Medical Research Council Integrative Epidemiology Unit, University of Bristol, Bristol, UK.
Population Health Sciences, University of Bristol, Bristol, UK.
Evid Based Ment Health. 2019 May;22(2):67-71. doi: 10.1136/ebmental-2019-300085. Epub 2019 Apr 12.
Mendelian randomisation (MR) is a technique that aims to assess causal effects of exposures on disease outcomes. The paper aims to present the main assumptions that underlie MR, the statistical methods used to estimate causal effects and how to account for potential violations of the key assumptions.
We discuss the key assumptions that should be satisfied in an MR setting. We list the statistical methodologies used in two-sample MR when summary data are available to estimate causal effects (ie, Wald ratio estimator, inverse-variance weighted and maximum likelihood method) and identify/adjust for potential violations of MR assumptions (ie, MR-Egger regression and weighted Median approach). We also present statistical methods and graphical tools used to evaluate the presence of heterogeneity.
We use as an illustrative example of a published two-sample MR study, investigating the causal association of body mass index with three psychiatric disorders (ie, bipolar disorder, schizophrenia and major depressive disorder). We highlight the importance of assessing the results of all available methods rather than each method alone. We also demonstrate the impact of heterogeneity in the estimation of the causal effects.
MR is a useful tool to assess causality of risk factors in medical research. Assessment of the key assumptions underlying MR is crucial for a valid interpretation of the results.
孟德尔随机化(MR)是一种旨在评估暴露对疾病结局的因果效应的技术。本文旨在介绍 MR 所依据的主要假设、用于估计因果效应的统计方法以及如何考虑关键假设的潜在违反情况。
我们讨论了在 MR 环境中应满足的关键假设。我们列出了当有汇总数据可用于估计因果效应时(即 Wald 比率估计量、逆方差加权和最大似然法)在两样本 MR 中使用的统计方法,并确定/调整了潜在的 MR 假设违反情况(即 MR-Egger 回归和加权中位数法)。我们还介绍了用于评估异质性存在的统计方法和图形工具。
我们使用已发表的两样本 MR 研究作为说明性示例,该研究调查了体重指数与三种精神疾病(即双相情感障碍、精神分裂症和重度抑郁症)之间的因果关联。我们强调了评估所有可用方法而不是每种方法单独结果的重要性。我们还展示了异质性对因果效应估计的影响。
MR 是评估医学研究中风险因素因果关系的有用工具。评估 MR 所依据的关键假设对于正确解释结果至关重要。