Literature DB >> 30345554

When does measurement error in covariates impact causal effect estimates? Analytic derivations of different scenarios and an empirical illustration.

Marie-Ann Sengewald1, Peter M Steiner2, Steffi Pohl3.   

Abstract

The average causal treatment effect (ATE) can be estimated from observational data based on covariate adjustment. Even if all confounding covariates are observed, they might not necessarily be reliably measured and may fail to obtain an unbiased ATE estimate. Instead of fallible covariates, the respective latent covariates can be used for covariate adjustment. But is it always necessary to use latent covariates? How well do analysis of covariance (ANCOVA) or propensity score (PS) methods estimate the ATE when latent covariates are used? We first analytically delineate the conditions under which latent instead of fallible covariates are necessary to obtain the ATE. Then we empirically examine the difference between ATE estimates when adjusting for fallible or latent covariates in an applied example. We discuss the issue of fallible covariates within a stochastic theory of causal effects and analyse data of a within-study comparison with recently developed ANCOVA and PS procedures that allow for latent covariates. We show that fallible covariates do not necessarily bias ATE estimates, but point out different scenarios in which adjusting for latent covariates is required. In our empirical application, we demonstrate how latent covariates can be incorporated for ATE estimation in ANCOVA and in PS analysis.
© 2018 The British Psychological Society.

Keywords:  analysis of covariance; causal effect; latent covariates; propensity scores; within-study design

Mesh:

Year:  2018        PMID: 30345554     DOI: 10.1111/bmsp.12146

Source DB:  PubMed          Journal:  Br J Math Stat Psychol        ISSN: 0007-1102            Impact factor:   3.380


  2 in total

1.  Compensation and Amplification of Attenuation Bias in Causal Effect Estimates.

Authors:  Marie-Ann Sengewald; Steffi Pohl
Journal:  Psychometrika       Date:  2019-03-26       Impact factor: 2.500

2.  Causal Mediation Analysis in Single Case Experimental Designs: Introduction to the Special Issue.

Authors:  Milica Miočević; Mariola Moeyaert; Axel Mayer; Amanda K Montoya
Journal:  Eval Health Prof       Date:  2022-02-03       Impact factor: 2.651

  2 in total

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