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In Vivo Performance of a Machine Learning Model Predicting Pediatric Sepsis at Triage

Sepsis is a leading cause of pediatric mortality across the globe. Early recognition reduces mortality; and improve outcomes however, rapid detection remains difficult. Although physiologic mechanisms contribute to the complexity the epidemiology of pediatric Emergency Department (ED) visits also co...

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Autores principales: Piroutek, Mary Jane, Heyming, Theodore W., Knudsen-Robbins, Chloe, Feaster, William, Lee, Kent, Ehwerhemuepha, Louis
Formato: Online Artículo Texto
Lenguaje:English
Publicado: Lippincott Williams & Wilkins 2023
Materias:
Acceso en línea:https://www.ncbi.nlm.nih.gov/pmc/articles/PMC9845009/
http://dx.doi.org/10.1097/pq9.0000000000000626
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author Piroutek, Mary Jane
Heyming, Theodore W.
Knudsen-Robbins, Chloe
Feaster, William
Lee, Kent
Ehwerhemuepha, Louis
author_facet Piroutek, Mary Jane
Heyming, Theodore W.
Knudsen-Robbins, Chloe
Feaster, William
Lee, Kent
Ehwerhemuepha, Louis
author_sort Piroutek, Mary Jane
collection PubMed
description Sepsis is a leading cause of pediatric mortality across the globe. Early recognition reduces mortality; and improve outcomes however, rapid detection remains difficult. Although physiologic mechanisms contribute to the complexity the epidemiology of pediatric Emergency Department (ED) visits also contributes. A variety of sepsis screening methods have been designed, from alerts based on triage temperature and heart rate to more complex algorithms. Evaluation of such tools has suggested improved identification, yet there is a lack of definitive data. OBJECTIVE: The objective of this study was to evaluate the implementation and performance of the S(2)T(2) (Sepsis Screening Triage Tool) in a pediatric ED. METHODS: The S(2)T(2) is a multiclass stochastic gradient boosting machine learning model recently developed at the study institution. It uses ED triage data and historical data mined from electronic health record to predict sepsis potential at triage. S(2)T(2) was operationalized on 2/1/21; performance data for this study were collected over the first 7 months of implementation (to 8/31/21). Sensitivity and specificity were assessed by comparison with final International Classification of Disease-10 diagnoses codes. The pediatric ED at which this model was developed is a level-2 pediatric trauma center with an annual census of approximately 96,000. RESULTS: In total, 43,337 patients were included, 41 with severe sepsis and 121 with sepsis. S(2)T(2) demonstrated a sensitivity of 41.5% and specificity of 99.2% for severe sepsis, and a sensitivity of 25.6% and specificity of 99.2% for sepsis. CONCLUSION: S(2)T(2) may aide in the identification of pediatric patients at risk for sepsis, potentially allowing for accelerated diagnosis, intervention, improved care, and better outcomes.
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spelling pubmed-98450092023-01-24 In Vivo Performance of a Machine Learning Model Predicting Pediatric Sepsis at Triage Piroutek, Mary Jane Heyming, Theodore W. Knudsen-Robbins, Chloe Feaster, William Lee, Kent Ehwerhemuepha, Louis Pediatr Qual Saf IPSO Abstract Sepsis is a leading cause of pediatric mortality across the globe. Early recognition reduces mortality; and improve outcomes however, rapid detection remains difficult. Although physiologic mechanisms contribute to the complexity the epidemiology of pediatric Emergency Department (ED) visits also contributes. A variety of sepsis screening methods have been designed, from alerts based on triage temperature and heart rate to more complex algorithms. Evaluation of such tools has suggested improved identification, yet there is a lack of definitive data. OBJECTIVE: The objective of this study was to evaluate the implementation and performance of the S(2)T(2) (Sepsis Screening Triage Tool) in a pediatric ED. METHODS: The S(2)T(2) is a multiclass stochastic gradient boosting machine learning model recently developed at the study institution. It uses ED triage data and historical data mined from electronic health record to predict sepsis potential at triage. S(2)T(2) was operationalized on 2/1/21; performance data for this study were collected over the first 7 months of implementation (to 8/31/21). Sensitivity and specificity were assessed by comparison with final International Classification of Disease-10 diagnoses codes. The pediatric ED at which this model was developed is a level-2 pediatric trauma center with an annual census of approximately 96,000. RESULTS: In total, 43,337 patients were included, 41 with severe sepsis and 121 with sepsis. S(2)T(2) demonstrated a sensitivity of 41.5% and specificity of 99.2% for severe sepsis, and a sensitivity of 25.6% and specificity of 99.2% for sepsis. CONCLUSION: S(2)T(2) may aide in the identification of pediatric patients at risk for sepsis, potentially allowing for accelerated diagnosis, intervention, improved care, and better outcomes. Lippincott Williams & Wilkins 2023-01-16 /pmc/articles/PMC9845009/ http://dx.doi.org/10.1097/pq9.0000000000000626 Text en Copyright © 2023 the Author(s). Published by Wolters Kluwer Health, Inc. https://creativecommons.org/licenses/by-nc-nd/4.0/This is an open-access article distributed under the terms of the Creative Commons Attribution-Non Commercial-No Derivatives License 4.0 (CCBY-NC-ND) (https://creativecommons.org/licenses/by-nc-nd/4.0/) , where it is permissible to download and share the work provided it is properly cited. The work cannot be changed in any way or used commercially without permission from the journal.
spellingShingle IPSO Abstract
Piroutek, Mary Jane
Heyming, Theodore W.
Knudsen-Robbins, Chloe
Feaster, William
Lee, Kent
Ehwerhemuepha, Louis
In Vivo Performance of a Machine Learning Model Predicting Pediatric Sepsis at Triage
title In Vivo Performance of a Machine Learning Model Predicting Pediatric Sepsis at Triage
title_full In Vivo Performance of a Machine Learning Model Predicting Pediatric Sepsis at Triage
title_fullStr In Vivo Performance of a Machine Learning Model Predicting Pediatric Sepsis at Triage
title_full_unstemmed In Vivo Performance of a Machine Learning Model Predicting Pediatric Sepsis at Triage
title_short In Vivo Performance of a Machine Learning Model Predicting Pediatric Sepsis at Triage
title_sort in vivo performance of a machine learning model predicting pediatric sepsis at triage
topic IPSO Abstract
url https://www.ncbi.nlm.nih.gov/pmc/articles/PMC9845009/
http://dx.doi.org/10.1097/pq9.0000000000000626
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