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Machine learning in intensive care medicine: ready for take-off?

作者信息

Fleuren Lucas M, Thoral Patrick, Shillan Duncan, Ercole Ari, Elbers Paul W G

机构信息

Department of Intensive Care Medicine, Research VUmc Intensive Care (REVIVE), Amsterdam Medical Data Science (AMDS), Amsterdam Cardiovascular Sciences (ACS), Amsterdam Infection and Immunity Institute (AI&II), Amsterdam UMC, Location VUmc, VU Amsterdam, Amsterdam, The Netherlands.

Computational Intelligence Group, Department of Computer Science, VU Amsterdam, Amsterdam, The Netherlands.

出版信息

Intensive Care Med. 2020 Jul;46(7):1486-1488. doi: 10.1007/s00134-020-06045-y. Epub 2020 May 12.

DOI:10.1007/s00134-020-06045-y
PMID:32399747
Abstract
摘要

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