Socioeconomic, Nutritional, and Demographic Determinants of Anaemia among Nigerian Women: A Machine Learning Analysis of DHS 2024 Data
Authors
Department of Mathematical Sciences Adekunle Ajasin University, Akungba Akoko, Ondo State (Nigeria)
Article Information
DOI: 10.51584/IJRIAS.2025.10120081
Subject Category: Public Health
Volume/Issue: 10/12 | Page No: 955-967
Publication Timeline
Submitted: 2025-12-17
Accepted: 2025-12-22
Published: 2026-01-17
Abstract
Anaemia remains a serious public health problem among women of reproductive age in Nigeria, with significant implications for maternal and population health. This study examined the prevalence, determinants, and predictability of anaemia using descriptive statistics, inferential analyses, and supervised machine-learning models on the data from the 2023–2024 Nigeria Demographic and Health Survey (NDHS). Anaemia status was defined using World Health Organisation haemoglobin thresholds. The results indicate an alarming 78% prevalence of anaemia among Nigerian women across geographic, socioeconomic, and educational strata. Nutritional status, particularly body mass index, together with reproductive factors and contextual characteristics, emerged as the most influential predictors of anaemia. The study highlights the value of combining epidemiological analysis with interpretable machine learning to inform targeted strategies for anaemia prevention and control in Nigeria.
Keywords
Anaemia; Women of reproductive age; Nigeria Demographic and Health Survey
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References
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