Monte-Carlo Sensitivity Analysis for Controlled Direct Effects Using Marginal Structural Models in the Presence of Confounded Mediators |
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Authors: | Yasutaka Chiba |
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Affiliation: | 1. Department of Environmental Medicine and Behavioral Science , Kinki University School of Medicine , Osaka , Japan chibay@med.kindai.ac.jp |
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Abstract: | In randomized trials, investigators are frequently interested in estimating the direct effect of a treatment on an outcome that is not relayed by intermediate variables, in addition to the usual intention-to-treat (ITT) effect. Even if the ITT effect is not confounded due to randomization, the direct effect is not identified when unmeasured variables affect the intermediate and outcome variables. Although the unmeasured variables cannot be adjusted for in the models, it is still important to evaluate the potential bias of these variables quantitatively. This article proposes a sensitivity analysis method for controlled direct effects using a marginal structural model that is an extension of the sensitivity analysis method of unmeasured confounding introduced in the context of observational studies. The proposed method is illustrated using a randomized trial of depression. |
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Keywords: | Causal Inference Inverse-probability-of-treatment-weighting Potential outcome Randomized trial |
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