nlive: an R Package to facilitate the application of the sigmoidal and random changepoint mixed models
Ana W Capuano, Maude Wagner

TL;DR
The nlive R package simplifies fitting sigmoidal and changepoint mixed models, enabling better analysis of longitudinal data with new features like covariate inclusion and recent estimation methods.
Contribution
This paper introduces nlive, an R package that facilitates fitting sigmoidal and piecewise mixed models with recent methodological improvements.
Findings
Successfully implemented functions and covariance matrices.
Validated with simulations and a real data example.
Available on CRAN for easy access.
Abstract
Background: The use of mixed effect models with a specific functional form such as the Sigmoidal Mixed Model and the Piecewise Mixed Model (or Changepoint Mixed Model) with abrupt or smooth random change allows the interpretation of the defined parameters to understand longitudinal trajectories. Currently, there are no interface R packages that can easily fit the Sigmoidal Mixed Model allowing the inclusion of covariates or incorporating recent developments to fit the Piecewise Mixed Model with random change. Results: To facilitate the modeling of the Sigmoidal Mixed Model, and Piecewise Mixed Model with abrupt or smooth random change, we have created an R package called nlive. All needed pieces such as functions, covariance matrices, and initials generation were programmed. The package was implemented with recent developments such as the polynomial smooth transition of the piecewise…
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Taxonomy
TopicsMental Health Research Topics
