Valente Matthew J, MacKinnon David P
Arizona State University.
SAS Glob Forum. 2018;2018.
Mediation analysis is a statistical technique for investigating the extent to which a mediating variable transmits the effect of an independent variable to a dependent variable. Because it is used in many fields, there have been rapid developments in statistical mediation. The most cutting-edge statistical mediation analysis focuses on the causal interpretation of mediated effects. Causal inference is particularly challenging in mediation analysis because of the difficulty of randomizing subjects to levels of the mediator. The focus of this paper is on updating three existing SAS macros (%TWOWAVEMED, %TWOWAVEMONTECARLO, and %TWOWAVEPOSTPOWER, presented at SAS Global Forum 2017) in two important ways. First, the macros are updated to incorporate new cutting-edge methods for estimating longitudinal mediated effects from the Potential Outcomes Framework for causal inference. The two new methods are inverse-propensity weighting, an application of propensity scores, and sequential G-estimation. The causal inference methods are revolutionary because they frame the estimation of mediated effects in terms of differences in potential outcomes, which align more naturally with how researchers think about causal inference. Second, the macros are updated to estimate mediated effects across three waves of data. The combination of these new causal inference methods and three waves of data enable researchers to test how causal mediated effects develop and maintain over time.
中介分析是一种统计技术,用于研究中介变量将自变量的效应传递给因变量的程度。由于它在许多领域都有应用,统计中介分析发展迅速。最前沿的统计中介分析侧重于中介效应的因果解释。在中介分析中,因果推断尤其具有挑战性,因为很难将受试者随机分配到中介变量的不同水平。本文的重点是以两种重要方式更新三个现有的SAS宏(在2017年SAS全球论坛上展示的%TWOWAVEMED、%TWOWAVEMONTECARLO和%TWOWAVEPOSTPOWER)。首先,更新宏以纳入用于从因果推断的潜在结果框架估计纵向中介效应的新前沿方法。这两种新方法是逆倾向加权(倾向得分的一种应用)和序贯G估计。这些因果推断方法具有革命性,因为它们根据潜在结果的差异来构建中介效应的估计,这与研究人员思考因果推断的方式更自然地契合。其次,更新宏以估计三波数据中的中介效应。这些新的因果推断方法与三波数据的结合使研究人员能够检验因果中介效应如何随着时间发展和维持。