Modelling fertility in rural South Africa with combined nonlinear parametric and semi-parametric methods

Abstract Background Central to the study of populations, and therefore to the analysis of the development of countries undergoing major transitions, is the calculation of fertility patterns and their dependence on different variables such as age, education, and socio-economic status. Most epidemiolo...

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Main Authors: Robert W. Eyre, Thomas House, F. Xavier Gómez-Olivé, Frances E. Griffiths
Format: Article
Language:English
Published: BMC 2018-03-01
Series:Emerging Themes in Epidemiology
Subjects:
Online Access:http://link.springer.com/article/10.1186/s12982-018-0073-y
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author Robert W. Eyre
Thomas House
F. Xavier Gómez-Olivé
Frances E. Griffiths
author_facet Robert W. Eyre
Thomas House
F. Xavier Gómez-Olivé
Frances E. Griffiths
author_sort Robert W. Eyre
collection DOAJ
description Abstract Background Central to the study of populations, and therefore to the analysis of the development of countries undergoing major transitions, is the calculation of fertility patterns and their dependence on different variables such as age, education, and socio-economic status. Most epidemiological research on these matters rely on the often unjustified assumption of (generalised) linearity, or alternatively makes a parametric assumption (e.g. for age-patterns). Methods We consider nonlinearity of fertility in the covariates by combining an established nonlinear parametric model for fertility over age with nonlinear modelling of fertility over other covariates. For the latter, we use the semi-parametric method of Gaussian process regression which is a popular methodology in many fields including machine learning, computer science, and systems biology. We applied the method to data from the Agincourt Health and Socio-Demographic Surveillance System, annual census rounds performed on a poor rural region of South Africa since 1992, to analyse fertility patterns over age and socio-economic status. Results We capture a previously established age-pattern of fertility, whilst being able to more robustly model the relationship between fertility and socio-economic status without unjustified a priori assumptions of linearity. Peak fertility over age is shown to be increasing over time, as well as for adolescents but not for those later in life for whom fertility is generally decreasing over time. Conclusions Combining Gaussian process regression with nonlinear parametric modelling of fertility over age allowed for the incorporation of further covariates into the analysis without needing to assume a linear relationship. This enabled us to provide further insights into the fertility patterns of the Agincourt study area, in particular the interaction between age and socio-economic status.
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spelling doaj.art-d8b6a48d7dfb48a5802731e5b517da9d2022-12-22T03:31:47ZengBMCEmerging Themes in Epidemiology1742-76222018-03-0115111110.1186/s12982-018-0073-yModelling fertility in rural South Africa with combined nonlinear parametric and semi-parametric methodsRobert W. Eyre0Thomas House1F. Xavier Gómez-Olivé2Frances E. Griffiths3Centre for Complexity Science, University of WarwickSchool of Mathematics, University of ManchesterMedical Research Council/Wits University Rural Public Health and Health Transitions Research Unit (Agincourt), School of Public Health, Faculty of Health Sciences, University of the WitwatersrandWarwick Medical School, University of WarwickAbstract Background Central to the study of populations, and therefore to the analysis of the development of countries undergoing major transitions, is the calculation of fertility patterns and their dependence on different variables such as age, education, and socio-economic status. Most epidemiological research on these matters rely on the often unjustified assumption of (generalised) linearity, or alternatively makes a parametric assumption (e.g. for age-patterns). Methods We consider nonlinearity of fertility in the covariates by combining an established nonlinear parametric model for fertility over age with nonlinear modelling of fertility over other covariates. For the latter, we use the semi-parametric method of Gaussian process regression which is a popular methodology in many fields including machine learning, computer science, and systems biology. We applied the method to data from the Agincourt Health and Socio-Demographic Surveillance System, annual census rounds performed on a poor rural region of South Africa since 1992, to analyse fertility patterns over age and socio-economic status. Results We capture a previously established age-pattern of fertility, whilst being able to more robustly model the relationship between fertility and socio-economic status without unjustified a priori assumptions of linearity. Peak fertility over age is shown to be increasing over time, as well as for adolescents but not for those later in life for whom fertility is generally decreasing over time. Conclusions Combining Gaussian process regression with nonlinear parametric modelling of fertility over age allowed for the incorporation of further covariates into the analysis without needing to assume a linear relationship. This enabled us to provide further insights into the fertility patterns of the Agincourt study area, in particular the interaction between age and socio-economic status.http://link.springer.com/article/10.1186/s12982-018-0073-yFertilityAge-patternSocio-economic status patternAgincourtNonlinear modelParametric model
spellingShingle Robert W. Eyre
Thomas House
F. Xavier Gómez-Olivé
Frances E. Griffiths
Modelling fertility in rural South Africa with combined nonlinear parametric and semi-parametric methods
Emerging Themes in Epidemiology
Fertility
Age-pattern
Socio-economic status pattern
Agincourt
Nonlinear model
Parametric model
title Modelling fertility in rural South Africa with combined nonlinear parametric and semi-parametric methods
title_full Modelling fertility in rural South Africa with combined nonlinear parametric and semi-parametric methods
title_fullStr Modelling fertility in rural South Africa with combined nonlinear parametric and semi-parametric methods
title_full_unstemmed Modelling fertility in rural South Africa with combined nonlinear parametric and semi-parametric methods
title_short Modelling fertility in rural South Africa with combined nonlinear parametric and semi-parametric methods
title_sort modelling fertility in rural south africa with combined nonlinear parametric and semi parametric methods
topic Fertility
Age-pattern
Socio-economic status pattern
Agincourt
Nonlinear model
Parametric model
url http://link.springer.com/article/10.1186/s12982-018-0073-y
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