Effect of a Machine Learning–Derived Early Warning System for Intraoperative Hypotension vs Standard Care on Depth and Duration of Intraoperative Hypotension During Elective Noncardiac Surgery
Marije Wijnberge(Centre for the Study of the Economies of Africa), Denise P. Veelo(Inserm), Jimmy Schenk(Amsterdam University Medical Centers), Lotte E. Terwindt(Amsterdam University Medical Centers), P. -G. Berge(Amsterdam University Medical Centers), Bart F. Geerts(University of Milano-Bicocca), Markus W. Hollmann(European Society of Anaesthesiology), Alexander P. J. Vlaar(University of Amsterdam), Marijn P. Mulder(University of Twente), Nikki Lemmers(Amsterdam University Medical Centers), Liselotte Hol(Apple (Israel))
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