Artificial Intelligence and Machine Learning for Improving Glycemic Control in Diabetes: Best Practices, Pitfalls, and Opportunities
Peter G. Jacobs(Oregon Health & Science University), Clara Mosquera-Lopez(Artificial Intelligence in Medicine (Canada)), Jessica R. Castle(Oregon Health & Science University), Tadej Battelino(Ljubljana University Medical Centre), Ali Çınar(Illinois Institute of Technology), Konstantia Zarkogianni(National Technical University of Athens), Josep Vehı́(Universitat de Girona), Boris Kovatchev(University of Virginia), Andrea Facchinetti(University of Padua), Francis J. Doyle(Brown University), Rahul Narayan(Oregon Health & Science University), Konstantina S. Nikita(National Technical University of Athens), Pau Herrero(Roche (Spain)), Marc D. Breton(University of Virginia), Jorge Bondía
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