A mega-analysis of genome-wide association studies for major depressive disorder.

Details

Serval ID
serval:BIB_11F1C7D9AA75
Type
Article: article from journal or magazin.
Collection
Publications
Institution
Title
A mega-analysis of genome-wide association studies for major depressive disorder.
Journal
Molecular Psychiatry
Author(s)
Ripke S., Ripke S., Wray N.R., Lewis C.M., Hamilton S.P., Weissman M.M., Breen G., Byrne E.M., Blackwood D.H., Boomsma D.I., Cichon S., Heath A.C., Holsboer F., Lucae S., Madden P.A., Martin N.G., McGuffin P., Muglia P., Noethen M.M., Penninx B.P., Pergadia M.L., Potash J.B., Rietschel M., Lin D., Müller-Myhsok B., Shi J., Steinberg S., Grabe H.J., Lichtenstein P., Magnusson P., Perlis R.H., Preisig M., Smoller J.W., Stefansson K., Uher R., Kutalik Z., Tansey K.E., Teumer A., Viktorin A., Barnes M.R., Bettecken T., Binder E.B., Breuer R., Castro V.M., Churchill S.E., Coryell W.H., Craddock N., Craig I.W., Czamara D., De Geus E.J., Degenhardt F., Farmer A.E., Fava M., Frank J., Gainer V.S., Gallagher P.J., Gordon S.D., Goryachev S., Gross M., Guipponi M., Henders A.K., Herms S., Hickie I.B., Hoefels S., Hoogendijk W., Hottenga J.J., Iosifescu D.V., Ising M., Jones I., Jones L., Jung-Ying T., Knowles J.A., Kohane I.S., Kohli M.A., Korszun A., Landen M., Lawson W.B., Lewis G., Macintyre D., Maier W., Mattheisen M., McGrath P.J., McIntosh A., McLean A., Middeldorp C.M., Middleton L., Montgomery G.M., Murphy S.N., Nauck M., Nolen W.A., Nyholt D.R., O'Donovan M., Oskarsson H., Pedersen N., Scheftner W.A., Schulz A., Schulze T.G., Shyn S.I., Sigurdsson E., Slager S.L., Smit J.H., Stefansson H., Steffens M., Thorgeirsson T., Tozzi F., Treutlein J., Uhr M., van den Oord E.J., Van Grootheest G., Völzke H., Weilburg J.B., Willemsen G., Zitman F.G., Neale B., Daly M., Levinson D.F., Sullivan P.F.
Working group(s)
Major Depressive Disorder Working Group of the Psychiatric GWAS Consortium
ISSN
1476-5578 (Electronic)
ISSN-L
1359-4184
Publication state
Published
Issued date
2013
Peer-reviewed
Oui
Volume
18
Number
4
Pages
497-511
Language
english
Notes
Publication types: Journal ArticlePublication Status: ppublish
Abstract
Prior genome-wide association studies (GWAS) of major depressive disorder (MDD) have met with limited success. We sought to increase statistical power to detect disease loci by conducting a GWAS mega-analysis for MDD. In the MDD discovery phase, we analyzed more than 1.2 million autosomal and X chromosome single-nucleotide polymorphisms (SNPs) in 18 759 independent and unrelated subjects of recent European ancestry (9240 MDD cases and 9519 controls). In the MDD replication phase, we evaluated 554 SNPs in independent samples (6783 MDD cases and 50 695 controls). We also conducted a cross-disorder meta-analysis using 819 autosomal SNPs with P<0.0001 for either MDD or the Psychiatric GWAS Consortium bipolar disorder (BIP) mega-analysis (9238 MDD cases/8039 controls and 6998 BIP cases/7775 controls). No SNPs achieved genome-wide significance in the MDD discovery phase, the MDD replication phase or in pre-planned secondary analyses (by sex, recurrent MDD, recurrent early-onset MDD, age of onset, pre-pubertal onset MDD or typical-like MDD from a latent class analyses of the MDD criteria). In the MDD-bipolar cross-disorder analysis, 15 SNPs exceeded genome-wide significance (P<5 × 10(-8)), and all were in a 248 kb interval of high LD on 3p21.1 (chr3:52 425 083-53 822 102, minimum P=5.9 × 10(-9) at rs2535629). Although this is the largest genome-wide analysis of MDD yet conducted, its high prevalence means that the sample is still underpowered to detect genetic effects typical for complex traits. Therefore, we were unable to identify robust and replicable findings. We discuss what this means for genetic research for MDD. The 3p21.1 MDD-BIP finding should be interpreted with caution as the most significant SNP did not replicate in MDD samples, and genotyping in independent samples will be needed to resolve its status.
Pubmed
Open Access
Yes
Create date
26/03/2013 12:25
Last modification date
20/08/2019 13:39
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