Abstract

Background: Pediatric myocarditis is a rare disease. The etiologies are multiple. Mortality associated with the disease is 5–8%. Prognostic factors were identified with the use of national hospitalization databases. Applying these identified risk factors for mortality prediction has not been reported.Methods: We used the Kids' Inpatient Database for this project. We manually curated fourteen variables as predictors of mortality based on the current knowledge of the disease, and compared performance of mortality prediction between linear regression models and a machine learning (ML) model. For ML, the random forest algorithm was chosen because of the categorical nature of the variables. Based on variable importance scores, a reduced model was also developed for comparison.Results: We identified 4,144 patients from the database for randomization into the primary (for model development) and testing (for external validation) datasets. We found that the conventional logistic regression model had low sensitivity (~50%) despite high specificity (>95%) or overall accuracy. On the other hand, the ML model struck a good balance between sensitivity (89.9%) and specificity (85.8%). The reduced ML model with top five variables (mechanical ventilation, cardiac arrest, ECMO, acute kidney injury, ventricular fibrillation) were sufficient to approximate the prediction performance of the full model.Conclusions: The ML algorithm performs superiorly when compared to the linear regression model for mortality prediction in pediatric myocarditis in this retrospective dataset. Prospective studies are warranted to further validate the applicability of our model in clinical settings.

Highlights

  • Pediatric myocarditis is a rare disease of children

  • Using a national pediatric hospitalization database, we recently identified additional comorbidities that were associated with increased mortality and prolonged length of hospital stay; these comorbidities included brain injury, acute kidney injury (AKI), sepsis and coagulopathy [4]

  • With the recent widespread adoption of machine learning (ML) algorithms in predictive model development, we aimed to compare the performance of traditional logistic regression models to that of ML-based models in pediatric myocarditis mortality prediction

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Summary

Introduction

Pediatric myocarditis is a rare disease of children. The etiologies are multiple, including viral, immune-mediated, and toxin-mediated [1]. One study showed increased risk of mortality in younger children [3]. Another study showed a higher prevalence of ventricular tachyarrhythmias, a predictor of mortality, in Pediatric Myocarditis Mortality Prediction younger children [4, 5]. Female sex has been associated with increased acuity of disease and mortaliy, one study (Ghelani et al.) did not find a difference in the mortality or heart transplant rate between sex groups [2, 3, 5, 6]. Prognostic factors were identified with the use of national hospitalization databases. Applying these identified risk factors for mortality prediction has not been reported

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