon Health & Science University), Joseph El Youssef(Oregon Health & Science University), Gavin Young(Oregon Health & Science University), Wade Hilts(Oregon Health & Science University), Joseph Pinsonault(Oregon Health & Science University), Navid Resalat(Oregon Health & Science University), Robert H. Dodier(Oregon Health & Science University), Jae Eom(Oregon Health & Science University), Katrina Ramsey(Oregon Health & Science University), Clara Mosquera-Lopez(Artificial Intelligence in Medicine (Canada)), Deborah Branigan(Oregon Health & Science University), Virginia Gabo(Oregon Health & Science University), Leah M. Wilson(Oregon Health & Science University)
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