AccScience Publishing / IJPS / Online First / DOI: 10.36922/ IJPS025090036
RESEARCH ARTICLE

Estimation of rural and urban under-five mortality rates in Kenya: The role of migration

Alfred M. Kathare1* Kimani Murungaru1 Alfred T.O. Agwanda1
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1 Department of Geography, Population and Environmental Studies, Faculty of Arts and Social Sciences, University of Nairobi, Nairobi, Kenya
Received: 26 February 2025 | Revised: 28 November 2025 | Accepted: 7 January 2026 | Published online: 28 January 2026
© 2026 by the Author(s). This article is an open access article distributed under the terms and conditions of the Creative Commons Attribution 4.0 International License ( https://creativecommons.org/licenses/by/4.0/ )
Abstract

Analysis of the under-five mortality rate allows policy makers to identify disparities in health outcomes across populations defined by characteristics such as place of residence, income levels, or educational attainment. It also provides guidance for designing health interventions and policies, and for monitoring progress toward program targets. When estimating the under-five mortality rate for a given region using an indirect method based on survey reports, all reported child deaths are typically attributed to the mother’s region of residence at the time of the survey. This assumption can substantially affect regional under-five mortality rates in areas that receive migrants from regions with markedly different mortality regimes. The aim of this study was therefore to establish trends in the under-five mortality rate for rural and urban regions in Kenya while accounting for migration between these regions. This study used secondary data from six demographic and health surveys conducted in Kenya from 1989 to 2014. The Q-FIVE program was used to indirectly derive the set of the under-five mortality rates. These rates were then adjusted for the effects of migration using a sub-area mortality estimation approach. The results reveal that population movement between regions with different mortality rates can alter regional under-five mortality rates. By adjusting the under-five mortality rates derived for each region, we obtained clear and consistent trends across the two regions. Further research should consider the effects of migration across the socioeconomic spectrum.

Keywords
Migration
Under-five mortality
Child mortality
Rural region
Urban region
Funding
None.
Conflict of interest
The authors declare that they have no competing interests.
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International Journal of Population Studies, Electronic ISSN: 2424-8606 Print ISSN: 2424-8150, Published by AccScience Publishing