Yang Manshu, Wang Lijuan, Maxwell Scott E
Department of Psychology, University of Rhode Island.
Department of Psychology, University of Notre Dame.
Psychol Methods. 2024 Dec 12. doi: 10.1037/met0000709.
Longitudinal randomized controlled trials (RCTs) have been commonly used in psychological studies to evaluate the effectiveness of treatment or intervention strategies. Outcomes in longitudinal RCTs may follow either straight-line or curvilinear change trajectories over time, and missing data are almost inevitable in such trials. The current study aims to investigate (a) whether the estimate of average treatment effect (ATE) would be biased if a straight-line growth (SLG) model is fit to longitudinal RCT data with quadratic growth and missing completely at random (MCAR) or missing at random (MAR) data, and (b) whether adding a quadratic term to an SLG model would improve the ATE estimation and inference. Four models were compared via a simulation study, including the SLG model, the quadratic growth model with arm-invariant and fixed quadratic effect (QG-AIF), the quadratic growth model with arm-specific and fixed quadratic effects (QG-ASF), and the quadratic growth model with arm-specific and random quadratic effects (QG-ASR). Results suggest that fitting an SLG model to quadratic growth data often yielded severe biases in ATE estimates, even if data were MCAR or MAR. Given four or more waves of longitudinal data, the QG-ASR model outperformed the other methods; for three-wave data, the QG-ASR model was not applicable and the QG-ASF model performed well. Applications of different models are also illustrated using an empirical data example. (PsycInfo Database Record (c) 2024 APA, all rights reserved).
纵向随机对照试验(RCTs)在心理学研究中常用于评估治疗或干预策略的有效性。纵向RCTs的结果可能随时间呈现直线或曲线变化轨迹,而且在此类试验中缺失数据几乎不可避免。本研究旨在调查:(a)如果将直线增长(SLG)模型应用于具有二次增长且数据完全随机缺失(MCAR)或随机缺失(MAR)的纵向RCT数据,平均治疗效果(ATE)的估计是否会产生偏差;以及(b)在SLG模型中添加二次项是否会改善ATE估计和推断。通过模拟研究比较了四种模型,包括SLG模型、具有组不变和固定二次效应的二次增长模型(QG-AIF)、具有组特定和固定二次效应的二次增长模型(QG-ASF)以及具有组特定和随机二次效应的二次增长模型(QG-ASR)。结果表明,即使数据是MCAR或MAR,将SLG模型应用于二次增长数据通常会在ATE估计中产生严重偏差。对于四波或更多波的纵向数据,QG-ASR模型优于其他方法;对于三波数据,QG-ASR模型不适用,QG-ASF模型表现良好。还使用一个实证数据示例说明了不同模型的应用。(《心理学文摘数据库记录》(c)2024美国心理学会,保留所有权利)