TL;DR
This paper introduces a new class of asymmetric nonlinear mixed effects models using scale mixtures of skew-normal and normal distributions, enabling robust analysis of longitudinal data with outliers.
Contribution
It proposes an EM-type algorithm for approximate maximum likelihood estimation in these models, addressing numerical challenges of exact methods.
Findings
Effective parameter estimation demonstrated on Theophylline data
Robustness to outliers shown through simulation studies
Model flexibility improves fit for longitudinal data
Abstract
Nonlinear mixed effects models have received a great deal of attention in the statistical literature in recent years because of their flexibility in handling longitudinal studies, including human immunodeficiency virus viral dynamics, pharmacokinetic analyses, and studies of growth and decay. A standard assumption in nonlinear mixed effects models for continuous responses is that the random effects and the within-subject errors are normally distributed, making the model sensitive to outliers. We present a novel class of asymmetric nonlinear mixed effects models that provides efficient parameters estimation in the analysis of longitudinal data. We assume that, marginally, the random effects follow a multivariate scale mixtures of skew--normal distribution and that the random errors follow a symmetric scale mixtures of normal distribution, providing an appealing robust alternative to the…
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