| Literature DB >> 22610117 |
Bogdan Pasaniuc1, Nadin Rohland, Paul J McLaren, Kiran Garimella, Noah Zaitlen, Heng Li, Namrata Gupta, Benjamin M Neale, Mark J Daly, Pamela Sklar, Patrick F Sullivan, Sarah Bergen, Jennifer L Moran, Christina M Hultman, Paul Lichtenstein, Patrik Magnusson, Shaun M Purcell, David W Haas, Liming Liang, Shamil Sunyaev, Nick Patterson, Paul I W de Bakker, David Reich, Alkes L Price.
Abstract
Genome-wide association studies (GWAS) have proven to be a powerful method to identify common genetic variants contributing to susceptibility to common diseases. Here, we show that extremely low-coverage sequencing (0.1-0.5×) captures almost as much of the common (>5%) and low-frequency (1-5%) variation across the genome as SNP arrays. As an empirical demonstration, we show that genome-wide SNP genotypes can be inferred at a mean r(2) of 0.71 using off-target data (0.24× average coverage) in a whole-exome study of 909 samples. Using both simulated and real exome-sequencing data sets, we show that association statistics obtained using extremely low-coverage sequencing data attain similar P values at known associated variants as data from genotyping arrays, without an excess of false positives. Within the context of reductions in sample preparation and sequencing costs, funds invested in extremely low-coverage sequencing can yield several times the effective sample size of GWAS based on SNP array data and a commensurate increase in statistical power.Entities:
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Year: 2012 PMID: 22610117 PMCID: PMC3400344 DOI: 10.1038/ng.2283
Source DB: PubMed Journal: Nat Genet ISSN: 1061-4036 Impact factor: 38.330