Although genome-wide association studies (GWAS) on complex traits have achieved great successes, the current leading GWAS approaches simply perform to test each genotype-phenotype association separately for each genetic variant. Curiously, the statistical properties for using these approaches is not known when a joint model for the whole genetic variants is considered. Here we advance in GWAS in understanding the statistical properties of the "population structure correction" (PSC) approach, a standard univariate approach in GWAS. We further propose and analyse a correction to the PSC approach, termed as "corrected population correction" (CPC). Together with the theoretical results, numerical simulations show that CPC is always comparable or better than PSC, with a dramatic improvement in some special cases.
翻译:虽然全基因组协会关于复杂特性的研究取得了巨大成功,但目前主要的全基因组协会办法只是对每个基因变异体分别进行每个基因型同型协会的测试,奇怪的是,在考虑整个基因变异的共同模式时,使用这些方法的统计特性并不为人所知。我们在此推动全球基因组协会了解“人口结构校正”办法的统计特性,这是全球基因系统办法中一种标准的单体办法。我们进一步提议和分析对PSC办法的更正,称为“更正人口校正”(CPC)。除了理论结果外,数字模拟显示CPC总是可比或比PSC更好,在某些特殊情况下有了显著改进。