Predicting Clinical Deterioration and Mortality at Differing Stages During Hospitalization: A Systematic Review of Risk Prediction Models in Children in Low- and Middle-Income Countries

To determine which risk prediction model best predicts clinical deterioration in children at different stages of hospital admission in low- and middle-income countries. For this systematic review, Embase and MEDLINE databases were searched, and Preferred Reporting Items for Systematic Reviews and Me...

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Veröffentlicht in:The Journal of pediatrics 2023-09, Vol.260, p.113448-113448, Article 113448
Hauptverfasser: van den Brink, Deborah A., de Vries, Isabelle S.A., Datema, Myrthe, Perot, Lyric, Sommers, Ruby, Daams, Joost, Calis, Job C.J., Brals, Daniella, Voskuijl, Wieger
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container_title The Journal of pediatrics
container_volume 260
creator van den Brink, Deborah A.
de Vries, Isabelle S.A.
Datema, Myrthe
Perot, Lyric
Sommers, Ruby
Daams, Joost
Calis, Job C.J.
Brals, Daniella
Voskuijl, Wieger
description To determine which risk prediction model best predicts clinical deterioration in children at different stages of hospital admission in low- and middle-income countries. For this systematic review, Embase and MEDLINE databases were searched, and Preferred Reporting Items for Systematic Reviews and Meta-Analyses guidelines were followed. The key search terms were “development or validation study with risk-prediction model” AND “deterioration or mortality” AND “age 0-18 years” AND “hospital-setting: emergency department (ED), pediatric ward (PW), or pediatric intensive care unit (PICU)” AND “low- and middle-income countries.” The Prediction Model Risk of Bias Assessment Tool was used by two independent authors. Forest plots were used to plot area under the curve according to hospital setting. Risk prediction models used in two or more studies were included in a meta-analysis. We screened 9486 articles and selected 78 publications, including 67 unique predictive models comprising 1.5 million children. The best performing models individually were signs of inflammation in children that can kill (SICK) (ED), pediatric early warning signs resource limited settings (PEWS-RL) (PW), and Pediatric Index of Mortality (PIM) 3 as well as pediatric sequential organ failure assessment (pSOFA) (PICU). Best performing models after meta-analysis were SICK (ED), pSOFA and Pediatric Early Death Index for Africa (PEDIA)-immediate score (PW), and pediatric logistic organ dysfunction (PELOD) (PICU). There was a high risk of bias in all studies. We identified risk prediction models that best estimate deterioration, although these risk prediction models are not routinely used in low- and middle-income countries. Future studies should focus on large scale external validation with strict methodological criteria of multiple risk prediction models as well as study the barriers in the way of implementation. PROSPERO International Prospective Register of Systematic Reviews: Prospero ID: CRD42021210489.
doi_str_mv 10.1016/j.jpeds.2023.113448
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The best performing models individually were signs of inflammation in children that can kill (SICK) (ED), pediatric early warning signs resource limited settings (PEWS-RL) (PW), and Pediatric Index of Mortality (PIM) 3 as well as pediatric sequential organ failure assessment (pSOFA) (PICU). Best performing models after meta-analysis were SICK (ED), pSOFA and Pediatric Early Death Index for Africa (PEDIA)-immediate score (PW), and pediatric logistic organ dysfunction (PELOD) (PICU). There was a high risk of bias in all studies. We identified risk prediction models that best estimate deterioration, although these risk prediction models are not routinely used in low- and middle-income countries. Future studies should focus on large scale external validation with strict methodological criteria of multiple risk prediction models as well as study the barriers in the way of implementation. 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title Predicting Clinical Deterioration and Mortality at Differing Stages During Hospitalization: A Systematic Review of Risk Prediction Models in Children in Low- and Middle-Income Countries
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