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Machine learning model for predicting the optimal depth of tracheal tube insertion in pediatric patients: A retrospective cohort study
16
Zitationen
6
Autoren
2021
Jahr
Abstract
In this study, the machine learning models predicted the optimal tracheal tube tip location for pediatric patients more accurately than the formula-based methods. Machine learning models using biometric variables may help clinicians make decisions regarding optimal tracheal tube depth in pediatric patients.
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