Montana Giovanni, Pritchard Jonathan K
Department of Human Genetics, University of Chicago, Chicago, IL 60637, USA.
Am J Hum Genet. 2004 Nov;75(5):771-89. doi: 10.1086/425281. Epub 2004 Sep 22.
Admixture mapping is a promising new tool for discovering genes that contribute to complex traits. This mapping approach uses samples from recently admixed populations to detect susceptibility loci at which the risk alleles have different frequencies in the original contributing populations. Although the idea for admixture mapping has been around for more than a decade, the genomic tools are only now becoming available to make this a feasible and attractive option for complex-trait mapping. In this article, we describe new statistical methods for analyzing multipoint data from admixture-mapping studies to detect "ancestry association." The new test statistics do not assume a particular disease model; instead, they are based simply on the extent to which the sample's ancestry proportions at a locus deviate from the genome average. Our power calculations show that, for loci at which the underlying risk-allele frequencies are substantially different in the ancestral populations, the power of admixture mapping can be comparable to that of association mapping but with a far smaller number of markers. We also show that, although "ancestry informative markers" (AIMs) are superior to random single-nucleotide polymorphisms (SNPs), random SNPs can perform quite well when AIMs are not available. Hence, researchers who study admixed populations in which AIMs are not available can perform admixture mapping with the use of modestly higher densities of random markers. Software to perform the gene-mapping calculations, "MALDsoft," is freely available on the Pritchard Lab Web site.
混合映射是一种用于发现导致复杂性状的基因的有前景的新工具。这种映射方法使用来自近期混合群体的样本,以检测易感性位点,在这些位点上,风险等位基因在原始贡献群体中的频率不同。尽管混合映射的想法已经存在了十多年,但基因组工具直到现在才变得可用,从而使其成为复杂性状映射的一种可行且有吸引力的选择。在本文中,我们描述了用于分析混合映射研究中的多点数据以检测“祖先关联”的新统计方法。新的检验统计量不假定特定的疾病模型;相反,它们仅仅基于一个位点处样本的祖先比例偏离基因组平均值的程度。我们的功效计算表明,对于潜在风险等位基因频率在祖先群体中存在显著差异的位点,混合映射的功效可以与关联映射相媲美,但所需的标记数量要少得多。我们还表明,尽管“祖先信息标记”(AIMs)优于随机单核苷酸多态性(SNPs),但在没有AIMs时,随机SNP也能表现得相当好。因此,在没有AIMs的混合群体中进行研究的研究人员可以使用适度更高密度的随机标记来进行混合映射。用于执行基因映射计算的软件“MALDsoft”可在普里查德实验室网站上免费获取。