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Optimizing discharge after major surgery using an artificial intelligence–based decision support tool (DESIRE): An external validation study
18
Zitationen
10
Autoren
2022
Jahr
Abstract
This study showed that a previously developed machine learning concept can predict safe discharge in different surgical populations and hospital settings (academic versus nonacademic) by training a model on local patient data. Given its high accuracy, integration of the machine learning concept into the clinical workflow could expedite surgical discharge and aid hospitals in addressing capacity challenges by reducing avoidable bed-days.
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