Department of Statistics, University of Oxford, Oxford, UK.
Department of Epidemiology, Harvard T. H. Chan School of Public Health, Boston, MA, USA.
Nat Genet. 2018 Sep;50(9):1311-1317. doi: 10.1038/s41588-018-0177-x. Epub 2018 Aug 13.
Interest in reconstructing demographic histories has motivated the development of methods to estimate locus-specific pairwise coalescence times from whole-genome sequencing data. Here we introduce a powerful new method, ASMC, that can estimate coalescence times using only SNP array data, and is orders of magnitude faster than previous approaches. We applied ASMC to detect recent positive selection in 113,851 phased British samples from the UK Biobank, and detected 12 genome-wide significant signals, including 6 novel loci. We also applied ASMC to sequencing data from 498 Dutch individuals to detect background selection at deeper time scales. We detected strong heritability enrichment in regions of high background selection in an analysis of 20 independent diseases and complex traits using stratified linkage disequilibrium score regression, conditioned on a broad set of functional annotations (including other background selection annotations). These results underscore the widespread effects of background selection on the genetic architecture of complex traits.
人们对重建人口历史的兴趣促使开发了从全基因组测序数据估计基因座特异性对合并时间的方法。在这里,我们介绍了一种强大的新方法 ASMC,它仅使用 SNP 数组数据即可估计合并时间,并且比以前的方法快几个数量级。我们应用 ASMC 来检测来自英国生物库的 113,851 个已分相的英国样本中的近期正选择,并检测到 12 个全基因组显著信号,包括 6 个新基因座。我们还将 ASMC 应用于来自 498 名荷兰个体的测序数据,以在更深入的时间尺度上检测背景选择。在使用分层连锁不平衡评分回归对 20 个独立疾病和复杂特征进行的分析中,我们在考虑了广泛的功能注释(包括其他背景选择注释)的条件下,在高背景选择区域检测到强烈的遗传力富集。这些结果强调了背景选择对复杂特征遗传结构的广泛影响。