School of Social Work, University of Washington.
Department of Psychology, Brigham Young University.
Multivariate Behav Res. 2023 Nov-Dec;58(6):1090-1105. doi: 10.1080/00273171.2023.2173135. Epub 2023 Mar 23.
Meta-analysis using individual participant data (IPD) is an important methodology in intervention research because it (a) increases accuracy and precision of estimates, (b) allows researchers to investigate mediators and moderators of treatment effects, and (c) makes use of extant data. IPD meta-analysis can be conducted either via a one-step approach that uses data from all studies simultaneously, or a two-step approach, which aggregates data for each study and then combines them in a traditional meta-analysis model. Unfortunately, there are no evidence-based guidelines for how best to approach IPD meta-analysis for count outcomes with many zeroes, such as alcohol use. We used simulation to compare the performance of four hurdle models (3 one-step and 1 two-step models) for zero-inflated count IPD, under realistic data conditions. Overall, all models yielded adequate coverage and bias for the treatment effect in the count portion of the model, across all data conditions. However, in the zero portion, the treatment effect was underestimated in most models and data conditions, especially when there were fewer studies. The performance of both one- and two-step approaches depended on the formulation of the treatment effects, suggesting a need to carefully consider model assumptions and specifications when using IPD.
使用个体参与者数据(IPD)的荟萃分析是干预研究中的一种重要方法,因为它:(a) 提高了估计值的准确性和精密度;(b) 允许研究人员研究治疗效果的中介和调节因素;(c) 利用现有数据。IPD 荟萃分析可以通过同时使用所有研究数据的一步法或聚合每个研究数据然后在传统荟萃分析模型中组合这些数据的两步法进行。不幸的是,对于像酒精使用这样的零值较多的计数结果,没有基于证据的指南来最好地进行 IPD 荟萃分析。我们使用模拟比较了四种障碍模型(3 种一步法和 1 种两步法)在现实数据条件下对零膨胀计数 IPD 的表现。总体而言,所有模型在模型的计数部分对治疗效果都表现出了足够的覆盖范围和偏差,在所有数据条件下均如此。然而,在零部分,在大多数模型和数据条件下,治疗效果被低估,尤其是当研究较少时。一步法和两步法的表现都取决于治疗效果的表述,这表明在使用 IPD 时需要仔细考虑模型假设和规范。