BACKGROUND: The rapid development in big data analytics and the data-rich environment of intensive care units together provide unprecedented opportunities for medical breakthroughs in the field of critical care. We developed and validated a machine learning-based model, the Pediatric Risk of Mortality Prediction Tool (PROMPT), for real-time prediction of all-cause mortality in pediatric intensive care units. METHODS: Utilizing two separate retrospective observational cohorts, we conducted model development and validation using a machine learning algorithm with a convolutional neural network. The development cohort comprised 1445 pediatric patients with 1977 medical encounters admitted to intensive care units from January 2011 to December 2...
Early detection of patient deterioration in the Intensive Care Unit (ICU) can play a crucial role in...
Background : The objective of this study was to evaluate the usefulness of the newest version of the...
Progress of machine learning in critical care has been difficult to track, in part due to absence of...
Purpose: Whilst survival in paediatric critical care has improved, clinicians lack tools capable of ...
Background. Prediction of mortality risk in intensive care units (ICU) is an important task. Data-dr...
Background: Cardiac arrest is the most serious death-related event in intensive care units (ICUs), ...
Background: Early warning scores aid in the detection of pediatric clinical deteriorations but inclu...
OBJECTIVES:. Develop and compare separate prediction models for ICU and non-ICU care for hospitalize...
The global healthcare system is being overburdened by an increasing number of COVID-19 patients. Phy...
Background: preterm and critically ill neonates often experience clinically suspected sepsis during ...
AbstractBackgroundEarly warning scores (EWS) are designed to identify early clinical deterioration b...
OBJECTIVES:. Pediatric Index of Mortality 3 is a validated tool including 11 variables for the asses...
Objectives:. To determine whether machine learning algorithms can better predict PICU mortality than...
Introduction: Severe traumatic brain injury (sTBI) is a leading cause of mortality in children. As c...
Background: There is a variety of mortality prediction models for patients in intensive care units (...
Early detection of patient deterioration in the Intensive Care Unit (ICU) can play a crucial role in...
Background : The objective of this study was to evaluate the usefulness of the newest version of the...
Progress of machine learning in critical care has been difficult to track, in part due to absence of...
Purpose: Whilst survival in paediatric critical care has improved, clinicians lack tools capable of ...
Background. Prediction of mortality risk in intensive care units (ICU) is an important task. Data-dr...
Background: Cardiac arrest is the most serious death-related event in intensive care units (ICUs), ...
Background: Early warning scores aid in the detection of pediatric clinical deteriorations but inclu...
OBJECTIVES:. Develop and compare separate prediction models for ICU and non-ICU care for hospitalize...
The global healthcare system is being overburdened by an increasing number of COVID-19 patients. Phy...
Background: preterm and critically ill neonates often experience clinically suspected sepsis during ...
AbstractBackgroundEarly warning scores (EWS) are designed to identify early clinical deterioration b...
OBJECTIVES:. Pediatric Index of Mortality 3 is a validated tool including 11 variables for the asses...
Objectives:. To determine whether machine learning algorithms can better predict PICU mortality than...
Introduction: Severe traumatic brain injury (sTBI) is a leading cause of mortality in children. As c...
Background: There is a variety of mortality prediction models for patients in intensive care units (...
Early detection of patient deterioration in the Intensive Care Unit (ICU) can play a crucial role in...
Background : The objective of this study was to evaluate the usefulness of the newest version of the...
Progress of machine learning in critical care has been difficult to track, in part due to absence of...