Mendelian randomization (MR) implemented through instrumental variables analysis is an increasingly popular causal inference tool used in genetic epidemiology. But it can have limitations for evaluating simultaneous causal relationships in complex data sets that include, for example, multiple genetic predictors and multiple potential risk factors associated with the same genetic variant. Here we use real and simulated data to investigate Bayesian network analysis (BN) with the incorporation of directed arcs, representing genetic anchors, as an alternative approach. A Bayesian network describes the conditional dependencies/independencies of variables using a graphical model (a directed acyclic graph) with an accompanying joint probability. I...
Background Discovering causal genetic variants from large genetic association studies poses many dif...
AbstractUnderstanding causal relationships among large numbers of variables is a fundamental goal of...
Background: Discovering causal genetic variants from large genetic association studies poses many di...
Complex genetic interactions lie at the foundation of many diseases. Understanding the nature of th...
Studying the impact of genetic variation on gene regulatory networks is essential to understand the ...
We review the applicability of Bayesian networks (BNs) for discovering relations between genes, envi...
Genetic markers can be used as instrumental variables, in an analogous way to randomization in a cli...
Abstract Background Bayesian networks have been proposed as a way to identify possible causal relati...
Studying the impact of genetic variation on gene regulatory networks is essential to understand the ...
The use of genetic variants as instrumental variables – an approach known as Mendelian randomization...
CRP CHD Genetics Collaboration member: L. J. Palmer for the Western Australia Institute for Medical ...
The use of genetic variants as instrumental variables – an approach known as Mendelian randomization...
Bayesian networks (BNs) represent a flexible tool for quantitative [9], qualitative and causal [13] ...
Although large amounts of genomic data are available, it remains a challenge to reliably infer causa...
Mendelian randomization uses genetic variants as instrumental variables to make causal inferences on...
Background Discovering causal genetic variants from large genetic association studies poses many dif...
AbstractUnderstanding causal relationships among large numbers of variables is a fundamental goal of...
Background: Discovering causal genetic variants from large genetic association studies poses many di...
Complex genetic interactions lie at the foundation of many diseases. Understanding the nature of th...
Studying the impact of genetic variation on gene regulatory networks is essential to understand the ...
We review the applicability of Bayesian networks (BNs) for discovering relations between genes, envi...
Genetic markers can be used as instrumental variables, in an analogous way to randomization in a cli...
Abstract Background Bayesian networks have been proposed as a way to identify possible causal relati...
Studying the impact of genetic variation on gene regulatory networks is essential to understand the ...
The use of genetic variants as instrumental variables – an approach known as Mendelian randomization...
CRP CHD Genetics Collaboration member: L. J. Palmer for the Western Australia Institute for Medical ...
The use of genetic variants as instrumental variables – an approach known as Mendelian randomization...
Bayesian networks (BNs) represent a flexible tool for quantitative [9], qualitative and causal [13] ...
Although large amounts of genomic data are available, it remains a challenge to reliably infer causa...
Mendelian randomization uses genetic variants as instrumental variables to make causal inferences on...
Background Discovering causal genetic variants from large genetic association studies poses many dif...
AbstractUnderstanding causal relationships among large numbers of variables is a fundamental goal of...
Background: Discovering causal genetic variants from large genetic association studies poses many di...