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Machine learning approaches to identify neonates and young children at risk for postdischarge mortality in Dar es Salaam, Tanzania and Monrovia, Liberia.

Publication ,  Journal Article
Rees, CA; Kisenge, R; Godfrey, E; Ideh, RC; Kamara, J; Coleman-Nekar, Y-JG; Samma, A; Manji, HK; Sudfeld, CR; Westbrook, AL; Niescierenko, M ...
Published in: BMJ Paediatr Open
June 19, 2025

BACKGROUND: The time after hospital discharge carries high rates of mortality in neonates and young children in sub-Saharan Africa. Previous work using logistic regression to develop risk assessment tools to identify those at risk for postdischarge mortality has yielded fair discriminatory value. Our objective was to determine if machine learning models would have greater discriminatory value to identify neonates and young children at risk for postdischarge mortality. METHODS: We conducted a planned secondary analysis of a prospective observational cohort at Muhimbili National Hospital in Dar es Salaam, Tanzania and John F. Kennedy Medical Center in Monrovia, Liberia. We enrolled neonates and young children near the time of discharge. The outcome was 60-day postdischarge mortality. We collected socioeconomic, demographic, clinical, and anthropometric data during hospital admission and used machine learning (ie, eXtreme Gradient Boosting (XGBoost), Hist-Gradient Boost, Support Vector Machine, Neural Network, and Random Forest) to develop risk assessment tools to identify: (1) neonates and (2) young children at risk for postdischarge mortality. RESULTS: A total of 2310 neonates and 1933 young children enrolled. Of these, 71 (3.1%) neonates and 67 (3.5%) young children died after hospital discharge. XGBoost, Hist Gradient Boost, and Neural Network models yielded the greatest discriminatory value (area under the receiver operating characteristic curves range: 0.94-0.99) and fewest features, which included six features for neonates and five for young children. Discharge against medical advice, low birth weight, and supplemental oxygen requirement during hospitalisation were predictive of postdischarge mortality in neonates. For young children, discharge against medical advice, pallor, and chronic medical problems were predictive of postdischarge mortality. CONCLUSIONS: Our parsimonious machine learning-based models had excellent discriminatory value to predict postdischarge mortality among neonates and young children. External validation of these tools is warranted to assist in the design of interventions to reduce postdischarge mortality in these vulnerable populations.

Duke Scholars

Published In

BMJ Paediatr Open

DOI

EISSN

2399-9772

Publication Date

June 19, 2025

Volume

9

Issue

1

Location

England

Related Subject Headings

  • Tanzania
  • Risk Assessment
  • Prospective Studies
  • Patient Discharge
  • Male
  • Machine Learning
  • Liberia
  • Infant, Newborn
  • Infant Mortality
  • Infant
 

Citation

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MLA
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Rees, C. A., Kisenge, R., Godfrey, E., Ideh, R. C., Kamara, J., Coleman-Nekar, Y.-J., … Kamaleswaran, R. (2025). Machine learning approaches to identify neonates and young children at risk for postdischarge mortality in Dar es Salaam, Tanzania and Monrovia, Liberia. BMJ Paediatr Open, 9(1). https://doi.org/10.1136/bmjpo-2025-003547
Rees, Chris A., Rodrick Kisenge, Evance Godfrey, Readon C. Ideh, Julia Kamara, Ye-Jeung G. Coleman-Nekar, Abraham Samma, et al. “Machine learning approaches to identify neonates and young children at risk for postdischarge mortality in Dar es Salaam, Tanzania and Monrovia, Liberia.BMJ Paediatr Open 9, no. 1 (June 19, 2025). https://doi.org/10.1136/bmjpo-2025-003547.
Rees CA, Kisenge R, Godfrey E, Ideh RC, Kamara J, Coleman-Nekar Y-JG, et al. Machine learning approaches to identify neonates and young children at risk for postdischarge mortality in Dar es Salaam, Tanzania and Monrovia, Liberia. BMJ Paediatr Open. 2025 Jun 19;9(1).
Rees, Chris A., et al. “Machine learning approaches to identify neonates and young children at risk for postdischarge mortality in Dar es Salaam, Tanzania and Monrovia, Liberia.BMJ Paediatr Open, vol. 9, no. 1, June 2025. Pubmed, doi:10.1136/bmjpo-2025-003547.
Rees CA, Kisenge R, Godfrey E, Ideh RC, Kamara J, Coleman-Nekar Y-JG, Samma A, Manji HK, Sudfeld CR, Westbrook AL, Niescierenko M, Morris CR, Florin TA, Whitney CG, Manji KP, Duggan CP, Kamaleswaran R. Machine learning approaches to identify neonates and young children at risk for postdischarge mortality in Dar es Salaam, Tanzania and Monrovia, Liberia. BMJ Paediatr Open. 2025 Jun 19;9(1).

Published In

BMJ Paediatr Open

DOI

EISSN

2399-9772

Publication Date

June 19, 2025

Volume

9

Issue

1

Location

England

Related Subject Headings

  • Tanzania
  • Risk Assessment
  • Prospective Studies
  • Patient Discharge
  • Male
  • Machine Learning
  • Liberia
  • Infant, Newborn
  • Infant Mortality
  • Infant