Loading...
Thumbnail Image
Item

Comparison of methods for handling covariate missingness in propensity score estimation with a binary exposure

Coffman, DL
Zhou, J
Cai, X
Citations
Altmetric:
Genre
Journal Article
Date
2020-06-26
Advisor
Committee member
Group
Department
Permanent link to this record
Research Projects
Organizational Units
Journal Issue
DOI
10.1186/s12874-020-01053-4
Abstract
BACKGROUND: Causal effect estimation with observational data is subject to bias due to confounding, which is often controlled for using propensity scores. One unresolved issue in propensity score estimation is how to handle missing values in covariates. METHOD: Several approaches have been proposed for handling covariate missingness, including multiple imputation (MI), multiple imputation with missingness pattern (MIMP), and treatment mean imputation. However, there are other potentially useful approaches that have not been evaluated, including single imputation (SI) + prediction error (PE), SI + PE + parameter uncertainty (PU), and Generalized Boosted Modeling (GBM), which is a nonparametric approach for estimating propensity scores in which missing values are automatically handled in the estimation using a surrogate split method. To evaluate the performance of these approaches, a simulation study was conducted. RESULTS: Results suggested that SI + PE, SI + PE + PU, MI, and MIMP perform almost equally well and better than treatment mean imputation and GBM in terms of bias; however, MI and MIMP account for the additional uncertainty of imputing the missingness. CONCLUSIONS: Applying GBM to the incomplete data and relying on the surrogate split approach resulted in substantial bias. Imputation prior to implementing GBM is recommended.
Description
Citation
Citation to related work
Springer Science and Business Media LLC
Has part
BMC medical research methodology
ADA compliance
For Americans with Disabilities Act (ADA) accommodation, including help with reading this content, please contact scholarshare@temple.edu
Embedded videos