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Using multiple genetic variants as instrumental variables for modifiable risk factors

机译:使用多种遗传变异作为可调节风险因素的工具变量

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Mendelian randomisation analyses use genetic variants as instrumental variables (IVs) to estimate causal effects of modifiable risk factors on disease outcomes. Genetic variants typically explain a small proportion of the variability in risk factors; hence Mendelian randomisation analyses can require large sample sizes. However, an increasing number of genetic variants have been found to be robustly associated with disease-related outcomes in genome-wide association studies. Use of multiple instruments can improve the precision of IV estimates, and also permit examination of underlying IV assumptions. We discuss the use of multiple genetic variants in Mendelian randomisation analyses with continuous outcome variables where all relationships are assumed to be linear. We describe possible violations of IV assumptions, and how multiple instrument analyses can be used to identify them. We present an example using four adiposity-associated genetic variants as IVs for the causal effect of fat mass on bone density, using data on 5509 children enrolled in the ALSPAC birth cohort study. We also use simulation studies to examine the effect of different sets of IVs on precision and bias. When each instrument independently explains variability in the risk factor, use of multiple instruments increases the precision of IV estimates. However, inclusion of weak instruments could increase finite sample bias. Missing data on multiple genetic variants can diminish the available sample size, compared with single instrument analyses. In simulations with additive genotype-risk factor effects, IV estimates using a weighted allele score had similar properties to estimates using multiple instruments. Under the correct conditions, multiple instrument analyses are a promising approach for Mendelian randomisation studies. Further research is required into multiple imputation methods to address missing data issues in IV estimation.
机译:孟德尔随机化分析使用遗传变异作为工具变量(IV)来估计可改变的危险因素对疾病结局的因果关系。遗传变异通常可以解释风险因素变异的一小部分。因此,孟德尔随机分析可能需要大样本量。然而,在全基因组关联研究中发现越来越多的遗传变异与疾病相关的结果密切相关。使用多种工具可以提高IV估计的准确性,也可以检查基本的IV假设。我们讨论在孟德尔随机分析中使用多个遗传变量,并使用连续结果变量(假定所有关系均为线性)的情况。我们描述了可能违反IV假设的情况,以及如何使用多种工具分析来识别它们。我们使用ALSPAC出生队列研究的5509名儿童的数据,使用四个与肥胖相关的遗传变异作为IV对脂肪量对骨密度的因果影响的实例。我们还使用仿真研究来检查不同IV集合对精度和偏差的影响。当每种工具独立地解释风险因素的可变性时,使用多种工具可以提高IV估计的准确性。但是,包含弱仪器可能会增加有限的样本偏差。与单仪器分析相比,缺少多个遗传变异的数据可能会减少可用的样本量。在具有加性基因型风险因子效应的模拟中,使用加权等位基因评分的IV估计与使用多种仪器的估计具有相似的属性。在正确的条件下,多仪器分析是孟德尔随机研究的一种有前途的方法。需要进一步研究多种插补方法,以解决IV估计中丢失的数据问题。

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