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首页> 外文期刊>International Journal of Epidemiology: Official Journal of the International Epidemiological Association >Adjusting for bias and unmeasured confounding in Mendelian randomization studies with binary responses.
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Adjusting for bias and unmeasured confounding in Mendelian randomization studies with binary responses.

机译:在孟德尔随机研究中用二元响应对偏倚和不可测的混淆进行调整。

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BACKGROUND: Mendelian randomization uses a carefully selected gene as an instrumental-variable (IV) to test or estimate an association between a phenotype and a disease. Classical IV analysis assumes linear relationships between the variables, but disease status is often binary and modelled by a logistic regression. When the linearity assumption between the variables does not hold the IV estimates will be biased. The extent of this bias in the phenotype-disease log odds ratio of a Mendelian randomization study is investigated. METHODS: Three estimators termed direct, standard IV and adjusted IV, of the phenotype-disease log odds ratio are compared through a simulation study which incorporates unmeasured confounding. The simulations are verified using formulae relating marginal and conditional estimates given in the Appendix. RESULTS: The simulations show that the direct estimator is biased by unmeasured confounding factors and the standard IV estimator is attenuated towards the null. Under most circumstances the adjusted IV estimator has the smallest bias, although it has inflated type I error when the unmeasured confounders have a large effect. CONCLUSIONS: In a Mendelian randomization study with a binary disease outcome the bias associated with estimating the phenotype-disease log odds ratio may be of practical importance and so estimates should be subject to a sensitivity analysis against different amounts of hypothesized confounding.
机译:背景:孟德尔随机化使用精心挑选的基因作为工具变量(IV),以测试或估算表型与疾病之间的关联。经典的IV分析假设变量之间存在线性关系,但是疾病状态通常是二元的,并通过逻辑回归建模。当变量之间的线性假设不成立时,IV估计将产生偏差。研究孟德尔随机研究的表型-疾病对数比值比中的这种偏倚程度。方法:通过模拟研究比较了表型-疾病对数比值比的三个估计量,即直接IV,标准IV和调整IV。使用附录中给出的与边际和条件估计有关的公式对仿真进行了验证。结果:仿真结果表明,直接估计量受不可测混杂因素的影响,标准IV估计量向零值衰减。在大多数情况下,经过调整的IV估计量具有最小的偏差,尽管当未测量的混杂因素影响较大时,I型误差会增大。结论:在一项涉及二元疾病结果的孟德尔随机研究中,与估计表型-疾病对数比值比相关的偏倚可能具有实际意义,因此应针对不同数量的假设混杂因素对估计值进行敏感性分析。

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