Mediation Analysis Without Sequential Ignorability: Using Baseline Covariates Interacted with Random Assignment as Instrumental Variables

In randomized trials, researchers are often interested in mediation analysis to understand how a treatment works, in particular how much of a treatment's effect is mediated by an intermediated variable and how much the treatment directly affects the outcome not through the mediator. The standard regression approach to mediation analysis assumes sequential ignorability of the mediator, that is that the mediator is effectively randomly assigned given baseline covariates and the randomized treatment. Since the experiment does not randomize the mediator, sequential ignorability is often not plausible. Ten Have et al. (2007, Biometrics), Dunn and Bentall (2007, Statistics in Medicine) and Albert (2008, Statistics in Medicine) presented methods that use baseline covariates interacted with random assignment as instrumental variables, and do not require sequential ignorability. We make two contributions to this approach. First, in previous work on the instrumental variable approach, it has been assumed that the direct effect of treatment and the effect of the mediator are constant across subjects; we allow for variation in effects across subjects and show what assumptions are needed to obtain consistent estimates for this setting. Second, we develop a method of sensitivity analysis for violations of the key assumption that the direct effect of the treatment and the effect of the mediator do not depend on the baseline covariates.

[1]  F. Prati,et al.  Lo studio PROSPECT , 2012 .

[2]  Marshall M Joffe,et al.  A review of causal estimation of effects in mediation analyses , 2012, Statistical methods in medical research.

[3]  L. Keele,et al.  Identification, Inference and Sensitivity Analysis for Causal Mediation Effects , 2010, 1011.1079.

[4]  Stijn Vansteelandt,et al.  Estimating Direct Effects in Cohort and Case–Control Studies , 2009, Epidemiology.

[5]  Jeffrey M Albert,et al.  Mediation analysis via potential outcomes models , 2008, Statistics in medicine.

[6]  Dylan S. Small,et al.  Extended Instrumental Variables Estimation for Overall Effects , 2008, The international journal of biostatistics.

[7]  Graham Dunn,et al.  Modelling treatment‐effect heterogeneity in randomized controlled trials of complex interventions (psychological treatments) , 2007, Statistics in medicine.

[8]  Kevin G Lynch,et al.  Causal Mediation Analyses with Rank Preserving Models , 2007, Biometrics.

[9]  D. Mehrotra,et al.  Eliciting a Counterfactual Sensitivity Parameter , 2007 .

[10]  Thomas R Ten Have,et al.  Reducing suicidal ideation and depressive symptoms in depressed older primary care patients: a randomized controlled trial. , 2004, JAMA.

[11]  Jeffrey M. Wooldridge,et al.  Solutions Manual and Supplementary Materials for Econometric Analysis of Cross Section and Panel Data , 2003 .

[12]  Howard S. Bloom,et al.  Using Instrumental Variables Analysis to Learn More from Social Policy Experiments , 2002 .

[13]  H. Kraemer,et al.  Mediators and moderators of treatment effects in randomized clinical trials. , 2002, Archives of general psychiatry.

[14]  Jonathan H. Wright,et al.  A Survey of Weak Instruments and Weak Identification in Generalized Method of Moments , 2002 .

[15]  S. West,et al.  A comparison of methods to test mediation and other intervening variable effects. , 2002, Psychological methods.

[16]  H. White,et al.  Instrumental Variables Regression with Independent Observations , 1982 .

[17]  Francesco Prati,et al.  [The PROSPECT study]. , 2012, Giornale italiano di cardiologia.

[18]  Jeffrey M. Woodbridge Econometric Analysis of Cross Section and Panel Data , 2002 .

[19]  David A. Jaeger,et al.  Problems with Instrumental Variables Estimation when the Correlation between the Instruments and the Endogenous Explanatory Variable is Weak , 1995 .

[20]  D. A. Kenny,et al.  The moderator-mediator variable distinction in social psychological research: conceptual, strategic, and statistical considerations. , 1986, Journal of personality and social psychology.