2024
DOI: 10.1186/s12889-024-19566-8
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Predicting adverse birth outcome among childbearing women in Sub-Saharan Africa: employing innovative machine learning techniques

Habtamu Setegn Ngusie,
Shegaw Anagaw Mengiste,
Alemu Birara Zemariam
et al.

Abstract: Background Adverse birth outcomes, including preterm birth, low birth weight, and stillbirth, remain a major global health challenge, particularly in developing regions. Understanding the possible risk factors is crucial for designing effective interventions for birth outcomes. Accordingly, this study aimed to develop a predictive model for adverse birth outcomes among childbearing women in Sub-Saharan Africa using advanced machine learning techniques. Additionally, this study aimed to employ a… Show more

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