Abstract

Background: High flow nasal cannula (HFNC) is commonly used as non-invasive respiratory support in critically ill children. There are limited data to inform consensus on optimal device parameters, determinants of successful patient response, and indications for escalation of support. Clinical scores, such as the respiratory rate-oxygenation (ROX) index, have been described as a means to predict HFNC non-response, but are limited to evaluating for escalations to invasive mechanical ventilation (MV). In the presence of apparent HFNC non-response, a clinician may choose to increase the HFNC flow rate to hypothetically prevent further respiratory deterioration, transition to an alternative non-invasive interface, or intubation for MV. To date, no models have been assessed to predict subsequent escalations of HFNC flow rates after HFNC initiation.Objective: To evaluate the abilities of tree-based machine learning algorithms to predict HFNC flow rate escalations.Methods: We performed a retrospective, cohort study assessing children admitted for acute respiratory failure under 24 months of age placed on HFNC in the Johns Hopkins Children's Center pediatric intensive care unit from January 2019 through January 2020. We excluded encounters with gaps in recorded clinical data, encounters in which MV treatment occurred prior to HFNC, and cases electively intubated in the operating room. The primary study outcome was discriminatory capacity of generated machine learning algorithms to predict HFNC flow rate escalations as compared to each other and ROX indices using area under the receiver operating characteristic (AUROC) analyses. In an exploratory fashion, model feature importance rankings were assessed by comparing Shapley values.Results: Our gradient boosting model with a time window of 8 h and lead time of 1 h before HFNC flow rate escalation achieved an AUROC with a 95% confidence interval of 0.810 ± 0.003. In comparison, the ROX index achieved an AUROC of 0.525 ± 0.000.Conclusion: In this single-center, retrospective cohort study assessing children under 24 months of age receiving HFNC for acute respiratory failure, tree-based machine learning models outperformed the ROX index in predicting subsequent flow rate escalations. Further validation studies are needed to ensure generalizability for bedside application.

Highlights

  • Acute respiratory failure is one of the most common indications for hospitalization among pediatric patients [1]

  • In severe cases where children experience acute respiratory failure, physicians trial a variety of non-invasive ventilation (NIV) modalities such as heated, humidified, high flow nasal cannula (HFNC) to improve tissue oxygenation, decrease patient work of breathing, and limit exposure to invasive mechanical ventilation (MV) [3]

  • We demonstrate the ability of tree-based machine learning models, namely gradient boosting, to predict subsequent escalation of HFNC flow rate with a specified lead within

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Summary

Introduction

Acute respiratory failure is one of the most common indications for hospitalization among pediatric patients [1]. In severe cases where children experience acute respiratory failure, physicians trial a variety of non-invasive ventilation (NIV) modalities such as heated, humidified, high flow nasal cannula (HFNC) to improve tissue oxygenation, decrease patient work of breathing, and limit exposure to invasive mechanical ventilation (MV) [3]. High flow nasal cannula (HFNC) is commonly used as non-invasive respiratory support in critically ill children. There are limited data to inform consensus on optimal device parameters, determinants of successful patient response, and indications for escalation of support. Clinical scores, such as the respiratory rate-oxygenation (ROX) index, have been described as a means to predict HFNC non-response, but are limited to evaluating for escalations to invasive mechanical ventilation (MV). No models have been assessed to predict subsequent escalations of HFNC flow rates after HFNC initiation

Methods
Results
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