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Factors associated with recovery from stunting among under-five children in two Nairobi informal settlements

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  • Cheikh Mbacké Faye
  • Sharon Fonn
  • Jonathan Levin

Abstract

Childhood stunting is a public health concern in many low-and-middle income countries, as it is associated with both short-term and long-term negative effects on child cognitive development, physical health, and schooling outcomes. There is paucity of studies on recovery from stunting among under five children in these countries. Most studies focused on the recovery much later in adolescence. We used longitudinal data from two Nairobi urban settlements to determine the incidence of recovery from stunting and understand the factors associated with post-stunting linear growth among under-five children. A total of 1,816 children were recruited between birth and 23 months and were followed-up until they reached five years. We first looked at the time to recover from stunting using event history analysis and Cox regression. Second, we used height-for-age z-score slope modelling to estimate the change in linear growth among children who were stunted. Finally, we fitted a linear regression model of the variation in HAZ on a second degree fractional polynomials in child’s age to identify the factors associated with post-stunting linear growth. The principal findings are: i) the incidence of recovery from stunting was 45% among stunted under-five children in the two settlements; ii) timely child immunization, age at stunting, mother’s parity and household socioeconomic status are important factors associated with time to recover from stunting within the first five years of life; and iii) child illness status and age at first stunting, mother’s parity and age have a strong influence on child post-stunting linear growth. Access to child health services and increased awareness among health professionals and child caregivers, would be critical in improving child growth outcomes in the study settings. Additionally, specific maternal and reproductive health interventions targeting young mothers in the slums may be needed to reduce adolescent and young mother’s vulnerability and improve their child health outcomes.

Suggested Citation

  • Cheikh Mbacké Faye & Sharon Fonn & Jonathan Levin, 2019. "Factors associated with recovery from stunting among under-five children in two Nairobi informal settlements," PLOS ONE, Public Library of Science, vol. 14(4), pages 1-17, April.
  • Handle: RePEc:plo:pone00:0215488
    DOI: 10.1371/journal.pone.0215488
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    References listed on IDEAS

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    1. Patrick Royston & Douglas G. Altman, 1994. "Regression Using Fractional Polynomials of Continuous Covariates: Parsimonious Parametric Modelling," Journal of the Royal Statistical Society Series C, Royal Statistical Society, vol. 43(3), pages 429-453, September.
    2. Rosângela F L Batista & Antônio A M Silva & Marco A Barbieri & Vanda M F Simões & Heloisa Bettiol, 2012. "Factors Associated with Height Catch-Up and Catch-Down Growth Among Schoolchildren," PLOS ONE, Public Library of Science, vol. 7(3), pages 1-10, March.
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