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On the analysis of copy-number variations in genome-wide association studies: a translation of the family-based association test.

机译:关于全基因组关联研究中拷贝数变异的分析:基于家族的关联测试的翻译。

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摘要

Though there is an increasing support for an important contribution of copy number variation (CNV) to the genetic architecture of complex disease, few methods have been developed for the analysis of such variation in the context of genetic association studies. In this paper, we propose a generalization of family-based association tests (FBATs) to allow for the analysis of CNVs at a genome-wide level. We translate the popular FBAT approach so that, instead of genotypes, raw intensity values that reflect copy number are used directly in the test statistic, thereby bypassing the need for a CNV genotyping algorithm. Moreover, both inherited and de novo CNVs can be analyzed without any prior knowledge about the type of CNV, making it easily applicable to large-scale association studies. All robustness properties of the genotype FBAT approach are maintained and all previously developed FBAT extensions, including FBATs for time-to-onset, multivariate FBATs, and FBAT-testing strategies, can be directly transferred to the analysis of CNVs. Using simulation studies, we evaluate the power and the robustness of the new approach. Furthermore, for those CNVs that can be genotyped, we compare FBATs based on genotype calls with FBATs that are directly based on the intensity data. An application to one of the first CNV genome-wide-association studies of asthma identifies a very plausible candidate gene. A software implementation of the approach is freely available at http://www.hsph.harvard.edu/research/iuliana-ionita/software. The approach has also been completely integrated in the PBAT software package.
机译:尽管越来越多地支持拷贝数变异(CNV)对复杂疾病的遗传结构的重要贡献,但在遗传关联研究的背景下,很少有人研究分析这种变异的方法。在本文中,我们提出了基于家庭的关联测试(FBAT)的一般化,以允许在全基因组水平上分析CNV。我们对流行的FBAT方法进行了翻译,以便代替基因型,而是将反映拷贝数的原始强度值直接用于测试统计数据中,从而避免了对CNV基因分型算法的需求。此外,继承的CNV和从头开始的CNV都可以进行分析,而无需任何有关CNV类型的任何先验知识,因此很容易将其应用于大规模关联研究。基因型FBAT方法的所有鲁棒性均得到保留,并且所有先前开发的FBAT扩展,包括用于发作时间的FBAT,多元FBAT和FBAT测试策略,都可以直接转移到CNV的分析中。通过仿真研究,我们评估了新方法的强大功能和鲁棒性。此外,对于那些可以进行基因分型的CNV,我们将基于基因型调用的FBAT与直接基于强度数据的FBAT进行比较。哮喘的第一个CNV全基因组关联研究之一的应用确定了一个非常合理的候选基因。该方法的软件实现可从http://www.hsph.harvard.edu/research/iuliana-ionita/software免费获得。该方法也已完全集成在PBAT软件包中。

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