Department of Biometrics, Vertex Pharmaceuticals.
Department of Biostatistics, School of Medicine, Virginia Commonwealth University.
Psychol Methods. 2022 Oct;27(5):703-729. doi: 10.1037/met0000309. Epub 2021 Mar 29.
Latent growth curve models with spline functions are flexible and accessible statistical tools for investigating nonlinear change patterns that exhibit distinct phases of development in manifested variables. Among such models, the bilinear spline growth model (BLSGM) is the most straightforward and intuitive but useful. An existing study has demonstrated that the BLSGM allows the knot (or change-point), at which two linear segments join together, to be an additional growth factor other than the intercept and slopes so that researchers can estimate the knot and its variability in the framework of individual measurement occasions. However, developmental processes usually unfold in a joint development where two or more outcomes and their change patterns are correlated over time. As an extension of the existing BLSGM with an unknown knot, this study considers a parallel BLSGM (PBLSGM) for investigating multiple nonlinear growth processes and estimating the knot with its variability of each process as well as the knot-knot association in the framework of individual measurement occasions. We present the proposed model by simulation studies and a real-world data analysis. Our simulation studies demonstrate that the proposed PBLSGM generally estimate the parameters of interest unbiasedly, precisely and exhibit appropriate confidence interval coverage. An empirical example using longitudinal reading scores, mathematics scores, and science scores shows that the model can estimate the knot with its variance for each growth curve and the covariance between two knots. We also provide the corresponding code for the proposed model. (PsycInfo Database Record (c) 2022 APA, all rights reserved).
具有样条函数的潜在增长曲线模型是一种灵活且易于使用的统计工具,可用于研究表现变量中具有明显发展阶段的非线性变化模式。在这些模型中,双线性样条增长模型(BLSGM)是最简单、最直观但最有用的。一项现有研究表明,BLSGM 允许连接两个线性段的结(或转折点)成为除截距和斜率之外的另一个增长因素,以便研究人员可以在个体测量时刻的框架内估计结及其可变性。然而,发展过程通常是在联合发展中展开的,两个或多个结果及其变化模式随时间相关。作为现有 BLSGM 与未知结的扩展,本研究考虑了一种并行 BLSGM(PBLSGM),用于研究多个非线性增长过程,并在个体测量时刻的框架内估计每个过程的结及其可变性以及结-结关联。我们通过模拟研究和实际数据分析来介绍所提出的模型。我们的模拟研究表明,所提出的 PBLSGM 通常可以无偏、精确地估计感兴趣的参数,并表现出适当的置信区间覆盖。使用纵向阅读分数、数学分数和科学分数的实证示例表明,该模型可以估计每个增长曲线的结及其方差以及两个结之间的协方差。我们还为所提出的模型提供了相应的代码。(PsycInfo 数据库记录(c)2022 APA,保留所有权利)。