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AutoPEWS: Automating Pediatric Early Warning Score Calculation Improves Accuracy Without Sacrificing Predictive Ability

INTRODUCTION: Pediatric early warning scores (PEWS) identify hospitalized children at risk for deterioration. Manual calculation is prone to human error. Electronic health records (EHRs) enable automated calculation, removing human error. This study’s objective was to compare the accuracy of automat...

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Autores principales: Lockwood, Justin M, Thomas, Jacob, Martin, Sara, Wathen, Beth, Juarez-Colunga, Elizabeth, Peters, Lisa, Dempsey, Amanda, Reese, Jennifer
Formato: Online Artículo Texto
Lenguaje:English
Publicado: Wolters Kluwer Health 2020
Materias:
Acceso en línea:https://www.ncbi.nlm.nih.gov/pmc/articles/PMC7190249/
https://www.ncbi.nlm.nih.gov/pubmed/32426639
http://dx.doi.org/10.1097/pq9.0000000000000274
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author Lockwood, Justin M
Thomas, Jacob
Martin, Sara
Wathen, Beth
Juarez-Colunga, Elizabeth
Peters, Lisa
Dempsey, Amanda
Reese, Jennifer
author_facet Lockwood, Justin M
Thomas, Jacob
Martin, Sara
Wathen, Beth
Juarez-Colunga, Elizabeth
Peters, Lisa
Dempsey, Amanda
Reese, Jennifer
author_sort Lockwood, Justin M
collection PubMed
description INTRODUCTION: Pediatric early warning scores (PEWS) identify hospitalized children at risk for deterioration. Manual calculation is prone to human error. Electronic health records (EHRs) enable automated calculation, removing human error. This study’s objective was to compare the accuracy of automated EHR-based PEWS calculation (AutoPEWS) to manual calculation and evaluate the non-inferiority of AutoPEWS in predicting deterioration. METHODS: We performed a retrospective cohort study inclusive of non-intensive care unit inpatients at a freestanding children’s hospital over 4.5 months in Fall 2018. AutoPEWS mapped the historical manual PEWS scoring rubric to frequently used EHR documentation. We determined accuracy by comparing the expected respiratory subset score based on the current respiratory rate to the actual respiratory score of AutoPEWS and the manual PEWS. The agreement was determined using kappa statistics. We used predicted probabilities from a generalized linear mixed model to calculate areas under the curve for each combination of scores (AutoPEWS, manual) and deterioration outcome (rapid response team activation, unplanned intensive care unit transfer, critical deterioration event). We compared the adjusted difference in areas under the curves between the scores. Non-inferiority was defined as a difference of <0.05. RESULTS: There were 23,514 total PEWS representative of 5,384 patients. AutoPEWS respiratory scores were 99.97% accurate, while the manual PEWS respiratory scores were 86% accurate. AutoPEWS were higher overall than the manual PEWS (mean 0.65 versus 0.34). They showed a fair-to-good agreement (weighted kappa 0.42). Non-inferiority of AutoPEWS compared with the manual PEWS was demonstrated for all deterioration outcomes. CONCLUSIONS: Automation of PEWS calculation improved accuracy without sacrificing predictive ability.
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spelling pubmed-71902492020-05-18 AutoPEWS: Automating Pediatric Early Warning Score Calculation Improves Accuracy Without Sacrificing Predictive Ability Lockwood, Justin M Thomas, Jacob Martin, Sara Wathen, Beth Juarez-Colunga, Elizabeth Peters, Lisa Dempsey, Amanda Reese, Jennifer Pediatr Qual Saf Individual QI Projects from Single Institutions INTRODUCTION: Pediatric early warning scores (PEWS) identify hospitalized children at risk for deterioration. Manual calculation is prone to human error. Electronic health records (EHRs) enable automated calculation, removing human error. This study’s objective was to compare the accuracy of automated EHR-based PEWS calculation (AutoPEWS) to manual calculation and evaluate the non-inferiority of AutoPEWS in predicting deterioration. METHODS: We performed a retrospective cohort study inclusive of non-intensive care unit inpatients at a freestanding children’s hospital over 4.5 months in Fall 2018. AutoPEWS mapped the historical manual PEWS scoring rubric to frequently used EHR documentation. We determined accuracy by comparing the expected respiratory subset score based on the current respiratory rate to the actual respiratory score of AutoPEWS and the manual PEWS. The agreement was determined using kappa statistics. We used predicted probabilities from a generalized linear mixed model to calculate areas under the curve for each combination of scores (AutoPEWS, manual) and deterioration outcome (rapid response team activation, unplanned intensive care unit transfer, critical deterioration event). We compared the adjusted difference in areas under the curves between the scores. Non-inferiority was defined as a difference of <0.05. RESULTS: There were 23,514 total PEWS representative of 5,384 patients. AutoPEWS respiratory scores were 99.97% accurate, while the manual PEWS respiratory scores were 86% accurate. AutoPEWS were higher overall than the manual PEWS (mean 0.65 versus 0.34). They showed a fair-to-good agreement (weighted kappa 0.42). Non-inferiority of AutoPEWS compared with the manual PEWS was demonstrated for all deterioration outcomes. CONCLUSIONS: Automation of PEWS calculation improved accuracy without sacrificing predictive ability. Wolters Kluwer Health 2020-03-25 /pmc/articles/PMC7190249/ /pubmed/32426639 http://dx.doi.org/10.1097/pq9.0000000000000274 Text en Copyright © 2020 the Author(s). Published by Wolters Kluwer Health, Inc. This is an open access article distributed under the Creative Commons Attribution License 4.0 (CCBY) (http://creativecommons.org/licenses/by/4.0/) , which permits unrestricted use, distribution, and reproduction in any medium, provided the original work is properly cited.
spellingShingle Individual QI Projects from Single Institutions
Lockwood, Justin M
Thomas, Jacob
Martin, Sara
Wathen, Beth
Juarez-Colunga, Elizabeth
Peters, Lisa
Dempsey, Amanda
Reese, Jennifer
AutoPEWS: Automating Pediatric Early Warning Score Calculation Improves Accuracy Without Sacrificing Predictive Ability
title AutoPEWS: Automating Pediatric Early Warning Score Calculation Improves Accuracy Without Sacrificing Predictive Ability
title_full AutoPEWS: Automating Pediatric Early Warning Score Calculation Improves Accuracy Without Sacrificing Predictive Ability
title_fullStr AutoPEWS: Automating Pediatric Early Warning Score Calculation Improves Accuracy Without Sacrificing Predictive Ability
title_full_unstemmed AutoPEWS: Automating Pediatric Early Warning Score Calculation Improves Accuracy Without Sacrificing Predictive Ability
title_short AutoPEWS: Automating Pediatric Early Warning Score Calculation Improves Accuracy Without Sacrificing Predictive Ability
title_sort autopews: automating pediatric early warning score calculation improves accuracy without sacrificing predictive ability
topic Individual QI Projects from Single Institutions
url https://www.ncbi.nlm.nih.gov/pmc/articles/PMC7190249/
https://www.ncbi.nlm.nih.gov/pubmed/32426639
http://dx.doi.org/10.1097/pq9.0000000000000274
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