| Literature DB >> 28454568 |
Tri-Long Nguyen1,2, Gary S Collins3, Jessica Spence2, Jean-Pierre Daurès1, P J Devereaux2,4, Paul Landais1,5, Yannick Le Manach6.
Abstract
BACKGROUND: Double-adjustment can be used to remove confounding if imbalance exists after propensity score (PS) matching. However, it is not always possible to include all covariates in adjustment. We aimed to find the optimal imbalance threshold for entering covariates into regression.Entities:
Keywords: Causal inference; Confounding; Covariate balance; Propensity score
Mesh:
Year: 2017 PMID: 28454568 PMCID: PMC5408373 DOI: 10.1186/s12874-017-0338-0
Source DB: PubMed Journal: BMC Med Res Methodol ISSN: 1471-2288 Impact factor: 4.615
Fig. 1Covariate balance diagnostics after nearest-neighbor matching in (a) a linear, additive scenario and (b) a non-linear, non-additive scenario. SMD, standardized absolute mean difference
Fig. 2Estimated average treatment effect in the treated (ATT) on the absolute risk difference scale (median with 2.5th and 97.5th percentiles), in (a) the linear, additive scenario and (b) the non-linear, non-additive scenario. The double-robust estimator was adjusted for unbalanced covariates using standardized absolute mean difference (SMD) thresholds
Fig. 3Percentage of biased estimates according to the estimator in (a and c) the linear, additive scenario and (b and d) the non-linear, non-additive scenario. The double-robust estimator was adjusted for unbalanced covariates using standardized absolute mean difference (SMD) thresholds
Fig. 4Mean squared error according to the estimator in (a) the linear, additive scenario, and (b) the non-linear and non-additive scenario. The double-robust estimator was adjusted for unbalanced covariates using standardized absolute mean difference (SMD) thresholds