Longitudinal processes often unfold concurrently where the growth of two or more longitudinal outcomes are associated. Additionally, if the study under investigation is long, the growth curves may exhibit nonconstant change with respect to time. Multiple existing studies have developed multivariate growth models with nonlinear functional forms to explore joint development where two longitudinal records are correlated over time. However, the relationship between multiple longitudinal outcomes may also be unidirectional. Accordingly, it is of interest to estimate regression coefficients of such unidirectional paths. One statistical tool for such analyses is longitudinal mediation models. In this study, we develop two models to evaluate mediational processes where the linear-linear piecewise growth model is utilized to capture the change patterns. We define the mediational process as either the baseline covariate or the change in covariate influencing the change in the mediator, which, in turn, affects the change in the outcome. We present the proposed models through simulation studies and real-world data analyses. Our simulation studies demonstrate that the proposed mediational models can provide unbiased and accurate point estimates with target coverage probabilities with a 95% confidence interval. The empirical analyses demonstrate that the proposed model can estimate covariates' direct and indirect effects on the change in the outcome. We also provide the corresponding code for the proposed models.
翻译:此外,如果所调查的研究是长期的,则增长曲线可能显示时间变化不定。多份现有研究已经开发了多种变式增长模式,以非线性功能形式探索两种纵向记录彼此关联的联合发展。然而,多种纵向结果之间的关系也可能是单向的。因此,有必要估计这种单向路径的回归系数。这种分析的一个统计工具是纵向调解模型。在本研究中,我们开发了两种模型,用以评价利用线线性线性单向增长模式来捕捉变化模式的调解进程。我们将调解进程定义为基准共变式,或影响调解人变化的共变式变化的变化,这反过来又会影响结果的变化。我们通过模拟研究和真实世界数据分析来介绍拟议的模型。我们的模拟研究表明,拟议的调解模型可以提供公正和准确的点估计数,目标覆盖面为95%的直线性增长模式,从而捕捉到变化模式。我们的经验分析还表明,拟议的模型可以提供95%的间接信任间隔期。我们提出的直接结果模型可以提供相应的模型。