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Meta‐analysis of non‐linear exposure‐outcome relationships using individual participant data: A comparison of two methods

Non‐linear exposure‐outcome relationships such as between body mass index (BMI) and mortality are common. They are best explored as continuous functions using individual participant data from multiple studies. We explore two two‐stage methods for meta‐analysis of such relationships, where the confou...

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Autores principales: White, Ian R., Kaptoge, Stephen, Royston, Patrick, Sauerbrei, Willi
Formato: Online Artículo Texto
Lenguaje:English
Publicado: John Wiley and Sons Inc. 2018
Materias:
Acceso en línea:https://www.ncbi.nlm.nih.gov/pmc/articles/PMC6492097/
https://www.ncbi.nlm.nih.gov/pubmed/30284314
http://dx.doi.org/10.1002/sim.7974
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author White, Ian R.
Kaptoge, Stephen
Royston, Patrick
Sauerbrei, Willi
author_facet White, Ian R.
Kaptoge, Stephen
Royston, Patrick
Sauerbrei, Willi
author_sort White, Ian R.
collection PubMed
description Non‐linear exposure‐outcome relationships such as between body mass index (BMI) and mortality are common. They are best explored as continuous functions using individual participant data from multiple studies. We explore two two‐stage methods for meta‐analysis of such relationships, where the confounder‐adjusted relationship is first estimated in a non‐linear regression model in each study, then combined across studies. The “metacurve” approach combines the estimated curves using multiple meta‐analyses of the relative effect between a given exposure level and a reference level. The “mvmeta” approach combines the estimated model parameters in a single multivariate meta‐analysis. Both methods allow the exposure‐outcome relationship to differ across studies. Using theoretical arguments, we show that the methods differ most when covariate distributions differ across studies; using simulated data, we show that mvmeta gains precision but metacurve is more robust to model mis‐specification. We then compare the two methods using data from the Emerging Risk Factors Collaboration on BMI, coronary heart disease events, and all‐cause mortality (>80 cohorts, >18 000 events). For each outcome, we model BMI using fractional polynomials of degree 2 in each study, with adjustment for confounders. For metacurve, the powers defining the fractional polynomials may be study‐specific or common across studies. For coronary heart disease, metacurve with common powers and mvmeta correctly identify a small increase in risk in the lowest levels of BMI, but metacurve with study‐specific powers does not. For all‐cause mortality, all methods identify a steep U‐shape. The metacurve and mvmeta methods perform well in combining complex exposure‐disease relationships across studies.
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spelling pubmed-64920972019-05-06 Meta‐analysis of non‐linear exposure‐outcome relationships using individual participant data: A comparison of two methods White, Ian R. Kaptoge, Stephen Royston, Patrick Sauerbrei, Willi Stat Med Research Articles Non‐linear exposure‐outcome relationships such as between body mass index (BMI) and mortality are common. They are best explored as continuous functions using individual participant data from multiple studies. We explore two two‐stage methods for meta‐analysis of such relationships, where the confounder‐adjusted relationship is first estimated in a non‐linear regression model in each study, then combined across studies. The “metacurve” approach combines the estimated curves using multiple meta‐analyses of the relative effect between a given exposure level and a reference level. The “mvmeta” approach combines the estimated model parameters in a single multivariate meta‐analysis. Both methods allow the exposure‐outcome relationship to differ across studies. Using theoretical arguments, we show that the methods differ most when covariate distributions differ across studies; using simulated data, we show that mvmeta gains precision but metacurve is more robust to model mis‐specification. We then compare the two methods using data from the Emerging Risk Factors Collaboration on BMI, coronary heart disease events, and all‐cause mortality (>80 cohorts, >18 000 events). For each outcome, we model BMI using fractional polynomials of degree 2 in each study, with adjustment for confounders. For metacurve, the powers defining the fractional polynomials may be study‐specific or common across studies. For coronary heart disease, metacurve with common powers and mvmeta correctly identify a small increase in risk in the lowest levels of BMI, but metacurve with study‐specific powers does not. For all‐cause mortality, all methods identify a steep U‐shape. The metacurve and mvmeta methods perform well in combining complex exposure‐disease relationships across studies. John Wiley and Sons Inc. 2018-10-03 2019-02-10 /pmc/articles/PMC6492097/ /pubmed/30284314 http://dx.doi.org/10.1002/sim.7974 Text en © 2018 The Authors. Statistics in Medicine Published by John Wiley & Sons Ltd. This is an open access article under the terms of the http://creativecommons.org/licenses/by/4.0/ License, which permits use, distribution and reproduction in any medium, provided the original work is properly cited.
spellingShingle Research Articles
White, Ian R.
Kaptoge, Stephen
Royston, Patrick
Sauerbrei, Willi
Meta‐analysis of non‐linear exposure‐outcome relationships using individual participant data: A comparison of two methods
title Meta‐analysis of non‐linear exposure‐outcome relationships using individual participant data: A comparison of two methods
title_full Meta‐analysis of non‐linear exposure‐outcome relationships using individual participant data: A comparison of two methods
title_fullStr Meta‐analysis of non‐linear exposure‐outcome relationships using individual participant data: A comparison of two methods
title_full_unstemmed Meta‐analysis of non‐linear exposure‐outcome relationships using individual participant data: A comparison of two methods
title_short Meta‐analysis of non‐linear exposure‐outcome relationships using individual participant data: A comparison of two methods
title_sort meta‐analysis of non‐linear exposure‐outcome relationships using individual participant data: a comparison of two methods
topic Research Articles
url https://www.ncbi.nlm.nih.gov/pmc/articles/PMC6492097/
https://www.ncbi.nlm.nih.gov/pubmed/30284314
http://dx.doi.org/10.1002/sim.7974
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