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基于逆方差加权的孟德尔随机化偏倚校正。

Bias correction for inverse variance weighting Mendelian randomization.

机构信息

Department of Epidemiology and Health Systems, University Center for Primary Care and Public Health, Lausanne, Switzerland.

Swiss Institute of Bioinformatics, Lausanne, Switzerland.

出版信息

Genet Epidemiol. 2023 Jun;47(4):314-331. doi: 10.1002/gepi.22522. Epub 2023 Apr 10.

Abstract

Inverse-variance weighted two-sample Mendelian randomization (IVW-MR) is the most widely used approach that utilizes genome-wide association studies (GWAS) summary statistics to infer the existence and the strength of the causal effect between an exposure and an outcome. Estimates from this approach can be subject to different biases due to the use of weak instruments and winner's curse, which can change as a function of the overlap between the exposure and outcome samples. We developed a method (MRlap) that simultaneously considers weak instrument bias and winner's curse while accounting for potential sample overlap. Assuming spike-and-slab genomic architecture and leveraging linkage disequilibrium score regression and other techniques, we could analytically derive, reliably estimate, and hence correct for the bias of IVW-MR using association summary statistics only. We tested our approach using simulated data for a wide range of realistic settings. In all the explored scenarios, our correction reduced the bias, in some situations by as much as 30-fold. In addition, our results are consistent with the fact that the strength of the biases will decrease as the sample size increases and we also showed that the overall bias is also dependent on the genetic architecture of the exposure, and traits with low heritability and/or high polygenicity are more strongly affected. Applying MRlap to obesity-related exposures revealed statistically significant differences between IVW-based and corrected effects, both for nonoverlapping and fully overlapping samples. Our method not only reduces bias in causal effect estimation but also enables the use of much larger GWAS sample sizes, by allowing for potentially overlapping samples.

摘要

逆方差加权两样本孟德尔随机化(IVW-MR)是最广泛使用的方法,它利用全基因组关联研究(GWAS)汇总统计数据来推断暴露与结果之间因果关系的存在和强度。由于使用弱工具和赢家诅咒,这种方法的估计可能会受到不同的偏差的影响,这些偏差会随着暴露和结果样本之间的重叠程度而变化。我们开发了一种方法(MRlap),该方法同时考虑了弱工具偏差和赢家诅咒,同时考虑了潜在的样本重叠。假设 Spike-and-Slab 基因组结构,并利用连锁不平衡评分回归和其他技术,我们可以仅使用关联汇总统计数据进行分析推导、可靠估计和纠正 IVW-MR 的偏差。我们使用广泛的实际设置的模拟数据测试了我们的方法。在所有探索的场景中,我们的校正方法降低了偏差,在某些情况下,偏差降低了 30 倍。此外,我们的结果与这样一个事实一致,即随着样本量的增加,偏差的强度会降低,我们还表明,整体偏差也取决于暴露的遗传结构,具有低遗传力和/或高多基因性的特征受影响更大。将 MRlap 应用于肥胖相关的暴露,发现基于 IVW 的和校正后的效应之间存在统计学显著差异,无论是对于不重叠的还是完全重叠的样本都是如此。我们的方法不仅减少了因果效应估计中的偏差,而且还允许使用更大的 GWAS 样本量,因为允许潜在的重叠样本。

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