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Properties and Modeling of GWAS when Complex Disease Risk Is Due to Non-Complementing Deleterious Mutations in Genes of Large Effect

机译:复杂疾病风险归因于大效应基因中的非互补有害突变时的GWAS特性和建模

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摘要

Current genome-wide association studies (GWAS) have high power to detect intermediate frequency SNPs making modest contributions to complex disease, but they are underpowered to detect rare alleles of large effect (RALE). This has led to speculation that the bulk of variation for most complex diseases is due to RALE. One concern with existing models of RALE is that they do not make explicit assumptions about the evolution of a phenotype and its molecular basis. Rather, much of the existing literature relies on arbitrary mapping of phenotypes onto genotypes obtained either from standard population-genetic simulation tools or from non-genetic models. We introduce a novel simulation of a 100-kilobase gene region, based on the standard definition of a gene, in which mutations are unconditionally deleterious, are continuously arising, have partially recessive and non-complementing effects on phenotype (analogous to what is widely observed for most Mendelian disorders), and are interspersed with neutral markers that can be genotyped. Genes evolving according to this model exhibit a characteristic GWAS signature consisting of an excess of marginally significant markers. Existing tests for an excess burden of rare alleles in cases have low power while a simple new statistic has high power to identify disease genes evolving under our model. The structure of linkage disequilibrium between causative mutations and significantly associated markers under our model differs fundamentally from that seen when rare causative markers are assumed to be neutral. Rather than tagging single haplotypes bearing a large number of rare causative alleles, we find that significant SNPs in a GWAS tend to tag single causative mutations of small effect relative to other mutations in the same gene. Our results emphasize the importance of evaluating the power to detect associations under models that are genetically and evolutionarily motivated.
机译:当前的全基因组关联研究(GWAS)具有检测对复杂疾病做出适度贡献的中频SNP的强大能力,但不足以检测具有大效应的稀有等位基因(RALE)。这导致人们猜测,大多数复杂疾病的大部分变异归因于RALE。现有RALE模型的一个关注点是它们没有对表型及其分子基础的进化做出明确的假设。相反,许多现有文献依赖于将表型映射到从标准群体遗传模拟工具或非遗传模型获得的基因型上。我们基于一个基因的标准定义,介绍了一个100碱基碱基的基因区域的新颖模拟,其中突变无条件有害,连续发生,对表型具有部分隐性和非互补性效应(类似于广泛观察到的现象) (对于大多数孟德尔疾病),并且散布着可以进行基因分型的中性标记。根据该模型进化的基因表现出特征性的GWAS签名,该签名由过量的边缘重要标记组成。现有的案例中稀有等位基因过多负担的检验功效较低,而简单的新统计数据则具有较高的功效,可以识别在我们模型下进化的疾病基因。在我们的模型下,致病突变与显着相关的标记之间的连锁不平衡结构与假设罕见的致病标记为中性时所见的根本不同。我们发现不是标记带有大量罕见致病性等位基因的单倍型,而是发现GWAS中的重要SNP倾向于标记相对于同一基因中其他突变而言效果较小的单个致病突变。我们的结果强调评估具有遗传和进化动机的模型下检测关联的能力的重要性。

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