Prediction of hospitalisation in young children with pneumonia in Malawi: A machine learning-based approach
Patrick Staunton,
Mohammad Adib Makrooni,
Master Chisale,
Billy Nyambolo,
Joseph Wu,
Damien McCarthy,
Mark Ledwidge,
Yasir Bin Nisar,
Chris Watson,
Balwani Mbakaya,
Cathal Seoighe and
Joe Gallagher
PLOS Medicine, 2026, vol. 23, issue 6, 1-16
Abstract:
Background: Globally, pneumonia remains the single biggest cause of mortality in children under 5 years of age. This study sought to train and test a prediction model for hospitalisation within 7 days after initial presentation in 2- to 59-month-old Malawian children with WHO-defined pneumonia in primary care and compare its performance to existing risk prediction models. Methods and findings: BIOTOPE is a cohort study of children with pneumonia in a primary healthcare setting in Malawi. The training cohort involved nine primary care centres and the testing cohort involved two primary care centres in Northern Malawi. The training cohort was recruited between December 2022 and April 2023 while the testing cohort was recruited in 2016. Participants were consecutive children aged 2–59 months presenting with cough and/or difficulty breathing and who were diagnosed as WHO-defined pneumonia in primary care of any severity. The training cohort was used to train and validate a machine learning model with a prespecified primary outcome defined as hospitalisation and/or death within 7 days as the outcome. This model was then further evaluated in the testing cohort. Conclusion: This machine learning score outperformed traditional pneumonia risk scores in predicting hospitalisation within 7 days in Malawian children presenting to primary care. Traditional pneumonia risk scores diminish in performance when externally applied to new datasets suggesting they may not generalise well beyond their original derivation settings. Mortality-related findings are not applicable as there was only one death in this cohort. Overall these findings support the potential of machine learning to meaningfully improve early identification of children at risk of severe pneumonia in low-resource primary care settings. Further external validation and clinical impact studies are needed to confirm these results. Why was this study done?: What did the researchers do and find?: What do these findings mean?: In a machine learning study, Patrick Staunton and colleagues develop and test a model to predict hospitalisation in children with pneumonia under 5 years of age in Malawi.
Date: 2026
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Persistent link: https://EconPapers.repec.org/RePEc:plo:pmed00:1005122
DOI: 10.1371/journal.pmed.1005122
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