Pulse Brain · Growing Health Evidence Index
Peer-reviewed

Inferring Causal Relationships Between Risk Factors and Outcomes from Genome-Wide Association Study Data

Stephen Burgess, Christopher N. Foley, Verena Zuber

Annual Review of Genomics and Human Genetics · 2018

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Summary

An observational correlation between a suspected risk factor and an outcome does not necessarily imply that interventions on levels of the risk factor will have a causal impact on the outcome (correlation is not causation). If genetic variants associated with the risk factor are also associated with the outcome, then this increases the plausibility that the risk factor is a causal determinant of the outcome. However, if the genetic variants in the analysis do not have a specific biological link to the risk factor, then causal claims can be spurious. We review the Mendelian randomization paradigm for making causal inferences using genetic variants. We consider monogenic analysis, in which genetic variants are taken from a single gene region, and polygenic analysis, which includes variants f

Source type
Peer-reviewed study
DOI
10.1146/annurev-genom-083117-021731
Catalogue ID
SNmoj1xza7-r8c9d0
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