4.6 Article

Using published data in Mendelian randomization: a blueprint for efficient identification of causal risk factors

期刊

EUROPEAN JOURNAL OF EPIDEMIOLOGY
卷 30, 期 7, 页码 543-552

出版社

SPRINGER
DOI: 10.1007/s10654-015-0011-z

关键词

Mendelian randomization; Instrumental variable; Causal inference; Published data; Two-sample Mendelian randomization; Summarized data

资金

  1. European Community Framework Programme 6 [LSHM-CT-2006-037197]
  2. Medical Research Council
  3. British Heart Foundation [G0800270, CH/12/2/29428]
  4. Wellcome Trust [100114]
  5. MRC [G0800270, MC_UU_12015/1, MC_UU_12013/1, MC_UU_12013/3, MR/L003120/1] Funding Source: UKRI
  6. British Heart Foundation [RG/08/014/24067, SP/08/007/23628] Funding Source: researchfish
  7. Medical Research Council [MC_U106179471, MC_UU_12015/1, G0800270, MR/L003120/1, MC_UU_12013/3, MC_UU_12013/1] Funding Source: researchfish
  8. National Institute for Health Research [NF-SI-0512-10135, NF-SI-0512-10165] Funding Source: researchfish

向作者/读者索取更多资源

Finding individual-level data for adequately-powered Mendelian randomization analyses may be problematic. As publicly-available summarized data on genetic associations with disease outcomes from large consortia are becoming more abundant, use of published data is an attractive analysis strategy for obtaining precise estimates of the causal effects of risk factors on outcomes. We detail the necessary steps for conducting Mendelian randomization investigations using published data, and present novel statistical methods for combining data on the associations of multiple (correlated or uncorrelated) genetic variants with the risk factor and outcome into a single causal effect estimate. A two-sample analysis strategy may be employed, in which evidence on the gene-risk factor and gene-outcome associations are taken from different data sources. These approaches allow the efficient identification of risk factors that are suitable targets for clinical intervention from published data, although the ability to assess the assumptions necessary for causal inference is diminished. Methods and guidance are illustrated using the example of the causal effect of serum calcium levels on fasting glucose concentrations. The estimated causal effect of a 1 standard deviation (0.13 mmol/L) increase in calcium levels on fasting glucose (mM) using a single lead variant from the CASR gene region is 0.044 (95 % credible interval -0.002, 0.100). In contrast, using our method to account for the correlation between variants, the corresponding estimate using 17 genetic variants is 0.022 (95 % credible interval 0.009, 0.035), a more clearly positive causal effect.

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