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Analysis of Rare, Exonic Variation amongst Subjects with Autism Spectrum Disorders and Population Controls

We report on results from whole-exome sequencing (WES) of 1,039 subjects diagnosed with autism spectrum disorders (ASD) and 870 controls selected from the NIMH repository to be of similar ancestry to cases. The WES data came from two centers using different methods to produce sequence and to call va...

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Autores principales: Liu, Li, Sabo, Aniko, Neale, Benjamin M., Nagaswamy, Uma, Stevens, Christine, Lim, Elaine, Bodea, Corneliu A., Muzny, Donna, Reid, Jeffrey G., Banks, Eric, Coon, Hillary, DePristo, Mark, Dinh, Huyen, Fennel, Tim, Flannick, Jason, Gabriel, Stacey, Garimella, Kiran, Gross, Shannon, Hawes, Alicia, Lewis, Lora, Makarov, Vladimir, Maguire, Jared, Newsham, Irene, Poplin, Ryan, Ripke, Stephan, Shakir, Khalid, Samocha, Kaitlin E., Wu, Yuanqing, Boerwinkle, Eric, Buxbaum, Joseph D., Cook, Edwin H., Devlin, Bernie, Schellenberg, Gerard D., Sutcliffe, James S., Daly, Mark J., Gibbs, Richard A., Roeder, Kathryn
Formato: Online Artículo Texto
Lenguaje:English
Publicado: Public Library of Science 2013
Materias:
Acceso en línea:https://www.ncbi.nlm.nih.gov/pmc/articles/PMC3623759/
https://www.ncbi.nlm.nih.gov/pubmed/23593035
http://dx.doi.org/10.1371/journal.pgen.1003443
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author Liu, Li
Sabo, Aniko
Neale, Benjamin M.
Nagaswamy, Uma
Stevens, Christine
Lim, Elaine
Bodea, Corneliu A.
Muzny, Donna
Reid, Jeffrey G.
Banks, Eric
Coon, Hillary
DePristo, Mark
Dinh, Huyen
Fennel, Tim
Flannick, Jason
Gabriel, Stacey
Garimella, Kiran
Gross, Shannon
Hawes, Alicia
Lewis, Lora
Makarov, Vladimir
Maguire, Jared
Newsham, Irene
Poplin, Ryan
Ripke, Stephan
Shakir, Khalid
Samocha, Kaitlin E.
Wu, Yuanqing
Boerwinkle, Eric
Buxbaum, Joseph D.
Cook, Edwin H.
Devlin, Bernie
Schellenberg, Gerard D.
Sutcliffe, James S.
Daly, Mark J.
Gibbs, Richard A.
Roeder, Kathryn
author_facet Liu, Li
Sabo, Aniko
Neale, Benjamin M.
Nagaswamy, Uma
Stevens, Christine
Lim, Elaine
Bodea, Corneliu A.
Muzny, Donna
Reid, Jeffrey G.
Banks, Eric
Coon, Hillary
DePristo, Mark
Dinh, Huyen
Fennel, Tim
Flannick, Jason
Gabriel, Stacey
Garimella, Kiran
Gross, Shannon
Hawes, Alicia
Lewis, Lora
Makarov, Vladimir
Maguire, Jared
Newsham, Irene
Poplin, Ryan
Ripke, Stephan
Shakir, Khalid
Samocha, Kaitlin E.
Wu, Yuanqing
Boerwinkle, Eric
Buxbaum, Joseph D.
Cook, Edwin H.
Devlin, Bernie
Schellenberg, Gerard D.
Sutcliffe, James S.
Daly, Mark J.
Gibbs, Richard A.
Roeder, Kathryn
author_sort Liu, Li
collection PubMed
description We report on results from whole-exome sequencing (WES) of 1,039 subjects diagnosed with autism spectrum disorders (ASD) and 870 controls selected from the NIMH repository to be of similar ancestry to cases. The WES data came from two centers using different methods to produce sequence and to call variants from it. Therefore, an initial goal was to ensure the distribution of rare variation was similar for data from different centers. This proved straightforward by filtering called variants by fraction of missing data, read depth, and balance of alternative to reference reads. Results were evaluated using seven samples sequenced at both centers and by results from the association study. Next we addressed how the data and/or results from the centers should be combined. Gene-based analyses of association was an obvious choice, but should statistics for association be combined across centers (meta-analysis) or should data be combined and then analyzed (mega-analysis)? Because of the nature of many gene-based tests, we showed by theory and simulations that mega-analysis has better power than meta-analysis. Finally, before analyzing the data for association, we explored the impact of population structure on rare variant analysis in these data. Like other recent studies, we found evidence that population structure can confound case-control studies by the clustering of rare variants in ancestry space; yet, unlike some recent studies, for these data we found that principal component-based analyses were sufficient to control for ancestry and produce test statistics with appropriate distributions. After using a variety of gene-based tests and both meta- and mega-analysis, we found no new risk genes for ASD in this sample. Our results suggest that standard gene-based tests will require much larger samples of cases and controls before being effective for gene discovery, even for a disorder like ASD.
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spelling pubmed-36237592013-04-16 Analysis of Rare, Exonic Variation amongst Subjects with Autism Spectrum Disorders and Population Controls Liu, Li Sabo, Aniko Neale, Benjamin M. Nagaswamy, Uma Stevens, Christine Lim, Elaine Bodea, Corneliu A. Muzny, Donna Reid, Jeffrey G. Banks, Eric Coon, Hillary DePristo, Mark Dinh, Huyen Fennel, Tim Flannick, Jason Gabriel, Stacey Garimella, Kiran Gross, Shannon Hawes, Alicia Lewis, Lora Makarov, Vladimir Maguire, Jared Newsham, Irene Poplin, Ryan Ripke, Stephan Shakir, Khalid Samocha, Kaitlin E. Wu, Yuanqing Boerwinkle, Eric Buxbaum, Joseph D. Cook, Edwin H. Devlin, Bernie Schellenberg, Gerard D. Sutcliffe, James S. Daly, Mark J. Gibbs, Richard A. Roeder, Kathryn PLoS Genet Research Article We report on results from whole-exome sequencing (WES) of 1,039 subjects diagnosed with autism spectrum disorders (ASD) and 870 controls selected from the NIMH repository to be of similar ancestry to cases. The WES data came from two centers using different methods to produce sequence and to call variants from it. Therefore, an initial goal was to ensure the distribution of rare variation was similar for data from different centers. This proved straightforward by filtering called variants by fraction of missing data, read depth, and balance of alternative to reference reads. Results were evaluated using seven samples sequenced at both centers and by results from the association study. Next we addressed how the data and/or results from the centers should be combined. Gene-based analyses of association was an obvious choice, but should statistics for association be combined across centers (meta-analysis) or should data be combined and then analyzed (mega-analysis)? Because of the nature of many gene-based tests, we showed by theory and simulations that mega-analysis has better power than meta-analysis. Finally, before analyzing the data for association, we explored the impact of population structure on rare variant analysis in these data. Like other recent studies, we found evidence that population structure can confound case-control studies by the clustering of rare variants in ancestry space; yet, unlike some recent studies, for these data we found that principal component-based analyses were sufficient to control for ancestry and produce test statistics with appropriate distributions. After using a variety of gene-based tests and both meta- and mega-analysis, we found no new risk genes for ASD in this sample. Our results suggest that standard gene-based tests will require much larger samples of cases and controls before being effective for gene discovery, even for a disorder like ASD. Public Library of Science 2013-04-11 /pmc/articles/PMC3623759/ /pubmed/23593035 http://dx.doi.org/10.1371/journal.pgen.1003443 Text en © 2013 Liu 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
Liu, Li
Sabo, Aniko
Neale, Benjamin M.
Nagaswamy, Uma
Stevens, Christine
Lim, Elaine
Bodea, Corneliu A.
Muzny, Donna
Reid, Jeffrey G.
Banks, Eric
Coon, Hillary
DePristo, Mark
Dinh, Huyen
Fennel, Tim
Flannick, Jason
Gabriel, Stacey
Garimella, Kiran
Gross, Shannon
Hawes, Alicia
Lewis, Lora
Makarov, Vladimir
Maguire, Jared
Newsham, Irene
Poplin, Ryan
Ripke, Stephan
Shakir, Khalid
Samocha, Kaitlin E.
Wu, Yuanqing
Boerwinkle, Eric
Buxbaum, Joseph D.
Cook, Edwin H.
Devlin, Bernie
Schellenberg, Gerard D.
Sutcliffe, James S.
Daly, Mark J.
Gibbs, Richard A.
Roeder, Kathryn
Analysis of Rare, Exonic Variation amongst Subjects with Autism Spectrum Disorders and Population Controls
title Analysis of Rare, Exonic Variation amongst Subjects with Autism Spectrum Disorders and Population Controls
title_full Analysis of Rare, Exonic Variation amongst Subjects with Autism Spectrum Disorders and Population Controls
title_fullStr Analysis of Rare, Exonic Variation amongst Subjects with Autism Spectrum Disorders and Population Controls
title_full_unstemmed Analysis of Rare, Exonic Variation amongst Subjects with Autism Spectrum Disorders and Population Controls
title_short Analysis of Rare, Exonic Variation amongst Subjects with Autism Spectrum Disorders and Population Controls
title_sort analysis of rare, exonic variation amongst subjects with autism spectrum disorders and population controls
topic Research Article
url https://www.ncbi.nlm.nih.gov/pmc/articles/PMC3623759/
https://www.ncbi.nlm.nih.gov/pubmed/23593035
http://dx.doi.org/10.1371/journal.pgen.1003443
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