Cargando…

Bayesian methods for instrumental variable analysis with genetic instruments (‘Mendelian randomization’): example with urate transporter SLC2A9 as an instrumental variable for effect of urate levels on metabolic syndrome

The ‘Mendelian randomization’ approach uses genotype as an instrumental variable to distinguish between causal and non-causal explanations of biomarker–disease associations. Classical methods for instrumental variable analysis are limited to linear or probit models without latent variables or missin...

Descripción completa

Detalles Bibliográficos
Autores principales: McKeigue, Paul M, Campbell, Harry, Wild, Sarah, Vitart, Veronique, Hayward, Caroline, Rudan, Igor, Wright, Alan F, Wilson, James F
Formato: Texto
Lenguaje:English
Publicado: Oxford University Press 2010
Materias:
Acceso en línea:https://www.ncbi.nlm.nih.gov/pmc/articles/PMC2878456/
https://www.ncbi.nlm.nih.gov/pubmed/20348110
http://dx.doi.org/10.1093/ije/dyp397
_version_ 1782181873980538880
author McKeigue, Paul M
Campbell, Harry
Wild, Sarah
Vitart, Veronique
Hayward, Caroline
Rudan, Igor
Wright, Alan F
Wilson, James F
author_facet McKeigue, Paul M
Campbell, Harry
Wild, Sarah
Vitart, Veronique
Hayward, Caroline
Rudan, Igor
Wright, Alan F
Wilson, James F
author_sort McKeigue, Paul M
collection PubMed
description The ‘Mendelian randomization’ approach uses genotype as an instrumental variable to distinguish between causal and non-causal explanations of biomarker–disease associations. Classical methods for instrumental variable analysis are limited to linear or probit models without latent variables or missing data, rely on asymptotic approximations that are not valid for weak instruments and focus on estimation rather than hypothesis testing. We describe a Bayesian approach that overcomes these limitations, using the JAGS program to compute the log-likelihood ratio (lod score) between causal and non-causal explanations of a biomarker–disease association. To demonstrate the approach, we examined the relationship of plasma urate levels to metabolic syndrome in the ORCADES study of a Scottish population isolate, using genotype at six single-nucleotide polymorphisms in the urate transporter gene SLC2A9 as an instrumental variable. In models that allow for intra-individual variability in urate levels, the lod score favouring a non-causal over a causal explanation was 2.34. In models that do not allow for intra-individual variability, the weight of evidence against a causal explanation was weaker (lod score 1.38). We demonstrate the ability to test one of the key assumptions of instrumental variable analysis—that the effects of the instrument on outcome are mediated only through the intermediate variable—by constructing a test for residual effects of genotype on outcome, similar to the tests of ‘overidentifying restrictions’ developed for classical instrumental variable analysis. The Bayesian approach described here is flexible enough to deal with any instrumental variable problem, and does not rely on asymptotic approximations that may not be valid for weak instruments. The approach can easily be extended to combine information from different study designs. Statistical power calculations show that instrumental variable analysis with genetic instruments will typically require combining information from moderately large cohort and cross-sectional studies of biomarkers with information from very large genetic case–control studies.
format Text
id pubmed-2878456
institution National Center for Biotechnology Information
language English
publishDate 2010
publisher Oxford University Press
record_format MEDLINE/PubMed
spelling pubmed-28784562010-06-01 Bayesian methods for instrumental variable analysis with genetic instruments (‘Mendelian randomization’): example with urate transporter SLC2A9 as an instrumental variable for effect of urate levels on metabolic syndrome McKeigue, Paul M Campbell, Harry Wild, Sarah Vitart, Veronique Hayward, Caroline Rudan, Igor Wright, Alan F Wilson, James F Int J Epidemiol Methods The ‘Mendelian randomization’ approach uses genotype as an instrumental variable to distinguish between causal and non-causal explanations of biomarker–disease associations. Classical methods for instrumental variable analysis are limited to linear or probit models without latent variables or missing data, rely on asymptotic approximations that are not valid for weak instruments and focus on estimation rather than hypothesis testing. We describe a Bayesian approach that overcomes these limitations, using the JAGS program to compute the log-likelihood ratio (lod score) between causal and non-causal explanations of a biomarker–disease association. To demonstrate the approach, we examined the relationship of plasma urate levels to metabolic syndrome in the ORCADES study of a Scottish population isolate, using genotype at six single-nucleotide polymorphisms in the urate transporter gene SLC2A9 as an instrumental variable. In models that allow for intra-individual variability in urate levels, the lod score favouring a non-causal over a causal explanation was 2.34. In models that do not allow for intra-individual variability, the weight of evidence against a causal explanation was weaker (lod score 1.38). We demonstrate the ability to test one of the key assumptions of instrumental variable analysis—that the effects of the instrument on outcome are mediated only through the intermediate variable—by constructing a test for residual effects of genotype on outcome, similar to the tests of ‘overidentifying restrictions’ developed for classical instrumental variable analysis. The Bayesian approach described here is flexible enough to deal with any instrumental variable problem, and does not rely on asymptotic approximations that may not be valid for weak instruments. The approach can easily be extended to combine information from different study designs. Statistical power calculations show that instrumental variable analysis with genetic instruments will typically require combining information from moderately large cohort and cross-sectional studies of biomarkers with information from very large genetic case–control studies. Oxford University Press 2010-06 2010-03-25 /pmc/articles/PMC2878456/ /pubmed/20348110 http://dx.doi.org/10.1093/ije/dyp397 Text en Published by Oxford University Press on behalf of the International Epidemiological Association. © The Author 2010; all rights reserved. http://creativecommons.org/licenses/by-nc/2.5/uk/ This is an Open Access article distributed under the terms of the Creative Commons Attribution Non-Commercial License (http://creativecommons.org/licenses/by-nc/2.5/) which permits unrestricted non-commercial use, distribution, and reproduction in any medium, provided the original work is properly cited.
spellingShingle Methods
McKeigue, Paul M
Campbell, Harry
Wild, Sarah
Vitart, Veronique
Hayward, Caroline
Rudan, Igor
Wright, Alan F
Wilson, James F
Bayesian methods for instrumental variable analysis with genetic instruments (‘Mendelian randomization’): example with urate transporter SLC2A9 as an instrumental variable for effect of urate levels on metabolic syndrome
title Bayesian methods for instrumental variable analysis with genetic instruments (‘Mendelian randomization’): example with urate transporter SLC2A9 as an instrumental variable for effect of urate levels on metabolic syndrome
title_full Bayesian methods for instrumental variable analysis with genetic instruments (‘Mendelian randomization’): example with urate transporter SLC2A9 as an instrumental variable for effect of urate levels on metabolic syndrome
title_fullStr Bayesian methods for instrumental variable analysis with genetic instruments (‘Mendelian randomization’): example with urate transporter SLC2A9 as an instrumental variable for effect of urate levels on metabolic syndrome
title_full_unstemmed Bayesian methods for instrumental variable analysis with genetic instruments (‘Mendelian randomization’): example with urate transporter SLC2A9 as an instrumental variable for effect of urate levels on metabolic syndrome
title_short Bayesian methods for instrumental variable analysis with genetic instruments (‘Mendelian randomization’): example with urate transporter SLC2A9 as an instrumental variable for effect of urate levels on metabolic syndrome
title_sort bayesian methods for instrumental variable analysis with genetic instruments (‘mendelian randomization’): example with urate transporter slc2a9 as an instrumental variable for effect of urate levels on metabolic syndrome
topic Methods
url https://www.ncbi.nlm.nih.gov/pmc/articles/PMC2878456/
https://www.ncbi.nlm.nih.gov/pubmed/20348110
http://dx.doi.org/10.1093/ije/dyp397
work_keys_str_mv AT mckeiguepaulm bayesianmethodsforinstrumentalvariableanalysiswithgeneticinstrumentsmendelianrandomizationexamplewithuratetransporterslc2a9asaninstrumentalvariableforeffectofuratelevelsonmetabolicsyndrome
AT campbellharry bayesianmethodsforinstrumentalvariableanalysiswithgeneticinstrumentsmendelianrandomizationexamplewithuratetransporterslc2a9asaninstrumentalvariableforeffectofuratelevelsonmetabolicsyndrome
AT wildsarah bayesianmethodsforinstrumentalvariableanalysiswithgeneticinstrumentsmendelianrandomizationexamplewithuratetransporterslc2a9asaninstrumentalvariableforeffectofuratelevelsonmetabolicsyndrome
AT vitartveronique bayesianmethodsforinstrumentalvariableanalysiswithgeneticinstrumentsmendelianrandomizationexamplewithuratetransporterslc2a9asaninstrumentalvariableforeffectofuratelevelsonmetabolicsyndrome
AT haywardcaroline bayesianmethodsforinstrumentalvariableanalysiswithgeneticinstrumentsmendelianrandomizationexamplewithuratetransporterslc2a9asaninstrumentalvariableforeffectofuratelevelsonmetabolicsyndrome
AT rudanigor bayesianmethodsforinstrumentalvariableanalysiswithgeneticinstrumentsmendelianrandomizationexamplewithuratetransporterslc2a9asaninstrumentalvariableforeffectofuratelevelsonmetabolicsyndrome
AT wrightalanf bayesianmethodsforinstrumentalvariableanalysiswithgeneticinstrumentsmendelianrandomizationexamplewithuratetransporterslc2a9asaninstrumentalvariableforeffectofuratelevelsonmetabolicsyndrome
AT wilsonjamesf bayesianmethodsforinstrumentalvariableanalysiswithgeneticinstrumentsmendelianrandomizationexamplewithuratetransporterslc2a9asaninstrumentalvariableforeffectofuratelevelsonmetabolicsyndrome