2023
DOI: 10.1038/s41598-023-32122-5
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Predicting the risk of inappropriate depth of endotracheal intubation in pediatric patients using machine learning approaches

Abstract: Endotracheal tube (ET) misplacement is common in pediatric patients, which can lead to the serious complication. It would be helpful if there is an easy-to-use tool to predict the optimal ET depth considering in each patient’s characteristics. Therefore, we plan to develop a novel machine learning (ML) model to predict the appropriate ET depth in pediatric patients. This study retrospectively collected data from 1436 pediatric patients aged < 7 years who underwent chest x-ray examination in an intubated sta… Show more

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