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  • Propensity score matching and linear regression covariates

    Hello, can someone help? Suppose I use PSM to balance confounders for treatment effect in observational studies, and the logistic model for the PS includes age, gender, comorbidities.

    And then use stratification or matching or weighting (eg in tutorial by http://personalpages.manchester.ac.u...sity_guide.pdf) followed by PS matched linear regression.

    Can the PS matched linear regression then have age, gender, comorbidities as covariates?

    Conceptually it seems to me that you should be able to, but not if (as some people do https://www.ncbi.nlm.nih.gov/pmc/articles/PMC4004383/) PS is used for model reduction and the PS is added as a covariate.

    Thank you

  • #2
    Yes, it can. Another argument for this "first match, then regress on the matched sample" approach is

    Ho, D.E., Imai, K., King, G., and Stuart, E.A. (2007). Matching as Nonparametric Preprocessing for Reducing Model Dependence in Parametric Causal Inference. Political Analysis, 15(3): 199–236.

    For an argument on why this approach is preferable for complex sample survey data, see

    DuGoff, E.H., Schuler, M., and Stuart, E.A. (2014). Generalizing Observational Study Results: Applying Propensity Score Methods to Complex Surveys. Health Services Research, 49(1): 284–303.

    The latter reference also argues for including the propensity score in the regression model, which differs from the second reference in your post.
    David Radwin
    Senior Researcher, California Competes
    californiacompetes.org
    Pronouns: He/Him

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    • #3
      Thank you so much that's great. Have you got any good references explaining benefits of PSM over adjusting for baseline as a covariates?

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      • #4
        Sorry, Bob, I do not.
        David Radwin
        Senior Researcher, California Competes
        californiacompetes.org
        Pronouns: He/Him

        Comment

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