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Identifying and evaluating barriers for the implementation of machine learning in the intensive care unit
28
Zitationen
5
Autoren
2022
Jahr
Abstract
Based on the qualitative study and quantitative experiments we conclude that more research on practical solutions to enable AI-driven innovation in Intensive Care Units is needed. Furthermore, the general poor situation with respect to public, usable implementations of predictive models would appear to limit the possibilities for both the scientific repeatability of the underlying research and the transfer of this research into practice.
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