A clinical prediction model to identify patients at high risk of hemodynamic instability in the pediatric intensive care unit

Abstract Background Early recognition and timely intervention are critical steps for the successful management of shock. The objective of this study was to develop a model to predict requirement for hemodynamic intervention in the pediatric intensive care unit (PICU); thus, clinicians can direct the...

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Main Authors: Cristhian Potes, Bryan Conroy, Minnan Xu-Wilson, Christopher Newth, David Inwald, Joseph Frassica
Format: Article
Language:English
Published: BMC 2017-11-01
Series:Critical Care
Subjects:
Online Access:http://link.springer.com/article/10.1186/s13054-017-1874-z
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spelling doaj-f6f10e757f9f41d591c7062670fbca682020-11-24T23:20:36ZengBMCCritical Care1364-85352017-11-012111810.1186/s13054-017-1874-zA clinical prediction model to identify patients at high risk of hemodynamic instability in the pediatric intensive care unitCristhian Potes0Bryan Conroy1Minnan Xu-Wilson2Christopher Newth3David Inwald4Joseph Frassica5Acute Care Solutions Department, Philips Research North AmericaAcute Care Solutions Department, Philips Research North AmericaAcute Care Solutions Department, Philips Research North AmericaChildren’s Hospital Los AngelesSt Mary’s Hospital, Imperial College Healthcare NHS TrustPhilips HealthcareAbstract Background Early recognition and timely intervention are critical steps for the successful management of shock. The objective of this study was to develop a model to predict requirement for hemodynamic intervention in the pediatric intensive care unit (PICU); thus, clinicians can direct their care to patients likely to benefit from interventions to prevent further deterioration. Methods The model proposed in this study was trained on a retrospective cohort of all patients admitted to a tertiary PICU at a single center in the United States, and validated on another retrospective cohort of all patients admitted to the PICU at a single center in the United Kingdom. The PICU clinical information system database (Intellivue Clinical Information Portfolio, Philips, UK) was interrogated to collect physiological and laboratory data. The model was trained using a variant of AdaBoost, which learned a set of low-dimensional classifiers, each of which was age adjusted. Results A total of 7052 patients admitted to the US PICU was used for training the model, and a total of 970 patients admitted to the UK PICU was used for validation. On the training/validation datasets, the model showed better prediction of hemodynamic intervention (area under the receiver operating characteristic (AUROC) = 0.81/0.81) than systolic blood pressure-based (AUCROC = 0.58/0.67) or shock index-based (AUCROC = 0.63/0.65) models. Both of these models were age adjusted using the same classifier. Conclusions The proposed model reliably predicted the need for hemodynamic intervention in PICU patients and provides better classification performance when compared to systolic blood pressure-based or shock index-based models alone. This model could readily be built into a clinical information system to identify patients at risk of hemodynamic instability.http://link.springer.com/article/10.1186/s13054-017-1874-zHemodynamic instabilityAge-dependent featuresPediatric intensive care unitPredictive model
collection DOAJ
language English
format Article
sources DOAJ
author Cristhian Potes
Bryan Conroy
Minnan Xu-Wilson
Christopher Newth
David Inwald
Joseph Frassica
spellingShingle Cristhian Potes
Bryan Conroy
Minnan Xu-Wilson
Christopher Newth
David Inwald
Joseph Frassica
A clinical prediction model to identify patients at high risk of hemodynamic instability in the pediatric intensive care unit
Critical Care
Hemodynamic instability
Age-dependent features
Pediatric intensive care unit
Predictive model
author_facet Cristhian Potes
Bryan Conroy
Minnan Xu-Wilson
Christopher Newth
David Inwald
Joseph Frassica
author_sort Cristhian Potes
title A clinical prediction model to identify patients at high risk of hemodynamic instability in the pediatric intensive care unit
title_short A clinical prediction model to identify patients at high risk of hemodynamic instability in the pediatric intensive care unit
title_full A clinical prediction model to identify patients at high risk of hemodynamic instability in the pediatric intensive care unit
title_fullStr A clinical prediction model to identify patients at high risk of hemodynamic instability in the pediatric intensive care unit
title_full_unstemmed A clinical prediction model to identify patients at high risk of hemodynamic instability in the pediatric intensive care unit
title_sort clinical prediction model to identify patients at high risk of hemodynamic instability in the pediatric intensive care unit
publisher BMC
series Critical Care
issn 1364-8535
publishDate 2017-11-01
description Abstract Background Early recognition and timely intervention are critical steps for the successful management of shock. The objective of this study was to develop a model to predict requirement for hemodynamic intervention in the pediatric intensive care unit (PICU); thus, clinicians can direct their care to patients likely to benefit from interventions to prevent further deterioration. Methods The model proposed in this study was trained on a retrospective cohort of all patients admitted to a tertiary PICU at a single center in the United States, and validated on another retrospective cohort of all patients admitted to the PICU at a single center in the United Kingdom. The PICU clinical information system database (Intellivue Clinical Information Portfolio, Philips, UK) was interrogated to collect physiological and laboratory data. The model was trained using a variant of AdaBoost, which learned a set of low-dimensional classifiers, each of which was age adjusted. Results A total of 7052 patients admitted to the US PICU was used for training the model, and a total of 970 patients admitted to the UK PICU was used for validation. On the training/validation datasets, the model showed better prediction of hemodynamic intervention (area under the receiver operating characteristic (AUROC) = 0.81/0.81) than systolic blood pressure-based (AUCROC = 0.58/0.67) or shock index-based (AUCROC = 0.63/0.65) models. Both of these models were age adjusted using the same classifier. Conclusions The proposed model reliably predicted the need for hemodynamic intervention in PICU patients and provides better classification performance when compared to systolic blood pressure-based or shock index-based models alone. This model could readily be built into a clinical information system to identify patients at risk of hemodynamic instability.
topic Hemodynamic instability
Age-dependent features
Pediatric intensive care unit
Predictive model
url http://link.springer.com/article/10.1186/s13054-017-1874-z
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