Search engine for discovering works of Art, research articles, and books related to Art and Culture
ShareThis
Javascript must be enabled to continue!

Pleiotropy robust methods for multivariable Mendelian randomization

View through CrossRef
AbstractMendelian randomization is a powerful tool for inferring the presence, or otherwise, of causal effects from observational data. However, the nature of genetic variants is such that pleiotropy remains a barrier to valid causal effect estimation. There are many options in the literature for pleiotropy robust methods when studying the effects of a single risk factor on an outcome. However, there are few pleiotropy robust methods in the multivariable setting, that is, when there are multiple risk factors of interest. In this article we introduce three methods which build on common approaches in the univariable setting: MVMR‐Robust; MVMR‐Median; and MVMR‐Lasso. We discuss the properties of each of these methods and examine their performance in comparison to existing approaches in a simulation study. MVMR‐Robust is shown to outperform existing outlier robust approaches when there are low levels of pleiotropy. MVMR‐Lasso provides the best estimation in terms of mean squared error for moderate to high levels of pleiotropy, and can provide valid inference in a three sample setting. MVMR‐Median performs well in terms of estimation across all scenarios considered, and provides valid inference up to a moderate level of pleiotropy. We demonstrate the methods in an applied example looking at the effects of intelligence, education and household income on the risk of Alzheimer's disease.
Title: Pleiotropy robust methods for multivariable Mendelian randomization
Description:
AbstractMendelian randomization is a powerful tool for inferring the presence, or otherwise, of causal effects from observational data.
However, the nature of genetic variants is such that pleiotropy remains a barrier to valid causal effect estimation.
There are many options in the literature for pleiotropy robust methods when studying the effects of a single risk factor on an outcome.
However, there are few pleiotropy robust methods in the multivariable setting, that is, when there are multiple risk factors of interest.
In this article we introduce three methods which build on common approaches in the univariable setting: MVMR‐Robust; MVMR‐Median; and MVMR‐Lasso.
We discuss the properties of each of these methods and examine their performance in comparison to existing approaches in a simulation study.
MVMR‐Robust is shown to outperform existing outlier robust approaches when there are low levels of pleiotropy.
MVMR‐Lasso provides the best estimation in terms of mean squared error for moderate to high levels of pleiotropy, and can provide valid inference in a three sample setting.
MVMR‐Median performs well in terms of estimation across all scenarios considered, and provides valid inference up to a moderate level of pleiotropy.
We demonstrate the methods in an applied example looking at the effects of intelligence, education and household income on the risk of Alzheimer's disease.

Related Results

Mendelian Randomization
Mendelian Randomization
Abstract Causal claims from observational epidemiological studies are influenced by reverse causation and confounding. M...
MVMRmode: Introducing an R package for plurality valid estimators for multivariable Mendelian randomisation
MVMRmode: Introducing an R package for plurality valid estimators for multivariable Mendelian randomisation
Background Mendelian randomisation (MR) is the use of genetic variants as instrumental variables. Mode-based estimators (MBE) are one of the most popular types ...
Association between childhood obesity and vitamin D: a Mendelian randomization study
Association between childhood obesity and vitamin D: a Mendelian randomization study
Abstract Background: Previous randomized controlled trial studies have confirmed that obesity can cause changes in serum vitamin D levels, but these changes has not been st...
Inferring Causal Direction Between Two Traits in the Presence of Horizontal Pleiotropy with GWAS Summary Data
Inferring Causal Direction Between Two Traits in the Presence of Horizontal Pleiotropy with GWAS Summary Data
Abstract Orienting the causal relationship between pairs of traits is a fundamental task in scientific research with significant implications in practice, such as i...
Reverse causation between multiple sclerosis and psoriasis: a genetic correlation and Mendelian randomization study
Reverse causation between multiple sclerosis and psoriasis: a genetic correlation and Mendelian randomization study
AbstractObservational studies have found a potential bidirectional positive association between multiple sclerosis and psoriasis, but these studies are susceptible to confounding f...
Causal Association Between Multiple Sclerosis and Psoriasis: A Genetic Correlation and Mendelian Randomization Study
Causal Association Between Multiple Sclerosis and Psoriasis: A Genetic Correlation and Mendelian Randomization Study
Abstract Observational studies found a potential bidirectional positive association between multiple sclerosis and psoriasis, but are susceptible to confounding factors. We...

Back to Top