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Derivation and internal validation of a data-driven prediction model to guide frontline health workers in triaging children under-five in Nairobi, Kenya

Background: Many hospitalized children in developing countries die from infectious diseases. Early recognition of those who are critically ill coupled with timely treatment can prevent many deaths. A data-driven, electronic triage system to assist frontline health workers in categorizing illness sev...

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Autores principales: Mawji, Alishah, Akech, Samuel, Mwaniki, Paul, Dunsmuir, Dustin, Bone, Jeffrey, Wiens, Matthew O., Görges, Matthias, Kimutai, David, Kissoon, Niranjan, English, Mike, Ansermino, Mark J.
Formato: Online Artículo Texto
Lenguaje:English
Publicado: F1000 Research Limited 2021
Materias:
Acceso en línea:https://www.ncbi.nlm.nih.gov/pmc/articles/PMC8097734/
https://www.ncbi.nlm.nih.gov/pubmed/33997296
http://dx.doi.org/10.12688/wellcomeopenres.15387.3
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author Mawji, Alishah
Akech, Samuel
Mwaniki, Paul
Dunsmuir, Dustin
Bone, Jeffrey
Wiens, Matthew O.
Görges, Matthias
Kimutai, David
Kissoon, Niranjan
English, Mike
Ansermino, Mark J.
author_facet Mawji, Alishah
Akech, Samuel
Mwaniki, Paul
Dunsmuir, Dustin
Bone, Jeffrey
Wiens, Matthew O.
Görges, Matthias
Kimutai, David
Kissoon, Niranjan
English, Mike
Ansermino, Mark J.
author_sort Mawji, Alishah
collection PubMed
description Background: Many hospitalized children in developing countries die from infectious diseases. Early recognition of those who are critically ill coupled with timely treatment can prevent many deaths. A data-driven, electronic triage system to assist frontline health workers in categorizing illness severity is lacking. This study aimed to develop a data-driven parsimonious triage algorithm for children under five years of age. Methods: This was a prospective observational study of children under-five years of age presenting to the outpatient department of Mbagathi Hospital in Nairobi, Kenya between January and June 2018. A study nurse examined participants and recorded history and clinical signs and symptoms using a mobile device with an attached low-cost pulse oximeter sensor. The need for hospital admission was determined independently by the facility clinician and used as the primary outcome in a logistic predictive model. We focused on the selection of variables that could be quickly and easily assessed by low skilled health workers. Results: The admission rate (for more than 24 hours) was 12% (N=138/1,132). We identified an eight-predictor logistic regression model including continuous variables of weight, mid-upper arm circumference, temperature, pulse rate, and transformed oxygen saturation, combined with dichotomous signs of difficulty breathing, lethargy, and inability to drink or breastfeed. This model predicts overnight hospital admission with an area under the receiver operating characteristic curve of 0.88 (95% CI 0.82 to 0.94). Low- and high-risk thresholds of 5% and 25%, respectively were selected to categorize participants into three triage groups for implementation.  Conclusion: A logistic regression model comprised of eight easily understood variables may be useful for triage of children under the age of five based on the probability of need for admission. This model could be used by frontline workers with limited skills in assessing children. External validation is needed before adoption in clinical practice.
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spelling pubmed-80977342021-05-13 Derivation and internal validation of a data-driven prediction model to guide frontline health workers in triaging children under-five in Nairobi, Kenya Mawji, Alishah Akech, Samuel Mwaniki, Paul Dunsmuir, Dustin Bone, Jeffrey Wiens, Matthew O. Görges, Matthias Kimutai, David Kissoon, Niranjan English, Mike Ansermino, Mark J. Wellcome Open Res Research Article Background: Many hospitalized children in developing countries die from infectious diseases. Early recognition of those who are critically ill coupled with timely treatment can prevent many deaths. A data-driven, electronic triage system to assist frontline health workers in categorizing illness severity is lacking. This study aimed to develop a data-driven parsimonious triage algorithm for children under five years of age. Methods: This was a prospective observational study of children under-five years of age presenting to the outpatient department of Mbagathi Hospital in Nairobi, Kenya between January and June 2018. A study nurse examined participants and recorded history and clinical signs and symptoms using a mobile device with an attached low-cost pulse oximeter sensor. The need for hospital admission was determined independently by the facility clinician and used as the primary outcome in a logistic predictive model. We focused on the selection of variables that could be quickly and easily assessed by low skilled health workers. Results: The admission rate (for more than 24 hours) was 12% (N=138/1,132). We identified an eight-predictor logistic regression model including continuous variables of weight, mid-upper arm circumference, temperature, pulse rate, and transformed oxygen saturation, combined with dichotomous signs of difficulty breathing, lethargy, and inability to drink or breastfeed. This model predicts overnight hospital admission with an area under the receiver operating characteristic curve of 0.88 (95% CI 0.82 to 0.94). Low- and high-risk thresholds of 5% and 25%, respectively were selected to categorize participants into three triage groups for implementation.  Conclusion: A logistic regression model comprised of eight easily understood variables may be useful for triage of children under the age of five based on the probability of need for admission. This model could be used by frontline workers with limited skills in assessing children. External validation is needed before adoption in clinical practice. F1000 Research Limited 2021-04-19 /pmc/articles/PMC8097734/ /pubmed/33997296 http://dx.doi.org/10.12688/wellcomeopenres.15387.3 Text en Copyright: © 2021 Mawji A et al. https://creativecommons.org/licenses/by/4.0/This is an open access article distributed under the terms of the Creative Commons Attribution Licence, which permits unrestricted use, distribution, and reproduction in any medium, provided the original work is properly cited.
spellingShingle Research Article
Mawji, Alishah
Akech, Samuel
Mwaniki, Paul
Dunsmuir, Dustin
Bone, Jeffrey
Wiens, Matthew O.
Görges, Matthias
Kimutai, David
Kissoon, Niranjan
English, Mike
Ansermino, Mark J.
Derivation and internal validation of a data-driven prediction model to guide frontline health workers in triaging children under-five in Nairobi, Kenya
title Derivation and internal validation of a data-driven prediction model to guide frontline health workers in triaging children under-five in Nairobi, Kenya
title_full Derivation and internal validation of a data-driven prediction model to guide frontline health workers in triaging children under-five in Nairobi, Kenya
title_fullStr Derivation and internal validation of a data-driven prediction model to guide frontline health workers in triaging children under-five in Nairobi, Kenya
title_full_unstemmed Derivation and internal validation of a data-driven prediction model to guide frontline health workers in triaging children under-five in Nairobi, Kenya
title_short Derivation and internal validation of a data-driven prediction model to guide frontline health workers in triaging children under-five in Nairobi, Kenya
title_sort derivation and internal validation of a data-driven prediction model to guide frontline health workers in triaging children under-five in nairobi, kenya
topic Research Article
url https://www.ncbi.nlm.nih.gov/pmc/articles/PMC8097734/
https://www.ncbi.nlm.nih.gov/pubmed/33997296
http://dx.doi.org/10.12688/wellcomeopenres.15387.3
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