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首页> 外文期刊>Genetics: A Periodical Record of Investigations Bearing on Heredity and Variation >The Nature of Genetic Variation for Complex Traits Revealed by GWAS and Regional Heritability Mapping Analyses
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The Nature of Genetic Variation for Complex Traits Revealed by GWAS and Regional Heritability Mapping Analyses

机译:GWAS揭示的复杂性状遗传变异的性质及区域遗传力作图分析

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摘要

We use computer simulations to investigate the amount of genetic variation for complex traits that can be revealed by single-SNP genome-wide association studies (GWAS) or regional heritability mapping (RHM) analyses based on full genome sequence data or SNP chips. We model a large population subject to mutation, recombination, selection, and drift, assuming a pleiotropic model of mutations sampled from a bivariate distribution of effects of mutations on a quantitative trait and fitness. The pleiotropic model investigated, in contrast to previous models, implies that common mutations of large effect are responsible for most of the genetic variation for quantitative traits, except when the trait is fitness itself. We show that GWAS applied to the full sequence increases the number of QTL detected by as much as 50% compared to the number found with SNP chips but only modestly increases the amount of additive genetic variance explained. Even with full sequence data, the total amount of additive variance explained is generally below 50%. Using RHM on the full sequence data, a slightly larger number of QTL are detected than by GWAS if the same probability threshold is assumed, but these QTL explain a slightly smaller amount of genetic variance. Our results also suggest that most of the missing heritability is due to the inability to detect variants of moderate effect (similar to 0.03-0.3 phenotypic SDs) segregating at substantial frequencies. Very rare variants, which are more difficult to detect by GWAS, are expected to contribute little genetic variation, so their eventual detection is less relevant for resolving the missing heritability problem.
机译:我们使用计算机模拟来研究复杂性状的遗传变异量,这些变异可以通过单SNP全基因组关联研究(GWAS)或基于全基因组序列数据或SNP芯片的区域遗传力作图(RHM)分析来揭示。我们假设一个从突变对数量性状和适应性的影响的二元分布抽样的多效性突变模型,对受突变,重组,选择和漂移影响的大量人群进行建模。与以前的模型相比,所研究的多效模型表明,数量性状的大多数遗传变异是影响较大的常见突变,除非性状本身是适合的。我们显示,与使用SNP芯片发现的数量相比,应用于全序列的GWAS将检测到的QTL数量增加了多达50%,但仅适度增加了所解释的加性遗传变异量。即使具有完整序列数据,所解释的加性方差的总量也通常低于50%。如果假设相同的概率阈值,则在全序列数据上使用RHM可以检测到比GWAS稍多的QTL,但是这些QTL可以解释较小的遗传方差。我们的结果还表明,大多数遗漏的遗传力是由于无法检测到以较大频率分离的中等效果(类似于0.03-0.3表型SD)的变体。 GWAS很难检测到的非常罕见的变体,预计将贡献很少的遗传变异,因此它们的最终检测与解决缺失的遗传性问题的相关性较小。

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