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      Dissecting Causal Pathways Using Mendelian Randomization with Summarized Genetic Data: Application to Age at Menarche and Risk of Breast Cancer

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          Abstract

          Mendelian randomization is the use of genetic variants as instrumental variables to estimate causal effects of risk factors on outcomes. The total causal effect of a risk factor is the change in the outcome resulting from intervening on the risk factor. This total causal effect may potentially encompass multiple mediating mechanisms. For a proposed mediator, the direct effect of the risk factor is the change in the outcome resulting from a change in the risk factor, keeping the mediator constant. A difference between the total effect and the direct effect indicates that the causal pathway from the risk factor to the outcome acts at least in part via the mediator (an indirect effect). Here, we show that Mendelian randomization estimates of total and direct effects can be obtained using summarized data on genetic associations with the risk factor, mediator, and outcome, potentially from different data sources. We perform simulations to test the validity of this approach when there is unmeasured confounding and/or bidirectional effects between the risk factor and mediator. We illustrate this method using the relationship between age at menarche and risk of breast cancer, with body mass index (BMI) as a potential mediator. We show an inverse direct causal effect of age at menarche on risk of breast cancer (independent of BMI), and a positive indirect effect via BMI. In conclusion, multivariable Mendelian randomization using summarized genetic data provides a rapid and accessible analytic strategy that can be undertaken using publicly available data to better understand causal mechanisms.

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          Author and article information

          Journal
          Genetics
          Genetics
          genetics
          genetics
          genetics
          Genetics
          Genetics Society of America
          0016-6731
          1943-2631
          October 2017
          22 August 2017
          : 207
          : 2
          : 481-487
          Affiliations
          [* ]MRC Biostatistics Unit, University of Cambridge, CB2 0SR Cambridgeshire, United Kingdom
          []Cardiovascular Epidemiology Unit, University of Cambridge, CB1 8RN Cambridgeshire, United Kingdom
          []Cambridge Centre for Genetic Epidemiology, University of Cambridge, CB1 8RN Cambridgeshire, United Kingdom
          [§ ]MRC Epidemiology Unit, University of Cambridge, CB2 0QQ Cambridgeshire, United Kingdom
          Author notes
          [1 ]Corresponding author: Cambridge Institute of Public Health, University of Cambridge, Robinson Way, CB1 0SR Cambridge, UK. E-mail: sb452@ 123456medschl.cam.ac.uk
          Article
          PMC5629317 PMC5629317 5629317 300191
          10.1534/genetics.117.300191
          5629317
          28835472
          105fb006-f41b-47c3-aef7-04ac387e0535
          Copyright © 2017 by the Genetics Society of America
          History
          : 21 March 2017
          : 15 August 2017
          Page count
          Figures: 2, Tables: 1, Equations: 4, References: 31, Pages: 7
          Categories
          Investigations
          Methods, Technology, and Resources

          direct effect,mediation analysis,Mendelian randomization,causal inference,instrumental variable

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