TY - JOUR
T1 - Using Sensitivity Analyses for Unobserved Confounding to Address Covariate Measurement Error in Propensity Score Methods
AU - Rudolph, Kara E.
AU - Stuart, Elizabeth A.
N1 - Funding Information:
Department of Epidemiology, School of Public Health, University of California, Berkeley, Berkeley, California (Kara E. Rudolph); and Departments of Mental Health, Biostatistics, and Health Policy and Management, Bloomberg School of Public Health, Johns Hopkins University, Baltimore, Maryland (Elizabeth A. Stuart). K.E.R.’s time was supported by the Drug Dependence Epidemiology Training Program of the National Institute on Drug Abuse (grant T32DA007292-21; Principal Investigator: Dr. Deborah Furr-Holden) and the Robert Wood Johnson Foundation Health & Society Scholars program. E.A.S.’s time was supported by the National Institute of Mental Health (grant R01MH099010; Principal Investigator: Dr. Elizabeth A. Stuart). We thank Drs. Brian Schwartz and Thomas Glass for support in providing the Baltimore Memory Study data. We thank Ian Schmid for providing the SAS code. Conflict of interest: none declared.
Publisher Copyright:
© The Author(s) 2018.
PY - 2018/3/1
Y1 - 2018/3/1
N2 - Propensity score methods are a popular tool with which to control for confounding in observational data, but their bias-reduction properties - as well as internal validity, generally - are threatened by covariate measurement error. There are few easy-to-implement methods of correcting for such bias. In this paper, we describe and demonstrate how existing sensitivity analyses for unobserved confounding - propensity score calibration, VanderWeele and Arah's bias formulas, and Rosenbaum's sensitivity analysis - can be adapted to address this problem. In a simulation study, we examine the extent to which these sensitivity analyses can correct for several measurement error structures: classical, systematic differential, and heteroscedastic covariate measurement error. We then apply these approaches to address covariate measurement error in estimating the association between depression and weight gain in a cohort of adults in Baltimore, Maryland. We recommend the use of VanderWeele and Arah's bias formulas and propensity score calibration (assuming it is adapted appropriately for the measurement error structure), as both approaches perform well for a variety of propensity score estimators and measurement error structures.
AB - Propensity score methods are a popular tool with which to control for confounding in observational data, but their bias-reduction properties - as well as internal validity, generally - are threatened by covariate measurement error. There are few easy-to-implement methods of correcting for such bias. In this paper, we describe and demonstrate how existing sensitivity analyses for unobserved confounding - propensity score calibration, VanderWeele and Arah's bias formulas, and Rosenbaum's sensitivity analysis - can be adapted to address this problem. In a simulation study, we examine the extent to which these sensitivity analyses can correct for several measurement error structures: classical, systematic differential, and heteroscedastic covariate measurement error. We then apply these approaches to address covariate measurement error in estimating the association between depression and weight gain in a cohort of adults in Baltimore, Maryland. We recommend the use of VanderWeele and Arah's bias formulas and propensity score calibration (assuming it is adapted appropriately for the measurement error structure), as both approaches perform well for a variety of propensity score estimators and measurement error structures.
KW - confounding factors (epidemiology)
KW - measurement error
KW - propensity score
KW - unobserved confounding
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U2 - 10.1093/aje/kwx248
DO - 10.1093/aje/kwx248
M3 - Article
C2 - 28992211
AN - SCOPUS:85042916433
SN - 0002-9262
VL - 187
SP - 604
EP - 613
JO - American Journal of Epidemiology
JF - American Journal of Epidemiology
IS - 3
ER -