Abstract

While machine learning approaches may enhance prediction ability, little is known about their utility in emergency department (ED) triage. To examine the performance of machine learning approaches to predict clinical outcomes and disposition in children in the ED and to compare their performance with conventional triage approaches. Prognostic study of ED data from the National Hospital Ambulatory Medical Care Survey from January 1, 2007, through December 31, 2015. A nationally representative sample of 52 037 children aged 18 years or younger who presented to the ED were included. Data analysis was performed in August 2018. The outcomes were critical care (admission to an intensive care unit and/or in-hospital death) and hospitalization (direct hospital admission or transfer). In the training set (70% random sample), using routinely available triage data as predictors (eg, demographic characteristics and vital signs), we derived 4 machine learning-based models: lasso regression, random forest, gradient-boosted decision tree, and deep neural network. In the test set (the remaining 30% of the sample), we measured the models' prediction performance by computing C statistics, prospective prediction results, and decision curves. These machine learning models were built for each outcome and compared with the reference model using the conventional triage classification information. Of 52 037 eligible ED visits by children (median [interquartile range] age, 6 [2-14] years; 24 929 [48.0%] female), 163 (0.3%) had the critical care outcome and 2352 (4.5%) had the hospitalization outcome. For the critical care prediction, all machine learning approaches had higher discriminative ability compared with the reference model, although the difference was not statistically significant (eg, C statistics of 0.85 [95% CI, 0.78-0.92] for the deep neural network vs 0.78 [95% CI, 0.71-0.85] for the reference; P = .16), and lower number of undertriaged critically ill children in the conventional triage levels 3 to 5 (urgent to nonurgent). For the hospitalization prediction, all machine learning approaches had significantly higher discrimination ability (eg, C statistic, 0.80 [95% CI, 0.78-0.81] for the deep neural network vs 0.73 [95% CI, 0.71-0.75] for the reference; P < .001) and fewer overtriaged children who did not require inpatient management in the conventional triage levels 1 to 3 (immediate to urgent). The decision curve analysis demonstrated a greater net benefit of machine learning models over ranges of clinical thresholds. Machine learning-based triage had better discrimination ability to predict clinical outcomes and disposition, with reduction in undertriaging critically ill children and overtriaging children who are less ill.

Highlights

  • Of 137 million annual emergency department (ED) visits in the United States, 30 million visits are made by children.[1,2,3] With the steady increase in the volume and acuity of patient visits to EDs,[4] accurate differentiation and prioritization of patients at the ED triage is important

  • For the critical care prediction, all machine learning approaches had higher discriminative ability compared with the reference model, the difference was not statistically significant, and lower number of undertriaged critically ill children in the conventional triage levels 3 to 5

  • The objective of the present study was not to derive prediction models using a broad set of predictors but to develop machine learning models to harness a limited set of clinical data that are currently available in the typical ED triage setting. In this analysis of nationally representative data of children presenting to the ED, by using data routinely available at the time of triage, we found that the application of machine learning approaches to ED triage improved the discriminative ability to predict clinical and disposition outcomes compared with the conventional triage approach

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Summary

Introduction

Machine learning approaches have attracted attention because of their superior ability to predict patient outcomes compared with traditional approaches in various settings and disease conditions (eg, sepsis and unplanned transfers to the intensive care unit [ICU]).[9,10,11,12,13,14,15] The advantages of machine learning approaches include their ability to process complex nonlinear relationships between predictors and yield more stable predictions.[16] For example, a recent 2-center retrospective study using one of the machine learning approaches reported an improved triage classification in a general ED population.[5] While these prior studies suggest that machine learning approaches may improve the decision-making ability at the ED triage, no study, to our knowledge, has investigated the utility of machine learning approaches to predict clinical outcomes and disposition of children in the ED. In the current triage settings with limited resources and time pressure, it is not feasible for ED providers to use all information available without the use of automated machine learning approaches

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