Early and accurate prediction of the need for intubation may provide more time for preparation and increase safety margins by avoiding high risk late intubation. This study evaluates whether machine learning can predict the need for intubation within 24 h using commonly available bedside and laboratory parameters taken at critical care admission. We extracted data from 2 large critical care databases (MIMIC-III and eICU-CRD). Missing variables were imputed using autoencoder. Machine learning classifiers using logistic regression and random forest were trained using 60% of the data and tested using the remaining 40% of the data. We compared the performance of logistic regression and random forest models to predict intubation in critically il...
Intensive Care Unit (ICU) readmission is a serious adverse event associated with high mortality rate...
Progress of machine learning in critical care has been difficult to track, in part due to absence of...
Progress of machine learning in critical care has been difficult to track, in part due to absence of...
Maasstad Hospital is a member of the Santeon hospital group. The ambition of Santeon is to improve h...
Background: Owing to the shortage of ventilators, there is a crucial demand for an objective and acc...
Background Prognostication is an essential tool for risk adjustment and decision making in the inten...
Early detection of patient deterioration in the Intensive Care Unit (ICU) can play a crucial role in...
Early detection of patient deterioration in the Intensive Care Unit (ICU) can play a crucial role in...
BACKGROUND: Prognostication is an essential tool for risk adjustment and decision making in the inte...
BACKGROUND:Prognostication is an essential tool for risk adjustment and decision making in the inten...
Hospital intensive care units (ICUs) care for severely ill patients, many of whom require some form ...
Background: Predicting severe respiratory failure due to COVID-19 can help triage patients to higher...
This study aimed to construct machine learning (ML) models for predicting prolonged length of stay (...
Background: Mechanically ventilated patients in the intensive care unit (ICU) have high mortality ra...
Objectives Enhancing critical care efficacy involves evaluating and improving system functioning. Be...
Intensive Care Unit (ICU) readmission is a serious adverse event associated with high mortality rate...
Progress of machine learning in critical care has been difficult to track, in part due to absence of...
Progress of machine learning in critical care has been difficult to track, in part due to absence of...
Maasstad Hospital is a member of the Santeon hospital group. The ambition of Santeon is to improve h...
Background: Owing to the shortage of ventilators, there is a crucial demand for an objective and acc...
Background Prognostication is an essential tool for risk adjustment and decision making in the inten...
Early detection of patient deterioration in the Intensive Care Unit (ICU) can play a crucial role in...
Early detection of patient deterioration in the Intensive Care Unit (ICU) can play a crucial role in...
BACKGROUND: Prognostication is an essential tool for risk adjustment and decision making in the inte...
BACKGROUND:Prognostication is an essential tool for risk adjustment and decision making in the inten...
Hospital intensive care units (ICUs) care for severely ill patients, many of whom require some form ...
Background: Predicting severe respiratory failure due to COVID-19 can help triage patients to higher...
This study aimed to construct machine learning (ML) models for predicting prolonged length of stay (...
Background: Mechanically ventilated patients in the intensive care unit (ICU) have high mortality ra...
Objectives Enhancing critical care efficacy involves evaluating and improving system functioning. Be...
Intensive Care Unit (ICU) readmission is a serious adverse event associated with high mortality rate...
Progress of machine learning in critical care has been difficult to track, in part due to absence of...
Progress of machine learning in critical care has been difficult to track, in part due to absence of...