Decomposing Impact on Longitudinal Outcome of Time-varying Covariate into Trait Effect and State Effect

10/30/2022
by   Jin Liu, et al.
0

Developmental processes are often associated with each other over time; therefore, examining such associations and understanding the joint development of multiple processes is of interest. One statistical method is the latent growth curve model (LGCM) with a time-varying covariate (TVC), which estimates the effect on a longitudinal outcome of a TVC while simultaneously modeling change in the longitudinal outcome. However, this existing model does not allow the TVC to predict variation in the random growth coefficients. Our study proposes decomposing the effect of a TVC into trait and state effects to address this limitation. Specifically, we proposed three methods to decompose the impact of a TVC. In all three methods, we consider the baseline value of a TVC as the trait feature, and by regressing random intercepts and slopes on the baseline value, we obtain trait effects. Meanwhile, we characterize (1) the interval-specific slopes, (2) the interval-specific changes, or (3) the change from baseline at each measurement occasion of the TVC as the state feature in three methods, respectively. We obtain state effects by regressing the longitudinal outcome on such state features. We demonstrate the proposed methods using simulation studies and real-world data analyses, assuming the longitudinal outcome takes a linear-linear functional form. Based on the simulation results, the LGCM with a TVC breaking into the baseline value and interval-specific slopes or changes can produce unbiased and precise estimates with target confidence intervals. We provide OpenMx and Mplus 8 code for three methods with commonly used linear and nonlinear functions.

READ FULL TEXT

page 1

page 2

page 3

page 4

research
07/18/2021

Assessing Mediational Processes in Parallel Bilinear Spline Growth Curve Models in the Framework of Individual Measurement Occasions

Multiple existing studies have developed multivariate growth models with...
research
08/26/2020

Estimation and Inference for the Mediation Effect in a Time-varying Mediation Model

Traditional mediation analysis typically examines the relations among an...
research
12/23/2019

Bayesian shape invariant model for longitudinal growth curve data

Growth curve modeling should ideally be flexible, computationally feasib...
research
01/15/2023

Further Exploration of the Effects of Time-varying Covariate in Growth Mixture Models with Nonlinear Trajectories

Growth mixture modeling (GMM) is an analytical tool for identifying mult...
research
05/28/2021

A note on the modeling of the effects of experimental time in psycholinguistic experiments

Thul et al. (2020) called attention to problems that arise when chronome...
research
03/13/2020

VC-BART: Bayesian trees for varying coefficients

The linear varying coefficient (VC) model generalizes the conventional l...
research
08/05/2018

A hierarchical independent component analysis model for longitudinal Neuroimaging studies

In recent years, longitudinal neuroimaging study has become increasingly...

Please sign up or login with your details

Forgot password? Click here to reset