Comparison of variance estimators for metaanalysis of instrumental variable estimates

Publication date

2016-12-01

Authors

Schmidt, Amand FORCID 0000-0003-1327-0424
Hingorani, A. D.
Jefferis, B. J.
White, J.
Groenwold, Rolf H.H.ISNI 0000000394374611
Dudbridge, F.
Ben-Shlomo, Y.
Chaturvedi, N.
Engmann, J.
Hughes, A.

Editors

Advisors

Supervisors

Document Type

Article

Collections

Open Access logo

License

Abstract

Background: Mendelian randomization studies perform instrumental variable (IV) analysis using genetic IVs. Results of individual Mendelian randomization studies can be pooled through meta-analysis. We explored how different variance estimators influence the meta-analysed IV estimate. Methods: Two versions of the delta method (IV before or after pooling), four bootstrap estimators, a jack-knife estimator and a heteroscedasticity-consistent (HC) variance estimator were compared using simulation. Two types of meta-analyses were compared, a twostagemeta- analysis pooling results, and a one-stage meta-analysis pooling datasets. Results: Using a two-stage meta-analysis, coverage of the point estimate using bootstrapped estimators deviated from nominal levels at weak instrument settings and/or outcome probabilities ≤ 0.10. The jack-knife estimator was the least biased resampling method, the HC estimator often failed at outcome probabilities ≤ 0.50 and overall the delta method estimators were the least biased. In the presence of between-study heterogeneity, the delta method before meta-analysis performed best. Using a one-stage metaanalysis all methods performed equally well and better than two-stage meta-analysis of greater or equal size. Conclusions: In the presence of between-study heterogeneity, two-stage meta-analyses should preferentially use the delta method before meta-analysis. Weak instrument bias can be reduced by performing a one-stage meta-analysis.

Keywords

Epidemiology methods, Mendelian randomization analysis, Statistics, Epidemiology, General Medicine, Journal Article

Citation

Schmidt, A F, Hingorani, A D, Jefferis, B J, White, J, Groenwold, R H H, Dudbridge, F, Ben-Shlomo, Y, Chaturvedi, N, Engmann, J, Hughes, A, Humphries, S, Hypponen, E, Kivimaki, M, Kuh, D, Kumari, M, Menon, U, Morris, R, Power, C, Price, J, Wannamethee, G & Whincup, P 2016, 'Comparison of variance estimators for metaanalysis of instrumental variable estimates', International Journal of Epidemiology, vol. 45, no. 6, dyw123, pp. 1975-1986. https://doi.org/10.1093/ije/dyw123