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Assessing multivariate gene-metabolome associations with rare variants using Bayesian reduced rank regression

机译:使用贝叶斯减少秩回归来评估具有罕见变异的多元基因-代谢组关联

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摘要

>Motivation: A typical genome-wide association study searches for associations between single nucleotide polymorphisms (SNPs) and a univariate phenotype. However, there is a growing interest to investigate associations between genomics data and multivariate phenotypes, for example, in gene expression or metabolomics studies. A common approach is to perform a univariate test between each genotype–phenotype pair, and then to apply a stringent significance cutoff to account for the large number of tests performed. However, this approach has limited ability to uncover dependencies involving multiple variables. Another trend in the current genetics is the investigation of the impact of rare variants on the phenotype, where the standard methods often fail owing to lack of power when the minor allele is present in only a limited number of individuals.>Results: We propose a new statistical approach based on Bayesian reduced rank regression to assess the impact of multiple SNPs on a high-dimensional phenotype. Because of the method’s ability to combine information over multiple SNPs and phenotypes, it is particularly suitable for detecting associations involving rare variants. We demonstrate the potential of our method and compare it with alternatives using the Northern Finland Birth Cohort with 4702 individuals, for whom genome-wide SNP data along with lipoprotein profiles comprising 74 traits are available. We discovered two genes (XRCC4 and MTHFD2L) without previously reported associations, which replicated in a combined analysis of two additional cohorts: 2390 individuals from the Cardiovascular Risk in Young Finns study and 3659 individuals from the FINRISK study.>Availability and implementation: R-code freely available for download at .>Contact: ; >Supplementary information: are available at Bioinformatics online.
机译:>动机:一项典型的全基因组关联研究研究了单核苷酸多态性(SNP)与单变量表型之间的关联。然而,人们越来越有兴趣研究基因组数据与多元表型之间的关联,例如在基因表达或代谢组学研究中。一种常见的方法是在每个基因型-表型对之间执行单变量检验,然后应用严格的显着性临界值来说明所执行的大量检验。但是,这种方法发现涉及多个变量的依赖项的能力有限。当前遗传学的另一个趋势是研究稀有变异体对表型的影响,当少数等位基因仅存在于有限数量的个体中时,标准方法通常由于缺乏能力而失败。>结果:< / strong>我们提出了一种基于贝叶斯减少秩回归的新统计方法,以评估多个SNP对高维表型的影响。由于该方法能够合并多个SNP和表型上的信息,因此特别适合检测涉及稀有变体的关联。我们展示了我们方法的潜力,并将其与使用北芬兰出生队列的替代方法和4702个人进行比较,这些个人可获得全基因组SNP数据以及包含74个性状的脂蛋白谱。我们发现了两个基因(XRCC4和MTHFD2L)没有以前报道的关联,这些结果在另外两个队列的组合分析中得以复制:来自年轻芬兰人心血管风险研究的2390个个体和来自FINRISK研究的3659个个体。>可用性和实现: 可从以下位置免费下载R代码。>联系人:; >补充信息:可在线访问生物信息学。

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