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Model checking via testing for direct effects in Mendelian Randomization and transcriptome-wide association studies

机译:模型检查通过测试在孟德尔随机化和转录组合协会研究中进行直接效应

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摘要

It is of great interest and potential to discover causal relationships between pairs of exposures and outcomes using genetic variants as instrumental variables (IVs) to deal with hidden confounding in observational studies. Two most popular approaches are Mendelian randomization (MR), which usually use independent genetic variants/SNPs across the genome, and transcriptome-wide association studies (TWAS) (or their generalizations) using cis-SNPs local to a gene (or some genome-wide and likely dependent SNPs), as IVs. In spite of their many promising applications, both approaches face a major challenge: the validity of their causal conclusions depends on three critical assumptions on valid IVs, and more generally on other modeling assumptions, which however may not hold in practice. The most likely as well as challenging situation is due to the wide-spread horizontal pleiotropy, leading to two of the three IV assumptions being violated and thus to biased statistical inference. More generally, we’d like to conduct a goodness-of-fit (GOF) test to check the model being used. Although some methods have been proposed as being robust to various degrees to the violation of some modeling assumptions, they often give different and even conflicting results due to their own modeling assumptions and possibly lower statistical efficiency, imposing difficulties to the practitioner in choosing and interpreting varying results across different methods. Hence, it would help to directly test whether any assumption is violated or not. In particular, there is a lack of such tests for TWAS. We propose a new and general GOF test, called TEDE (TEsting Direct Effects), applicable to both correlated and independent SNPs/IVs (as commonly used in TWAS and MR respectively). Through simulation studies and real data examples, we demonstrate high statistical power and advantages of our new method, while confirming the frequent violation of modeling (including valid IV) assumptions in practice and thus the importance of model checking by applying such a test in MR/TWAS analysis.
机译:利益且潜在利用遗传变异作为仪器变量(IVS)在观察研究中处理隐藏的混淆的遗传变量(IVS)之间存在令人兴趣和潜在的兴趣。两种最流行的方法是孟德尔随机化(MR),通常在基因组上使用独立的遗传变体/ SNP,以及使用局部CIS-SNP(或一些基因组 - 宽和可能依赖的SNP),作为IVS。尽管有许多有希望的应用程序,但两种方法都面临着重大挑战:他们的因果结论的有效性取决于有效IVS上的三个危重假设,更一般地对其他建模假设,然而可能不会在实践中保持不变。最有可能的和具有挑战性的情况是由于宽阔的水平型肺活灭,导致三个IV假设中的两个被侵犯,因此偏置统计推理。更一般地说,我们想开展适合拟合(GOF)测试以检查正在使用的模型。虽然已经提出了一些方法对各种程度的侵犯了一些建模假设,但由于自己的建模假设和可能降低统计效率,它们通常会给出不同甚至相互冲突的结果,对从业者选择和解释各种各样的统计效率,对从业者施加困难结果不同的方法。因此,它将有助于直接测试是否违反任何假设。特别是,对TWA缺乏这种测试。我们提出了一种新的和一般的GOF测试,称为TESE(测试直接效应),适用于相关和独立的SNPS / IVS(分别在TWA和MR中常用)。通过仿真研究和实际数据示例,我们展示了我们的新方法的高统计力量和优势,同时确认频繁违反建模(包括有效IV)在实践中的假设,并因此在先生/ TWA分析。

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