首页> 外文期刊>PLoS Computational Biology >Predicting Signatures of “Synthetic Associations” and “Natural Associations” from Empirical Patterns of Human Genetic Variation
【24h】

Predicting Signatures of “Synthetic Associations” and “Natural Associations” from Empirical Patterns of Human Genetic Variation

机译:从人类遗传变异的经验模式预测“合成协会”和“自然协会”的签名

获取原文
           

摘要

Genome-wide association studies (GWAS) have in recent years discovered thousands of associated markers for hundreds of phenotypes. However, associated loci often only explain a relatively small fraction of heritability and the link between association and causality has yet to be uncovered for most loci. Rare causal variants have been suggested as one scenario that may partially explain these shortcomings. Specifically, Dickson et al. recently reported simulations of rare causal variants that lead to association signals of common, tag single nucleotide polymorphisms, dubbed “synthetic associations”. However, an open question is what practical implications synthetic associations have for GWAS. Here, we explore the signatures exhibited by such “synthetic associations” and their implications based on patterns of genetic variation observed in human populations, thus accounting for human evolutionary history –a force disregarded in previous simulation studies. This is made possible by human population genetic data from HapMap 3 consisting of both resequencing and array-based genotyping data for the same set of individuals from multiple populations. We report that synthetic associations tend to be further away from the underlying risk alleles compared to “natural associations” (i.e. associations due to underlying common causal variants), but to a much lesser extent than previously predicted, with both the age and the effect size of the risk allele playing a part in this phenomenon. We find that while a synthetic association has a lower probability of capturing causal variants within its linkage disequilibrium block, sequencing around the associated variant need not extend substantially to have a high probability of capturing at least one causal variant. We also show that the minor allele frequency of synthetic associations is lower than of natural associations for most, but not all, loci that we explored. Finally, we find the variance in associated allele frequency to be a potential indicator of synthetic associations.
机译:近年来,全基因组关联研究(GWAS)发现了成百上千种表型的数千种相关标记。但是,关联的基因座通常只能解释相对较小的遗传力,而对于大多数基因座而言,关联和因果关系之间的联系尚未被发现。已经提出了罕见的因果变体作为可以部分解释这些缺点的一种情况。具体来说,Dickson等。最近报道了对罕见因果变异的模拟,这种变异导致常见的,标签单核苷酸多态性的关联信号,被称为“合成关联”。但是,一个开放的问题是,合成协会对GWAS有什么实际影响。在这里,我们基于在人群中观察到的遗传变异模式,探索了这种“合成关联”所展现的特征及其含义,从而解释了人类进化史-这是先前模拟研究中所忽略的力量。 HapMap 3提供的人类群体遗传数据使之成为可能,该数据既包含来自多个人群的同一组个体的重新测序数据,又包括基于阵列的基因分型数据。我们报告说,与“自然关联”(即由于潜在的常见因果变体导致的关联)相比,合成关联往往离潜在的风险等位基因更远,但与年龄和效应大小相比,其程度要小得多风险等位基因参与此现象的原因。我们发现,虽然合成的关联在其连锁不平衡模块内捕获因果变异的可能性较低,但围绕关联变异的测序并不需要实质上扩展以具有捕获至少一个因果变异的高概率。我们还显示,对于我们探索的大多数(但不是全部)基因座,合成关联的次要等位基因频率低于自然关联。最后,我们发现相关等位基因频率的方差可能是合成关联的潜在指标。

著录项

相似文献

  • 外文文献
  • 中文文献
  • 专利
获取原文

客服邮箱:kefu@zhangqiaokeyan.com

京公网安备:11010802029741号 ICP备案号:京ICP备15016152号-6 六维联合信息科技 (北京) 有限公司©版权所有
  • 客服微信

  • 服务号