Literature DB >> 26233956

Regularized Regression Versus the High-Dimensional Propensity Score for Confounding Adjustment in Secondary Database Analyses.

Jessica M Franklin, Wesley Eddings, Robert J Glynn, Sebastian Schneeweiss.   

Abstract

Selection and measurement of confounders is critical for successful adjustment in nonrandomized studies. Although the principles behind confounder selection are now well established, variable selection for confounder adjustment remains a difficult problem in practice, particularly in secondary analyses of databases. We present a simulation study that compares the high-dimensional propensity score algorithm for variable selection with approaches that utilize direct adjustment for all potential confounders via regularized regression, including ridge regression and lasso regression. Simulations were based on 2 previously published pharmacoepidemiologic cohorts and used the plasmode simulation framework to create realistic simulated data sets with thousands of potential confounders. Performance of methods was evaluated with respect to bias and mean squared error of the estimated effects of a binary treatment. Simulation scenarios varied the true underlying outcome model, treatment effect, prevalence of exposure and outcome, and presence of unmeasured confounding. Across scenarios, high-dimensional propensity score approaches generally performed better than regularized regression approaches. However, including the variables selected by lasso regression in a regular propensity score model also performed well and may provide a promising alternative variable selection method.
© The Author 2015. Published by Oxford University Press on behalf of the Johns Hopkins Bloomberg School of Public Health. All rights reserved. For permissions, please e-mail: journals.permissions@oup.com.

Keywords:  bias; confounding factors; epidemiologic methods; lasso; propensity score; simulation; variable selection

Mesh:

Year:  2015        PMID: 26233956     DOI: 10.1093/aje/kwv108

Source DB:  PubMed          Journal:  Am J Epidemiol        ISSN: 0002-9262            Impact factor:   4.897


  17 in total

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5.  Scalable collaborative targeted learning for high-dimensional data.

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6.  Conducting Privacy-Preserving Multivariable Propensity Score Analysis When Patient Covariate Information Is Stored in Separate Locations.

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9.  Propensity Scores in Pharmacoepidemiology: Beyond the Horizon.

Authors:  John W Jackson; Ian Schmid; Elizabeth A Stuart
Journal:  Curr Epidemiol Rep       Date:  2017-11-06

10.  Comparison of privacy-protecting analytic and data-sharing methods: A simulation study.

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