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Generalized growth curve models for longitudinal data in application to a randomized controlled trial
Authors:Nichole Andrews  Hyunkeun Ryan Cho
Institution:1. Department of Statistics, Western Michigan University, Kalamazoo, MI 49008, United States;2. Department of Biostatistics, University of Iowa, Iowa City, IA 52242, United States
Abstract:Growth curve analysis is beneficial in longitudinal studies, where the pattern of response variables measured repeatedly over time is of interest, yet unknown. In this article, we propose generalized growth curve models under a polynomial regression framework and offer a complete process that identifies the parsimonious growth curves for different groups of interest, as well as compares the curves. A higher order of a polynomial degree generally provides more flexible regression, yet it may suffer from the complicated and overfitted model in practice. Therefore, we employ the model selection procedure that chooses the optimal degree of a polynomial consistently. Consideration of a quadratic inference function (Qu et al., 2000) for estimation on regression parameters is addressed and estimation efficiency is improved by incorporating the within-subject correlation commonly existing in longitudinal data. In biomedical studies, it is of particular interest to compare multiple treatments and provide an effective one. We further conduct the hypothesis test that assesses the equality of the growth curves through an asymptotic chi-square test statistic. The proposed methodology is employed on a randomized controlled longitudinal dataset on depression. The effectiveness of our procedure is also confirmed with simulation studies.
Keywords:primary  62J02  secondary  62J12  Growth curve model  Hypothesis test  Longitudinal trajectory  Multigroup comparisons  Parsimonious model selection  Quadratic inference function
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