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META-GSA: Combining Findings from Gene-Set Analyses across Several Genome-Wide Association Studies

INTRODUCTION: Gene-set analysis (GSA) methods are used as complementary approaches to genome-wide association studies (GWASs). The single marker association estimates of a predefined set of genes are either contrasted with those of all remaining genes or with a null non-associated background. To poo...

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Autores principales: Rosenberger, Albert, Friedrichs, Stefanie, Amos, Christopher I., Brennan, Paul, Fehringer, Gordon, Heinrich, Joachim, Hung, Rayjean J., Muley, Thomas, Müller-Nurasyid, Martina, Risch, Angela, Bickeböller, Heike
Formato: Online Artículo Texto
Lenguaje:English
Publicado: Public Library of Science 2015
Materias:
Acceso en línea:https://www.ncbi.nlm.nih.gov/pmc/articles/PMC4621033/
https://www.ncbi.nlm.nih.gov/pubmed/26501144
http://dx.doi.org/10.1371/journal.pone.0140179
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author Rosenberger, Albert
Friedrichs, Stefanie
Amos, Christopher I.
Brennan, Paul
Fehringer, Gordon
Heinrich, Joachim
Hung, Rayjean J.
Muley, Thomas
Müller-Nurasyid, Martina
Risch, Angela
Bickeböller, Heike
author_facet Rosenberger, Albert
Friedrichs, Stefanie
Amos, Christopher I.
Brennan, Paul
Fehringer, Gordon
Heinrich, Joachim
Hung, Rayjean J.
Muley, Thomas
Müller-Nurasyid, Martina
Risch, Angela
Bickeböller, Heike
author_sort Rosenberger, Albert
collection PubMed
description INTRODUCTION: Gene-set analysis (GSA) methods are used as complementary approaches to genome-wide association studies (GWASs). The single marker association estimates of a predefined set of genes are either contrasted with those of all remaining genes or with a null non-associated background. To pool the p-values from several GSAs, it is important to take into account the concordance of the observed patterns resulting from single marker association point estimates across any given gene set. Here we propose an enhanced version of Fisher’s inverse χ(2)-method META-GSA, however weighting each study to account for imperfect correlation between association patterns. SIMULATION AND POWER: We investigated the performance of META-GSA by simulating GWASs with 500 cases and 500 controls at 100 diallelic markers in 20 different scenarios, simulating different relative risks between 1 and 1.5 in gene sets of 10 genes. Wilcoxon’s rank sum test was applied as GSA for each study. We found that META-GSA has greater power to discover truly associated gene sets than simple pooling of the p-values, by e.g. 59% versus 37%, when the true relative risk for 5 of 10 genes was assume to be 1.5. Under the null hypothesis of no difference in the true association pattern between the gene set of interest and the set of remaining genes, the results of both approaches are almost uncorrelated. We recommend not relying on p-values alone when combining the results of independent GSAs. APPLICATION: We applied META-GSA to pool the results of four case-control GWASs of lung cancer risk (Central European Study and Toronto/Lunenfeld-Tanenbaum Research Institute Study; German Lung Cancer Study and MD Anderson Cancer Center Study), which had already been analyzed separately with four different GSA methods (EASE; SLAT, mSUMSTAT and GenGen). This application revealed the pathway GO0015291 “transmembrane transporter activity” as significantly enriched with associated genes (GSA-method: EASE, p = 0.0315 corrected for multiple testing). Similar results were found for GO0015464 “acetylcholine receptor activity” but only when not corrected for multiple testing (all GSA-methods applied; p≈0.02).
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spelling pubmed-46210332015-10-29 META-GSA: Combining Findings from Gene-Set Analyses across Several Genome-Wide Association Studies Rosenberger, Albert Friedrichs, Stefanie Amos, Christopher I. Brennan, Paul Fehringer, Gordon Heinrich, Joachim Hung, Rayjean J. Muley, Thomas Müller-Nurasyid, Martina Risch, Angela Bickeböller, Heike PLoS One Research Article INTRODUCTION: Gene-set analysis (GSA) methods are used as complementary approaches to genome-wide association studies (GWASs). The single marker association estimates of a predefined set of genes are either contrasted with those of all remaining genes or with a null non-associated background. To pool the p-values from several GSAs, it is important to take into account the concordance of the observed patterns resulting from single marker association point estimates across any given gene set. Here we propose an enhanced version of Fisher’s inverse χ(2)-method META-GSA, however weighting each study to account for imperfect correlation between association patterns. SIMULATION AND POWER: We investigated the performance of META-GSA by simulating GWASs with 500 cases and 500 controls at 100 diallelic markers in 20 different scenarios, simulating different relative risks between 1 and 1.5 in gene sets of 10 genes. Wilcoxon’s rank sum test was applied as GSA for each study. We found that META-GSA has greater power to discover truly associated gene sets than simple pooling of the p-values, by e.g. 59% versus 37%, when the true relative risk for 5 of 10 genes was assume to be 1.5. Under the null hypothesis of no difference in the true association pattern between the gene set of interest and the set of remaining genes, the results of both approaches are almost uncorrelated. We recommend not relying on p-values alone when combining the results of independent GSAs. APPLICATION: We applied META-GSA to pool the results of four case-control GWASs of lung cancer risk (Central European Study and Toronto/Lunenfeld-Tanenbaum Research Institute Study; German Lung Cancer Study and MD Anderson Cancer Center Study), which had already been analyzed separately with four different GSA methods (EASE; SLAT, mSUMSTAT and GenGen). This application revealed the pathway GO0015291 “transmembrane transporter activity” as significantly enriched with associated genes (GSA-method: EASE, p = 0.0315 corrected for multiple testing). Similar results were found for GO0015464 “acetylcholine receptor activity” but only when not corrected for multiple testing (all GSA-methods applied; p≈0.02). Public Library of Science 2015-10-26 /pmc/articles/PMC4621033/ /pubmed/26501144 http://dx.doi.org/10.1371/journal.pone.0140179 Text en © 2015 Rosenberger et al http://creativecommons.org/licenses/by/4.0/ This is an open-access article distributed under the terms of the Creative Commons Attribution License, which permits unrestricted use, distribution, and reproduction in any medium, provided the original author and source are properly credited.
spellingShingle Research Article
Rosenberger, Albert
Friedrichs, Stefanie
Amos, Christopher I.
Brennan, Paul
Fehringer, Gordon
Heinrich, Joachim
Hung, Rayjean J.
Muley, Thomas
Müller-Nurasyid, Martina
Risch, Angela
Bickeböller, Heike
META-GSA: Combining Findings from Gene-Set Analyses across Several Genome-Wide Association Studies
title META-GSA: Combining Findings from Gene-Set Analyses across Several Genome-Wide Association Studies
title_full META-GSA: Combining Findings from Gene-Set Analyses across Several Genome-Wide Association Studies
title_fullStr META-GSA: Combining Findings from Gene-Set Analyses across Several Genome-Wide Association Studies
title_full_unstemmed META-GSA: Combining Findings from Gene-Set Analyses across Several Genome-Wide Association Studies
title_short META-GSA: Combining Findings from Gene-Set Analyses across Several Genome-Wide Association Studies
title_sort meta-gsa: combining findings from gene-set analyses across several genome-wide association studies
topic Research Article
url https://www.ncbi.nlm.nih.gov/pmc/articles/PMC4621033/
https://www.ncbi.nlm.nih.gov/pubmed/26501144
http://dx.doi.org/10.1371/journal.pone.0140179
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