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Methods for meta-analysis of individual participant data from Mendelian randomisation studies with binary outcomes

机译:孟德尔随机研究中具有二元结果的个体参与者数据的荟萃分析方法

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Mendelian randomisation is an epidemiological method for estimating causal associations from observational data by using genetic variants as instrumental variables. Typically the genetic variants explain only a small proportion of the variation in the risk factor of interest, and so large sample sizes are required, necessitating data from multiple sources. Meta-analysis based on individual patient data requires synthesis of studies which differ in many aspects. A proposed Bayesian framework is able to estimate a causal effect from each study, and combine these using a hierarchical model. The method is illustrated for data on C-reactive protein and coronary heart disease (CHD) from the C-reactive protein CHD Genetics Collaboration (CCGC). Studies from the CCGC differ in terms of the genetic variants measured, the study design (prospective or retrospective, population-based or case-control), whether C-reactive protein was measured, the time of C-reactive protein measurement (pre- or post-disease), and whether full or tabular data were shared. We show how these data can be combined in an efficient way to give a single estimate of causal association based on the totality of the data available. Compared to a two-stage analysis, the Bayesian method is able to incorporate data on 23% additional participants and 51% more events, leading to a 23-26% gain in efficiency.
机译:孟德尔随机化是一种流行病学方法,通过使用遗传变异作为工具变量从观测数据中估计因果关系。通常,遗传变异仅解释了感兴趣的危险因素中的一小部分变异,因此需要较大的样本量,因此需要来自多个来源的数据。基于患者个人数据的荟萃分析需要综合许多方面的研究。提出的贝叶斯框架能够估计每项研究的因果效应,并使用层次模型将其结合起来。说明了该方法用于C反应蛋白CHD遗传学合作组织(CCGC)的C反应蛋白和冠心病(CHD)数据。 CCGC的研究在测量的遗传变异,研究设计(前瞻性或回顾性,基于人群或病例对照),是否测量了C反应蛋白,C反应蛋白测量时间(前或后)方面有所不同。后疾病),以及共享完整数据还是表格数据。我们展示了如何以有效的方式组合这些数据,以基于可用数据的整体给出因果关联的单个估计。与两阶段分析相比,贝叶斯方法能够合并23%的额外参与者和51%的事件的数据,从而使效率提高23-26%。

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