Abstract

The number of Mendelian randomization (MR) analyses including large numbers of genetic variants is rapidly increasing. This is due to the proliferation of genome‐wide association studies, and the desire to obtain more precise estimates of causal effects. Since it is unlikely that all genetic variants will be valid instrumental variables, several robust methods have been proposed. We compare nine robust methods for MR based on summary data that can be implemented using standard statistical software. Methods were compared in three ways: by reviewing their theoretical properties, in an extensive simulation study, and in an empirical example. In the simulation study, the best method, judged by mean squared error was the contamination mixture method. This method had well‐controlled Type 1 error rates with up to 50% invalid instruments across a range of scenarios. Other methods performed well according to different metrics. Outlier‐robust methods had the narrowest confidence intervals in the empirical example. With isolated exceptions, all methods performed badly when over 50% of the variants were invalid instruments. Our recommendation for investigators is to perform a variety of robust methods that operate in different ways and rely on different assumptions for valid inferences to assess the reliability of MR analyses.

Highlights

  • We review nine robust methods for Mendelian randomization (MR) from a theoretical perspective, and evaluate their performance in a simulation study set in a two‐sample summary data setting

  • We consider three scenarios: 1. balanced pleiotropy, Instrument Strength Independent of Direct Effect (InSIDE) satisfied—invalid instrumental variable (IV) have direct effects on the outcome generated from a normal distribution centered at zero (for invalid instruments αj ∼ (0, 0.15), φj = 0); 2. directional pleiotropy, InSIDE satisfied—invalid IVs have direct effects on the outcome generated from a normal distribution centered away from zero (for invalid instruments αj ∼ (0.1, 0.075), φj = 0); 3. directional pleiotropy, InSIDE violated—invalid IVs have direct effects on the outcome generated from a normal distribution centered away from zero, and indirect effects on the outcome via the confounder (for invalid instruments αj ∼ (0.1, 0.075), φj ∼ (0, 0.1))

  • We have provided a review of robust methods for MR, focusing on methods that can be performed using summary data and implemented using standard statistical software

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Summary

| INTRODUCTION

Vertical pleiotropy occurs when a variant is directly associated with the exposure and another trait on the same biological pathway This does not lead to violation of the IV assumptions provided the only causal pathway from the genetic variant to the outcome passes via the exposure. Horizontal pleiotropy occurs when the second trait is on a different biological pathway, and so there may exist different causal pathways from the variant to the outcome. This would violate the exclusion restriction assumption. We discuss the implications of this study for applied practice

| METHODS
| Consensus methods
Method
| Modelling methods
| RESULTS
Findings
| DISCUSSION
Full Text
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