University of Leicester
Browse
1/1
3 files

Assessing the suitability of summary data for two-sample Mendelian randomization analyses using MR-Egger regression: the role of the I2 statistic.

journal contribution
posted on 2016-12-01, 11:08 authored by J. Bowden, F. Del Greco M, C. Minelli, G. Davey Smith, Nuala A. Sheehan, John R. Thompson
Background: MR-Egger regression has recently been proposed as a method for Mendelian randomization (MR) analyses incorporating summary data estimates of causal effect from multiple individual variants, which is robust to invalid instruments. It can be used to test for directional pleiotropy and provides an estimate of the causal effect adjusted for its presence. MR-Egger regression provides a useful additional sensitivity analysis to the standard inverse variance weighted (IVW) approach that assumes all variants are valid instruments. Both methods use weights that consider the single nucleotide polymorphism (SNP)-exposure associations to be known, rather than estimated. We call this the `NO Measurement Error' (NOME) assumption. Causal effect estimates from the IVW approach exhibit weak instrument bias whenever the genetic variants utilized violate the NOME assumption, which can be reliably measured using the F-statistic. The effect of NOME violation on MR-Egger regression has yet to be studied. Methods: An adaptation of the I^2 statistic from the field of meta-analysis is proposed to quantify the strength of NOME violation for MR-Egger. It lies between 0 and 1, and indicates the expected relative bias (or dilution) of the MR-Egger causal estimate in the two-sample MR context. We call it I^2GX. The method of simulation extrapolation is also explored to counteract the dilution. Their joint utility is evaluated using simulated data and applied to a real MR example. Results: In simulated two-sample MR analyses we show that, when a causal effect exists, the MR-Egger estimate of causal effect is biased towards the null when NOME is violated, and the stronger the violation (as indicated by lower values of I^2GX), the stronger the dilution. When additionally all genetic variants are valid instruments, the type I error rate of the MR-Egger test for pleiotropy is inflated and the causal effect underestimated. Simulation extrapolation is shown to substantially mitigate these adverse effects. We demonstrate our proposed approach for a two-sample summary data MR analysis to estimate the causal effect of low-density lipoprotein on heart disease risk. A high value of I^2GX close to 1 indicates that dilution does not materially affect the standard MR-Egger analyses for these data. Conclusions: Care must be taken to assess the NOME assumption via the I^2GX statistic before implementing standard MR-Egger regression in the two-sample summary data context. If I^2GX is sufficiently low (less than 90%), inferences from the method should be interpreted with caution and adjustment methods considered.

Funding

Jack Bowden is supported by an MRC Methodology Research Fellowship (grant MR/N501906/1). George Davey Smith is supported by the MRC Integrative Epidemiology Unit at the University of Bristol (grant code MC_UU_12013/1)

History

Citation

International Journal of Epidemiology, 2016, 1–14

Author affiliation

/Organisation/COLLEGE OF MEDICINE, BIOLOGICAL SCIENCES AND PSYCHOLOGY/School of Medicine/Department of Health Sciences

Version

  • VoR (Version of Record)

Published in

International Journal of Epidemiology

Publisher

Oxford University Press (OUP) for International Epidemiological Association

issn

0300-5771

eissn

1464-3685

Acceptance date

2016-07-12

Copyright date

2016

Available date

2016-12-01

Publisher version

http://ije.oxfordjournals.org/content/early/2016/09/06/ije.dyw220

Notes

Supplementary data are available at IJE online. http://ije.oxfordjournals.org/lookup/suppl/doi:10.1093/ije/dyw220/-/DC1

Language

en

Usage metrics

    University of Leicester Publications

    Categories

    Licence

    Exports

    RefWorks
    BibTeX
    Ref. manager
    Endnote
    DataCite
    NLM
    DC