Literature DB >> 24323618

Metrics for covariate balance in cohort studies of causal effects.

Jessica M Franklin1, Jeremy A Rassen, Diana Ackermann, Dorothee B Bartels, Sebastian Schneeweiss.   

Abstract

Inferring causation from non-randomized studies of exposure requires that exposure groups can be balanced with respect to prognostic factors for the outcome. Although there is broad agreement in the literature that balance should be checked, there is confusion regarding the appropriate metric. We present a simulation study that compares several balance metrics with respect to the strength of their association with bias in estimation of the effect of a binary exposure on a binary, count, or continuous outcome. The simulations utilize matching on the propensity score with successively decreasing calipers to produce datasets with varying covariate balance. We propose the post-matching C-statistic as a balance metric and found that it had consistently strong associations with estimation bias, even when the propensity score model was misspecified, as long as the propensity score was estimated with sufficient study size. This metric, along with the average standardized difference and the general weighted difference, outperformed all other metrics considered in association with bias, including the unstandardized absolute difference, Kolmogorov-Smirnov and Lévy distances, overlapping coefficient, Mahalanobis balance, and L1 metrics. Of the best-performing metrics, the C-statistic and general weighted difference also have the advantage that they automatically evaluate balance on all covariates simultaneously and can easily incorporate balance on interactions among covariates. Therefore, when combined with the usual practice of comparing individual covariate means and standard deviations across exposure groups, these metrics may provide useful summaries of the observed covariate imbalance.
Copyright © 2013 John Wiley & Sons, Ltd.

Keywords:  bias; confounding factors; covariate balance; matching; propensity score

Mesh:

Substances:

Year:  2013        PMID: 24323618     DOI: 10.1002/sim.6058

Source DB:  PubMed          Journal:  Stat Med        ISSN: 0277-6715            Impact factor:   2.373


  80 in total

1.  Using Real-World Data to Predict Findings of an Ongoing Phase IV Cardiovascular Outcome Trial: Cardiovascular Safety of Linagliptin Versus Glimepiride.

Authors:  Elisabetta Patorno; Sebastian Schneeweiss; Chandrasekar Gopalakrishnan; David Martin; Jessica M Franklin
Journal:  Diabetes Care       Date:  2019-06-25       Impact factor: 19.112

2.  Matching Weights to Simultaneously Compare Three Treatment Groups: Comparison to Three-way Matching.

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Review 3.  Addressing limitations in observational studies of the association between glucose-lowering medications and all-cause mortality: a review.

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Journal:  Drug Saf       Date:  2015-03       Impact factor: 5.606

4.  The "Dry-Run" Analysis: A Method for Evaluating Risk Scores for Confounding Control.

Authors:  Richard Wyss; Ben B Hansen; Alan R Ellis; Joshua J Gagne; Rishi J Desai; Robert J Glynn; Til Stürmer
Journal:  Am J Epidemiol       Date:  2017-05-01       Impact factor: 4.897

5.  Evaluating large-scale propensity score performance through real-world and synthetic data experiments.

Authors:  Yuxi Tian; Martijn J Schuemie; Marc A Suchard
Journal:  Int J Epidemiol       Date:  2018-12-01       Impact factor: 7.196

6.  Implications of the Propensity Score Matching Paradox in Pharmacoepidemiology.

Authors:  John E Ripollone; Krista F Huybrechts; Kenneth J Rothman; Ryan E Ferguson; Jessica M Franklin
Journal:  Am J Epidemiol       Date:  2018-09-01       Impact factor: 4.897

7.  Toward a clearer portrayal of confounding bias in instrumental variable applications.

Authors:  John W Jackson; Sonja A Swanson
Journal:  Epidemiology       Date:  2015-07       Impact factor: 4.822

8.  Association of Tramadol Use With Risk of Hip Fracture.

Authors:  Jie Wei; Nancy E Lane; Marcy B Bolster; Maureen Dubreuil; Chao Zeng; Devyani Misra; Na Lu; Hyon K Choi; Guanghua Lei; Yuqing Zhang
Journal:  J Bone Miner Res       Date:  2020-02-05       Impact factor: 6.741

9.  Identifying Patients With High Data Completeness to Improve Validity of Comparative Effectiveness Research in Electronic Health Records Data.

Authors:  Kueiyu Joshua Lin; Daniel E Singer; Robert J Glynn; Shawn N Murphy; Joyce Lii; Sebastian Schneeweiss
Journal:  Clin Pharmacol Ther       Date:  2017-10-10       Impact factor: 6.875

10.  Cardiovascular Outcomes of Calcium-Free vs Calcium-Based Phosphate Binders in Patients 65 Years or Older With End-stage Renal Disease Requiring Hemodialysis.

Authors:  Julia Spoendlin; Julie M Paik; T Tsacogianis; Seoyoung C Kim; Sebastian Schneeweiss; Rishi J Desai
Journal:  JAMA Intern Med       Date:  2019-06-01       Impact factor: 21.873

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