Causal mediation analysis: How to avoid fooling yourself that causes .

Lab Anim

Prioris.ai Inc., Ottawa, Canada.

Published: October 2024

The purpose of many preclinical studies is to determine whether an experimental intervention affects an outcome through a particular mechanism, but the analytical methods and inferential logic typically used cannot answer this question, leading to erroneous conclusions about causal relationships, which can be highly reproducible. A causal mediation analysis can directly test whether a hypothesised mechanism is partly or completely responsible for a treatment's effect on an outcome. Such an analysis can be easily implemented with modern statistical software. We show how a mediation analysis can distinguish between three different causal relationships that are indistinguishable when using a standard analysis.

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Source
http://dx.doi.org/10.1177/00236772231217777DOI Listing

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