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Tools Mediation

Curation of Mediation — listings under the GWAS Tools tab.

Summary Table

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NAME CATEGORY Main citation YEAR
Mediation practitioner's guide Methods
VanderWeele TJ, Annu Rev Public Health, 2016
2016
mediation (JSS) Methods
Tingley D et al., J Stat Softw, 2014
2014
mediation Methods
Carter AR et al., Eur J Epidemiol, 2021
2021

Methods

Mediation practitioner's guide (vanderweele-mediation-guide)

Tool
PUBMED_LINK
26653405
FULL NAME
Mediation analysis: a practitioner's guide
DESCRIPTION
Annual Review of Public Health overview of mediation methods: confounding assumptions for causal direct and indirect effects, interactions, binary outcomes and mediators, case-control designs, sensitivity analysis, time-to-event and multiple mediators, and flexible modeling from counterfactual definitions.
URL
https://pubmed.ncbi.nlm.nih.gov/26653405/
KEYWORDS
mediation,causal inference,direct effects,indirect effects,sensitivity analysis,multiple mediators
TITLE
Mediation Analysis: A Practitioner's Guide.
Main citation
VanderWeele TJ. (2016) Mediation Analysis: A Practitioner's Guide. Annu Rev Public Health, 37 17-32. doi:10.1146/annurev-publhealth-032315-021402. PMID 26653405
ABSTRACT
This article provides an overview of recent developments in mediation analysis, that is, analyses used to assess the relative magnitude of different pathways and mechanisms by which an exposure may affect an outcome. Traditional approaches to mediation in the biomedical and social sciences are described. Attention is given to the confounding assumptions required for a causal interpretation of direct and indirect effect estimates. Methods from the causal inference literature to conduct mediation in the presence of exposure-mediator interactions, binary outcomes, binary mediators, and case-control study designs are presented. Sensitivity analysis techniques for unmeasured confounding and measurement error are introduced. Discussion is given to extensions to time-to-event outcomes and multiple mediators. Further flexible modeling strategies arising from the precise counterfactual definitions of direct and indirect effects are also described. The focus throughout is on methodology that is easily implementable in practice across a broad range of potential applications.
DOI
10.1146/annurev-publhealth-032315-021402

mediation

Tool
PUBMED_LINK
33961203
FULL NAME
Mendelian randomisation for mediation analysis: current methods and challenges for implementation
DESCRIPTION
Review of Mendelian randomisation approaches to mediation analysis, focusing on multivariable MR and two-step MR, with discussion of confounding, measurement error, weak instrument bias, exposure–mediator interaction, multiple mediators, and illustrated code.
URL
https://pubmed.ncbi.nlm.nih.gov/33961203/
KEYWORDS
Mendelian randomisation,mediation,multivariable MR,two-step MR,summary statistics,weak instruments
TITLE
Mendelian randomisation for mediation analysis: current methods and challenges for implementation.
Main citation
Carter AR, Sanderson E, Hammerton G, Richmond RC, Davey Smith G, Heron J, Taylor AE, Davies NM, Howe LD. (2021) Mendelian randomisation for mediation analysis: current methods and challenges for implementation. Eur J Epidemiol, 36 (5) 465-478. doi:10.1007/s10654-021-00757-1. PMID 33961203
ABSTRACT
Mediation analysis seeks to explain the pathway(s) through which an exposure affects an outcome. Traditional, non-instrumental variable methods for mediation analysis experience a number of methodological difficulties, including bias due to confounding between an exposure, mediator and outcome and measurement error. Mendelian randomisation (MR) can be used to improve causal inference for mediation analysis. We describe two approaches that can be used for estimating mediation analysis with MR: multivariable MR (MVMR) and two-step MR. We outline the approaches and provide code to demonstrate how they can be used in mediation analysis. We review issues that can affect analyses, including confounding, measurement error, weak instrument bias, interactions between exposures and mediators and analysis of multiple mediators. Description of the methods is supplemented by simulated and real data examples. Although MR relies on large sample sizes and strong assumptions, such as having strong instruments and no horizontally pleiotropic pathways, our simulations demonstrate that these methods are unaffected by confounders of the exposure or mediator and the outcome and non-differential measurement error of the exposure or mediator. Both MVMR and two-step MR can be implemented in both individual-level MR and summary data MR. MR mediation methods require different assumptions to be made, compared with non-instrumental variable mediation methods. Where these assumptions are more plausible, MR can be used to improve causal inference in mediation analysis.
DOI
10.1007/s10654-021-00757-1

mediation (JSS) (mediation-jss)

Tool
FULL NAME
mediation: R package for causal mediation analysis (JSS)
DESCRIPTION
Journal of Statistical Software article for the mediation R package: model- and design-based causal mediation effects, sensitivity analysis, multiple (dependent) mediators, and mediation with treatment noncompliance.
URL
https://www.jstatsoft.org/article/view/v059i05
KEYWORDS
mediation,R,causal inference,sensitivity analysis,noncompliance,multiple mediators
TITLE
mediation: R Package for Causal Mediation Analysis.
Main citation
Tingley D, Yamamoto T, Hirose K, Keele L, Imai K. (2014) mediation: R Package for Causal Mediation Analysis. J Stat Softw, 59 (5) 1-38. doi:10.18637/jss.v059.i05
ABSTRACT
In this paper, we describe the R package mediation for conducting causal mediation analysis in applied empirical research. In many scientific disciplines, the goal of researchers is not only estimating causal effects of a treatment but also understanding the process in which the treatment causally affects the outcome. Causal mediation analysis is frequently used to assess potential causal mechanisms. The mediation package implements a comprehensive suite of statistical tools for conducting such an analysis. The package is organized into two distinct approaches. Using the model-based approach, researchers can estimate causal mediation effects and conduct sensitivity analysis under the standard research design. Furthermore, the design-based approach provides several analysis tools that are applicable under different experimental designs. This approach requires weaker assumptions than the model-based approach. We also implement a statistical method for dealing with multiple (causally dependent) mediators, which are often encountered in practice. Finally, the package also offers a methodology for assessing causal mediation in the presence of treatment noncompliance, a common problem in randomized trials.
DOI
10.18637/jss.v059.i05