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On the Power to Detect a Natural Indirect Effect in Causal Mediation Analysis with a Categorical Mediator and a Binary Outcome
Investigations of statistical power in causal mediation analysis are scant, especially for binary outcomes. In parallel, categorical mediators are not rare in epidemiologic practice. In the present work, we aim to generalize our exact regression-based approach for a binary outcome and a binary mediator to mediation settings with a categorical mediator. Namely, we will introduce exact natural effect estimators based on binary outcome and multinomial mediator logistic models. Formulas for the delta method standard errors will be also provided. Since the flexibility of a mediation analysis with a categorical mediator comes at a cost in terms of power, we will present results of a simulation study designed to evaluate capacity to detect natural indirect effect under different scenarios, including ones where the outcome is affected by certain categories of the mediator but not necessarily by others.
Date and Time
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Additional Authors and Speakers (not including you)
Geneviève Lefebvre
Université du Québec à Montréal
Language of Oral Presentation
English
Language of Visual Aids
English

Speaker

Edit Name Primary Affiliation
Mariia Samoilenko Université de Montréal