Abstract

Statistical and analytical methods using artificial intelligence approaches such as machine learning (ML) are increasingly being applied to the field of pediatrics, particularly to neonatology. This study compared the representative ML analysis and the logistic regression (LR), which is a traditional statistical analysis method, using them to predict mortality of very low birth weight infants (VLBWI). We included 7472 VLBWI data from a nationwide Korean neonatal network. Eleven predictor variables (neonatal factors: male sex, gestational age, 5 min Apgar scores, body temperature, and resuscitation at birth; maternal factors: diabetes mellitus, hypertension, chorioamnionitis, premature rupture of membranes, antenatal steroid, and cesarean delivery) were selected based on clinical impact and statistical analysis. We compared the predicted mortality between ML methods—such as artificial neural network (ANN), random forest (RF), and support vector machine (SVM)—and LR with a randomly selected training set (80%) and a test set (20%). The model performances of area under the receiver operating curve (95% confidence interval) equaled LR 0.841 (0.811–0.872), ANN 0.845 (0.815–0.875), and RF 0.826 (0.795–0.858). The exception was SVM 0.631 (0.578–0.683). No statistically significant differences were observed between the performance of LR, ANN, and RF (i.e., p > 0.05). However, the SVM model was lower (p < 0.01). We suggest that VLBWI mortality prediction using ML methods would yield the same prediction rate as the traditional statistical LR method and may be suitable for predicting mortality. However, low prediction rates are observed in certain ML methods; hence, further research is needed on these limitations and selecting an appropriate method.

Highlights

  • For treating critically ill newborns, the clinical situation or severity at the time of hospitalization often affects newborns’ subsequent death or morbidity [1,2]

  • This study aims to determine the best model for mortality prediction by comparing the predictive performances of logistic regression (LR), artificial neural network (ANN), random forest (RF), and support vector machine (SVM) models using data from the Korea Neonatal Network (KNN), which is a national-wide registry of newborns weighing less than 1500 g who are admitted to the neonatal intensive care unit (NICU)

  • A total of 10,425 very low birth weight infants (VLBWI) were registered during the study period: 2953 neonates were excluded from this study because of considerations including gestational age (GA), severe congenital anomalies, or missing values in their data

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Summary

Introduction

For treating critically ill newborns, the clinical situation or severity at the time of hospitalization often affects newborns’ subsequent death or morbidity [1,2]. The gestational age (GA) and birth weight (BW) of newborns affect prognosis; various neonatal severity assessment tools consider multiple conditions at the time of hospitalization [1–5]. Neonatal mortality or criticality assessments typically use general linear models, such as logistic regression (LR) analysis, to compare the influence of each risk factor; these models use prominent, influential factors as elements of assessment tools. Limitations of regression, such as overfitting and multicollinearity, exclude the analysis of many explanatory variables. These limitations impede analytical models that select a small set of variables relevant to the clinical model [7]

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