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Uncovering the total heritability explained by all true susceptibility variants in a genome-wide association study.

机译:在全基因组关联研究中揭示了所有真实易感性变异所解释的总遗传力。

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Genome-wide association studies (GWAS) have become increasingly popular recently and contributed to the discovery of many susceptibility variants. However, a large proportion of the heritability still remained unexplained. This observation raises queries regarding the ability of GWAS to uncover the genetic basis of complex diseases. In this study, we propose a simple and fast statistical framework to estimate the total heritability explained by all true susceptibility variants in a GWAS. It is expected that many true risk variants will not be detected in a GWAS due to limited power. The proposed framework aims at recovering the "hidden" heritability. Importantly, only the summary z-statistics are required as input and no raw genotype data are needed. The strategy is to recover the true effect sizes from the observed z-statistics. The methodology does not rely on any distributional assumptions of the effect sizes of variants. Both binary and quantitative traits can be handled and covariates may be included. Population-based or family-based designs are allowed as long as the summary statistics are available. Simulations were conducted and showed satisfactory performance of the proposed approach. Application to real data (Crohn's disease, HDL, LDL, and triglycerides) reveals that at least around 10-20% of variance in liability or phenotype can be explained by GWAS panels. This translates to around 10-40% of the total heritability for the studied traits.
机译:全基因组关联研究(GWAS)最近变得越来越流行,并有助于发现许多易感性变异。但是,遗传力的很大一部分仍然无法解释。这项发现引起了人们对GWAS发现复杂疾病遗传基础的能力的质疑。在这项研究中,我们提出了一个简单而快速的统计框架,以估算由GWAS中所有真实易感性变量解释的总遗传力。预计由于功率有限,GWAS中不会检测到许多真实的风险变量。拟议的框架旨在恢复“隐藏”的遗传力。重要的是,仅需要汇总z统计信息作为输入,而无需原始基因型数据。该策略是从观察到的z统计量中恢复真实效果的大小。该方法不依赖于变体的效应大小的任何分布假设。二元和定量性状都可以处理,并且可以包含协变量。只要汇总统计数据可用,就允许基于人群或基于家庭的设计。进行了仿真并显示了所提出方法的令人满意的性能。对真实数据(克罗恩病,HDL,LDL和甘油三酸酯)的应用表明,GWAS专家组可以解释至少约10-20%的责任或表型差异。这转化为所研究性状的总遗传力的约10-40%。

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