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Causal Genetic Inference Using Haplotypes as Instrumental Variables

机译:使用单倍型作为工具变量的因果遗传推断

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In genomic studies with both genotypes and gene or protein expression profile available, causal effects of gene or protein on clinical outcomes can be inferred through using genetic variants as instrumental variables (IVs). The goal of introducing IV is to remove the effects of unobserved factors that may confound the relationship between the biomarkers and the outcome. A valid inference under the IV framework requires pairwise associations and pathway exclusivity. Among these assumptions, the IV expression association needs to be strong for the casual effect estimates to be unbiased. However, a small number of single nucleotide polymorphisms (SNPs) often provide limited explanation of the variability in the gene or protein expression and can only serve as weak IVs. In this study, we propose to replace SNPs with haplotypes as IVs to increase the variant-expression association and thus improve the casual effect inference of the expression. In the classical two-stage procedure, we developed a haplotype regression model combined with a model selection procedure to identify optimal instruments. The performance of the new method was evaluated through simulations and compared with the IV approaches using observed multiple SNPs. Our results showed the gain of power to detect a causal effect of gene or protein on the outcome using haplotypes compared with using only observed SNPs, under either complete or missing genotype scenarios. We applied our proposed method to a study of the effect of interleukin-1 beta (IL-1)protein expression on the 90-day survival following sepsis and found that overly expressed IL-1 is likely to increase mortality. (C) 2015 Wiley Periodicals, Inc.
机译:在具有基因型和基因或蛋白质表达谱的基因组研究中,可以通过使用遗传变异作为工具变量(IV)来推断基因或蛋白质对临床结果的因果关系。引入静脉输注的目的是消除可能混淆生物标记物与结果之间关系的未观察因素的影响。 IV框架下的有效推论需要成对关联和路径独占性。在这些假设中,IV表达的关联性必须强,才能使偶然效应估计无偏见。但是,少数单核苷酸多态性(SNP)通常只能提供有限的基因或蛋白质表达变异性解释,并且只能用作弱IV。在这项研究中,我们建议用单倍型作为IV取代SNP,以增加变异体与表达的联系,从而改善表达的偶然效应。在经典的两阶段程序中,我们开发了与单元格选择程序相结合的单倍型回归模型,以识别最佳仪器。通过仿真评估了新方法的性能,并与使用观察到的多个SNP的IV方法进行了比较。我们的结果表明,与仅使用观察到的SNP相比,在完整或缺失的基因型情况下,使用单倍型检测基因或蛋白质对结果的因果关系的能力有所提高。我们将我们提出的方法用于研究白细胞介素1β(IL-1)蛋白表达对败血症后90天生存率的影响,发现过度表达的IL-1可能会增加死亡率。 (C)2015年Wiley Periodicals,Inc.

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