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首页> 外文期刊>Genetic epidemiology. >Identifying candidate causal variants via trans-population fine-mapping.
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Identifying candidate causal variants via trans-population fine-mapping.

机译:通过跨种群精细映射识别候选因果变异。

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摘要

Genome-wide association studies have discovered and confirmed a large number of loci that are implicated with disease susceptibility and severity. Polymorphisms that emerged from these studies are mostly indirectly associated to the phenotype, and the natural progression is to identify the causal variants that are functionally responsible for these association signals. Long stretches of high linkage disequilibrium (LD) benefitted the initial discovery phase in a genome-wide scan, allowing commercial genotyping products with imperfect coverage to detect genomic regions genuinely associated with the phenotype. However, regions of high LD confound the fine-mapping phase, as markers that are perfectly correlated to the causal variants display similar evidence of phenotypic association, hampering the process of differentiating the functional polymorphisms from neighboring surrogates. Here, we explore the potential of integrating information across different populations for narrowing the candidate region that a causal variant resides in, and compare the efficacy of this process of trans-population fine-mapping with the extent of variation in patterns of LD between the populations. In addition, we explore two different strategies for pooling data across multiple populations for the purpose of prioritizing the rankings of the causal variants. Our results clearly establish the benefits of trans-population analysis in reducing the number of possible candidates for the causal variants, particularly in genomic regions displaying strong evidence of inter-population LD variation. Directly integrating the statistical evidence by summing the test statistics outperforms the standard meta-analytic procedure. These findings have direct relevance to the design and analysis of ongoing fine-mapping studies.
机译:全基因组关联研究已经发现并证实了大量与疾病易感性和严重性有关的基因座。这些研究中出现的多态性大多与表型间接相关,自然发展是为了确定在功能上负责这些关联信号的因果变体。长时间延伸的高连锁不平衡(LD)有利于全基因组扫描的初始发现阶段,从而使覆盖范围不完整的商业基因分型产品能够检测与表型真正相关的基因组区域。但是,高LD区域混淆了精细映射阶段,因为与因果变异完全相关的标记显示出表型关联的相似证据,从而妨碍了将功能多态性与邻近替代物区分开的过程。在这里,我们探讨了整合不同人群信息以缩小因果变异所位于的候选区域的可能性,并比较了这种人口迁移精细映射过程的效率与人群之间LD模式变化的程度。此外,为了优先确定因果变体的排名,我们探索了两种在多个人群中合并数据的不同策略。我们的结果清楚地证明了转种群分析在减少因果变异的可能候选者数量方面的优势,尤其是在显示出种群间LD变异的有力证据的基因组区域中。通过汇总测试统计数据直接整合统计证据的性能优于标准的荟萃分析程序。这些发现与正在进行的精细映射研究的设计和分析直接相关。

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