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Comparison of growth curve models for assessing height in a South African birth cohort

Childhood malnutrition is a major concern in low- to middle- income populations. This dissertation uses longitudinal data on height measurements of babies between 0 and 4 years of age to construct growth curves, which serve as a tool for assessing the health and nutritional progress of children. We...

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Main Author: Niehaus, Jacqui
Other Authors: Little, Francesca
Format: Thesis
Language:English
Published: Department of Statistical Sciences 2019
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access_status_str Open Access
author Niehaus, Jacqui
author2 Little, Francesca
author_browse Little, Francesca
Niehaus, Jacqui
author_facet Little, Francesca
Niehaus, Jacqui
author_sort Niehaus, Jacqui
collection Thesis
description Childhood malnutrition is a major concern in low- to middle- income populations. This dissertation uses longitudinal data on height measurements of babies between 0 and 4 years of age to construct growth curves, which serve as a tool for assessing the health and nutritional progress of children. We wish to characterise the way height changes over time and identify predictors of that change. Various mixed effect models were fit and compared to neural networks in terms of model fit, interpretability of parameters as well as predictive power. The best fitting mixed-effect model was the Berkey-Reed 2nd order model. The neural network compared well with this model, indicating that neural networks may serve as a useful alternative to modelling longitudinal growth data. Subsequently, logistic regression was used to explain the relationship between various pre- and post-natal risk factors for stunting, a shortfall in height relative to age. The results were compared to a random forest model. Methods for variable importance in classification problems using tree-based methods were explored. The random forest model appeared to perform similarly to the logistic regression model in terms of predictive power and variable interpretation. This dissertation contributes in investigating the possibility of using machine learning techniques to identify probable correlates of childhood malnutrition.
format Thesis
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institution University of Cape Town (South Africa)
language eng
last_indexed 2026-06-10T12:33:59.204Z
license_str Not specified — see source repository
provenance_str_mv Harvested via OAI-PMH from UCTD — University of Cape Town Open Access Repository
publishDate 2019
publishDateRange 2019
publishDateSort 2019
publisher Department of Statistical Sciences
publisherStr Department of Statistical Sciences
record_format dspace
source_str UCTD — University of Cape Town Open Access Repository
spelling oai:open.uct.ac.za:11427/30011 Comparison of growth curve models for assessing height in a South African birth cohort Niehaus, Jacqui Little, Francesca Childhood malnutrition is a major concern in low- to middle- income populations. This dissertation uses longitudinal data on height measurements of babies between 0 and 4 years of age to construct growth curves, which serve as a tool for assessing the health and nutritional progress of children. We wish to characterise the way height changes over time and identify predictors of that change. Various mixed effect models were fit and compared to neural networks in terms of model fit, interpretability of parameters as well as predictive power. The best fitting mixed-effect model was the Berkey-Reed 2nd order model. The neural network compared well with this model, indicating that neural networks may serve as a useful alternative to modelling longitudinal growth data. Subsequently, logistic regression was used to explain the relationship between various pre- and post-natal risk factors for stunting, a shortfall in height relative to age. The results were compared to a random forest model. Methods for variable importance in classification problems using tree-based methods were explored. The random forest model appeared to perform similarly to the logistic regression model in terms of predictive power and variable interpretation. This dissertation contributes in investigating the possibility of using machine learning techniques to identify probable correlates of childhood malnutrition. 2019-05-10T11:05:49Z 2019-05-10T11:05:49Z 2018 2019-05-09T13:02:21Z Master Thesis Masters MSc http://hdl.handle.net/11427/30011 eng application/pdf Department of Statistical Sciences Faculty of Science
spellingShingle Niehaus, Jacqui
Comparison of growth curve models for assessing height in a South African birth cohort
thesis_degree_str Master's
title Comparison of growth curve models for assessing height in a South African birth cohort
title_full Comparison of growth curve models for assessing height in a South African birth cohort
title_fullStr Comparison of growth curve models for assessing height in a South African birth cohort
title_full_unstemmed Comparison of growth curve models for assessing height in a South African birth cohort
title_short Comparison of growth curve models for assessing height in a South African birth cohort
title_sort comparison of growth curve models for assessing height in a south african birth cohort
url http://hdl.handle.net/11427/30011
work_keys_str_mv AT niehausjacqui comparisonofgrowthcurvemodelsforassessingheightinasouthafricanbirthcohort