Multiclass classification of growth curves using random change points and heterogeneous random effects
Vincent Chin, Jarod Y. L. Lee, Louise M. Ryan, Robert Kohn, Scott A., Sisson

TL;DR
This paper develops a flexible multiclass classification model for children's growth trajectories, incorporating random change points and heterogeneity, to better identify and characterize different growth patterns for targeted interventions.
Contribution
It introduces a novel growth classification model using child-specific random change points and Dirichlet process mixture effects, improving over fixed-knot models.
Findings
Identified 9 distinct growth subgroups in a birth cohort.
Model outperforms fixed-knot models in simulation studies.
Revealed diverse faltering patterns between birth and age one.
Abstract
Faltering growth among children is a nutritional problem prevalent in low to medium income countries; it is generally defined as a slower rate of growth compared to a reference healthy population of the same age and gender. As faltering is closely associated with reduced physical, intellectual and economic productivity potential, it is important to identify faltered children and be able to characterise different growth patterns so that targeted treatments can be designed and administered. We introduce a multiclass classification model for growth trajectory that flexibly extends a current classification approach called the broken stick model, which is a piecewise linear model with breaks at fixed knot locations. Heterogeneity in growth patterns among children is captured using mixture distributed random effects, whereby the mixture components determine the classification of children into…
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Taxonomy
TopicsChild Nutrition and Water Access · Food Security and Health in Diverse Populations
