Purpose: The aims of the study were to develop and evaluate a machine learning model with which to predict postnatal growth failure (PGF) among very low birth weight (VLBW) infants. Materials and methods: Of 10425 VLBW infants registered in the Korean Neonatal Network between 2013 and 2017, 7954 infants were included. PGF was defined as a decrease in Z score >1.28 at discharge, compared to that at birth. Six metrics [area under the receiver operating characteristic curve (AUROC), accuracy, precision, sensitivity, specificity, and F1 score] were obtained at five time points (at birth, 7 days, 14 days, 28 days after birth, and at discharge). Machine learning models were built using four different techniques [extreme gradient boosting (XGB), ...
IntroductionAccurate prediction of long-term neurodevelopmental outcome is currently not possible fo...
Abstract: In this research, an Artificial Neural Network (ANN) model was developed and tested to pre...
© 2017 The Author(s). Background: Compared to very low gestational age (<32 weeks, VLGA) cohorts, ve...
Postnatal growth failure (PGF) in preterm infants remains an important clinical issue. In this study...
Statistical and analytical methods using artificial intelligence approaches such as machine learning...
We aimed to evaluate risk factors for growth failure in very low birth weight (VLBW) infants at 18-2...
PURPOSE: The goal of nutritional support for very-low-birth-weight (VLBW) infants from birth to term...
Estimation of mortality risk of very preterm neonates is carried out in clinical and research settin...
Abstract Background Low birth weight (LBW) has been linked to infant mortality. Predicting LBW is a ...
Summary: Background: Infants born extremely preterm (<28 weeks’ gestation) are at high risk of neur...
With advancements in neonatal care and nutrition, the postnatal growth of preterm infants has improv...
BACKGROUND AND OBJECTIVES: Outcome prediction of preterm birth is important for neonatal care, yet p...
BACKGROUND: Machine learning has been attracting increasing attention for use in healthcare applicat...
The prediction of long-term outcomes in surviving infants born very preterm (VPT) or with very low b...
Metadata only. Full text available at links above.OBJECTIVE: To evaluate the impact of birth weight...
IntroductionAccurate prediction of long-term neurodevelopmental outcome is currently not possible fo...
Abstract: In this research, an Artificial Neural Network (ANN) model was developed and tested to pre...
© 2017 The Author(s). Background: Compared to very low gestational age (<32 weeks, VLGA) cohorts, ve...
Postnatal growth failure (PGF) in preterm infants remains an important clinical issue. In this study...
Statistical and analytical methods using artificial intelligence approaches such as machine learning...
We aimed to evaluate risk factors for growth failure in very low birth weight (VLBW) infants at 18-2...
PURPOSE: The goal of nutritional support for very-low-birth-weight (VLBW) infants from birth to term...
Estimation of mortality risk of very preterm neonates is carried out in clinical and research settin...
Abstract Background Low birth weight (LBW) has been linked to infant mortality. Predicting LBW is a ...
Summary: Background: Infants born extremely preterm (<28 weeks’ gestation) are at high risk of neur...
With advancements in neonatal care and nutrition, the postnatal growth of preterm infants has improv...
BACKGROUND AND OBJECTIVES: Outcome prediction of preterm birth is important for neonatal care, yet p...
BACKGROUND: Machine learning has been attracting increasing attention for use in healthcare applicat...
The prediction of long-term outcomes in surviving infants born very preterm (VPT) or with very low b...
Metadata only. Full text available at links above.OBJECTIVE: To evaluate the impact of birth weight...
IntroductionAccurate prediction of long-term neurodevelopmental outcome is currently not possible fo...
Abstract: In this research, an Artificial Neural Network (ANN) model was developed and tested to pre...
© 2017 The Author(s). Background: Compared to very low gestational age (<32 weeks, VLGA) cohorts, ve...