We developed a new statistical framework to find genetic variants associated with extreme longevity. The method, informed GWAS (iGWAS), takes advantage of knowledge from large studies of age-related disease in order to narrow the search for SNPs associated with longevity. To gain support for our approach, we first show there is an overlap between loci involved in disease and loci associated with extreme longevity. These results indicate that several disease variants may be depleted in centenarians versus the general population. Next, we used iGWAS to harness information from 14 meta-analyses of disease and trait GWAS to identify longevity loci in two studies of long-lived humans. In a standard GWAS analysis, only one locus in these studies is significant (APOE/TOMM40) when controlling the false discovery rate (FDR) at 10%. With iGWAS, we identify eight genetic loci to associate significantly with exceptional human longevity at FDR < 10%. We followed up the eight lead SNPs in independent cohorts, and found replication evidence of four loci and suggestive evidence for one more with exceptional longevity. The loci that replicated (FDR < 5%) included APOE/TOMM40 (associated with Alzheimer's disease), CDKN2B/ANRIL (implicated in the regulation of cellular senescence), ABO (tags the O blood group), and SH2B3/ATXN2 (a signaling gene that extends lifespan in Drosophila and a gene involved in neurological disease). Our results implicate new loci in longevity and reveal a genetic overlap between longevity and age-related diseases and traits, including coronary artery disease and Alzheimer's disease. iGWAS provides a new analytical strategy for uncovering SNPs that influence extreme longevity, and can be applied more broadly to boost power in other studies of complex phenotypes.
Fortney, K., Dobriban, E., Garagnani, P., Pirazzini, C., Monti, D., Mari, D., et al. (2015). Genome-Wide Scan Informed by Age-Related Disease Identifies Loci for Exceptional Human Longevity. PLOS GENETICS, 11(12), 1-23 [10.1371/journal.pgen.1005728].
Genome-Wide Scan Informed by Age-Related Disease Identifies Loci for Exceptional Human Longevity
GARAGNANI, PAOLO;PIRAZZINI, CHIARA;MONTI, DANIELA;MARI, DANIELA;FRANCESCHI, CLAUDIO;
2015
Abstract
We developed a new statistical framework to find genetic variants associated with extreme longevity. The method, informed GWAS (iGWAS), takes advantage of knowledge from large studies of age-related disease in order to narrow the search for SNPs associated with longevity. To gain support for our approach, we first show there is an overlap between loci involved in disease and loci associated with extreme longevity. These results indicate that several disease variants may be depleted in centenarians versus the general population. Next, we used iGWAS to harness information from 14 meta-analyses of disease and trait GWAS to identify longevity loci in two studies of long-lived humans. In a standard GWAS analysis, only one locus in these studies is significant (APOE/TOMM40) when controlling the false discovery rate (FDR) at 10%. With iGWAS, we identify eight genetic loci to associate significantly with exceptional human longevity at FDR < 10%. We followed up the eight lead SNPs in independent cohorts, and found replication evidence of four loci and suggestive evidence for one more with exceptional longevity. The loci that replicated (FDR < 5%) included APOE/TOMM40 (associated with Alzheimer's disease), CDKN2B/ANRIL (implicated in the regulation of cellular senescence), ABO (tags the O blood group), and SH2B3/ATXN2 (a signaling gene that extends lifespan in Drosophila and a gene involved in neurological disease). Our results implicate new loci in longevity and reveal a genetic overlap between longevity and age-related diseases and traits, including coronary artery disease and Alzheimer's disease. iGWAS provides a new analytical strategy for uncovering SNPs that influence extreme longevity, and can be applied more broadly to boost power in other studies of complex phenotypes.File | Dimensione | Formato | |
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journal.pgen.1005728.PDF
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pgen.1005728.s001.docx
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Descrizione: S1 Text: Deriving optimal P value weights. Methods used to derive the P value weighting scheme used in iGWAS.
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pgen.1005728.s002.pdf
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Descrizione: S1 Fig: GWAS that show genetic overlap with exceptional longevity. As in Fig 1, the blue lines show the P values for longevity of the top 100, 250, and 500 SNPs from independent genetic loci, and the red lines show the background distribution of longevity P values. (*) P < 0.05, (**) P < 0.005.
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pgen.1005728.s003.pdf
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Descrizione: S3 Fig: Regional plots for longevity-associated SNPs identified by iGWAS (NECS). Green boxes indicate genes harboring missense SNPs in LD with candidate longevity SNPs, and magenta boxes genes for which a candidate longevity SNP is an eQTL.
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pgen.1005728.s004.pdf
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Descrizione: S3 Fig: Regional plots for longevity-associated SNPs identified by iGWAS (NECS). Green boxes indicate genes harboring missense SNPs in LD with candidate longevity SNPs, and magenta boxes genes for which a candidate longevity SNP is an eQTL.
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pgen.1005728.s005.pdf
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Descrizione: S1 Table: Nine diseases show genetic overlap with longevity. For each of the 9 disease datasets showing a genetic overlap with longevity, we provide hypergeometric P values and fold enrichment, and identities of disease SNPs that are nominally associated with longevity (from the top 100).
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pgen.1005728.s007.xlsx
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Descrizione: S2 Table: 98 SNPs representing 8 unique genetic loci are significant in a longevity GWAS weighted by disease. (XLSX)
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pgen.1005728.s008.xlsx
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Descrizione: S3 Table: eQTL results for all longevity SNPs, at a false discovery rate < 5%
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pgen.1005728.s009.xlsx
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Descrizione: Proxy SNPs used for replication, when data for lead SNP was missing. The best proxy SNP such that R2 > 0.8 and D’ = 1 was identified using data from two reference populations, 1000 Genomes and HapMap release 22 (Broad Institute SNAP tool[64]). (XLSX)
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pgen.1005728.s010.xlsx
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Descrizione: S5 Table: Imputation results for candidate longevity SNPs in NECS
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