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Predicting adverse birth outcome among childbearing women in Sub-Saharan Africa: employing innovative machine learning techniques.
Ngusie, Habtamu Setegn; Mengiste, Shegaw Anagaw; Zemariam, Alemu Birara; Molla, Bogale; Tesfa, Getanew Aschalew; Seboka, Binyam Tariku; Alene, Tilahun Dessie; Sun, Jing.
Affiliation
  • Ngusie HS; Department of Health Informatics, School of Public Health, College of Medicine and Health Sciences, Woldia University, PO Box 400, Woldia, Amhara, Ethiopia. habtamuhi3@gmail.com.
  • Mengiste SA; University of South-Eastern Norway, Post office Box 235, Kongsberg, N-3603, Norway.
  • Zemariam AB; Department of Pediatrics and Child Health Nursing, School of Nursing, College of Medicine and Health Science, Woldia University, Woldia, Ethiopia.
  • Molla B; Department of Maternal and Reproductive Health, School of Nursing, College of Medicine and Health Science, Woldia University, Woldia, Ethiopia.
  • Tesfa GA; School of Public Health, College of Medicine and Health Science, Dilla University, Dilla, Ethiopia.
  • Seboka BT; School of Public Health, College of Medicine and Health Science, Dilla University, Dilla, Ethiopia.
  • Alene TD; Department of Pediatric and Child Health, School of Medicine, College of Medicine and Health Science, Wollo University, Dessie, Ethiopia.
  • Sun J; Rural Health Research Institute, Charles Sturt University, Bathurst, New South Wales, NSW, 2800, Australia.
BMC Public Health ; 24(1): 2029, 2024 Jul 29.
Article in En | MEDLINE | ID: mdl-39075434
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 novel data science interpretability techniques to identify the key risk factors and quantify the impact of each feature on the model prediction.

METHODS:

The study population involved women of childbearing age from 26 Sub-Saharan African countries who had given birth within five years before the data collection, totaling 139,659 participants. Our data source was a recent Demographic Health Survey (DHS). We utilized various data balancing techniques. Ten advanced machine learning algorithms were employed, with the dataset split into 80% training and 20% testing sets. Model evaluation was conducted using various performance metrics, along with hyperparameter optimization. Association rule mining and SHAP analysis were employed to enhance model interpretability.

RESULTS:

Based on our findings, about 28.59% (95% CI 28.36, 28.83) of childbearing women in Sub-Saharan Africa experienced adverse birth outcomes. After repeated experimentation and evaluation, the random forest model emerged as the top-performing machine learning algorithm, with an AUC of 0.95 and an accuracy of 88.0%. The key risk factors identified were home deliveries, lack of prenatal iron supplementation, fewer than four antenatal care (ANC) visits, short and long delivery intervals, unwanted pregnancy, primiparous mothers, and geographic location in the West African region.

CONCLUSION:

The region continues to face persistent adverse birth outcomes, emphasizing the urgent need for increased attention and action. Encouragingly, advanced machine learning methods, particularly the random forest algorithm, have uncovered crucial insights that can guide targeted actions. Specifically, the analysis identifies risky groups, including first-time mothers, women with short or long birth intervals, and those with unwanted pregnancies. To address the needs of these high-risk women, the researchers recommend immediately providing iron supplements, scheduling comprehensive prenatal care, and strongly encouraging facility-based deliveries or skilled birth attendance.
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Full text: 1 Collection: 01-internacional Database: MEDLINE Main subject: Pregnancy Outcome / Machine Learning Limits: Adolescent / Adult / Female / Humans / Newborn / Pregnancy Country/Region as subject: Africa Language: En Journal: BMC Public Health Journal subject: SAUDE PUBLICA Year: 2024 Document type: Article Affiliation country: Etiopia Country of publication: Reino Unido

Full text: 1 Collection: 01-internacional Database: MEDLINE Main subject: Pregnancy Outcome / Machine Learning Limits: Adolescent / Adult / Female / Humans / Newborn / Pregnancy Country/Region as subject: Africa Language: En Journal: BMC Public Health Journal subject: SAUDE PUBLICA Year: 2024 Document type: Article Affiliation country: Etiopia Country of publication: Reino Unido