Literature DB >> 35439779

Synthetic Negative Controls: Using Simulation to Screen Large-scale Propensity Score Analyses.

Richard Wyss1, Sebastian Schneeweiss1, Kueiyu Joshua Lin1,2, David P Miller3, Linda Kalilani3, Jessica M Franklin1.   

Abstract

The propensity score has become a standard tool to control for large numbers of variables in healthcare database studies. However, little has been written on the challenge of comparing large-scale propensity score analyses that use different methods for confounder selection and adjustment. In these settings, balance diagnostics are useful but do not inform researchers on which variables balance should be assessed or quantify the impact of residual covariate imbalance on bias. Here, we propose a framework to supplement balance diagnostics when comparing large-scale propensity score analyses. Instead of focusing on results from any single analysis, we suggest conducting and reporting results for many analytic choices and using both balance diagnostics and synthetically generated control studies to screen analyses that show signals of bias caused by measured confounding. To generate synthetic datasets, the framework does not require simulating the outcome-generating process. In healthcare database studies, outcome events are often rare, making it difficult to identify and model all predictors of the outcome to simulate a confounding structure closely resembling the given study. Therefore, the framework uses a model for treatment assignment to divide the comparator population into pseudo-treatment groups where covariate differences resemble those in the study cohort. The partially simulated datasets have a confounding structure approximating the study population under the null (synthetic negative control studies). The framework is used to screen analyses that likely violate partial exchangeability due to lack of control for measured confounding. We illustrate the framework using simulations and an empirical example.
Copyright © 2022 Wolters Kluwer Health, Inc. All rights reserved.

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Year:  2022        PMID: 35439779      PMCID: PMC9156547          DOI: 10.1097/EDE.0000000000001482

Source DB:  PubMed          Journal:  Epidemiology        ISSN: 1044-3983            Impact factor:   4.860


  41 in total

1.  Effects of adjusting for instrumental variables on bias and precision of effect estimates.

Authors:  Jessica A Myers; Jeremy A Rassen; Joshua J Gagne; Krista F Huybrechts; Sebastian Schneeweiss; Kenneth J Rothman; Marshall M Joffe; Robert J Glynn
Journal:  Am J Epidemiol       Date:  2011-10-24       Impact factor: 4.897

2.  Covariate selection with group lasso and doubly robust estimation of causal effects.

Authors:  Brandon Koch; David M Vock; Julian Wolfson
Journal:  Biometrics       Date:  2017-06-21       Impact factor: 2.571

3.  Diagnosing and responding to violations in the positivity assumption.

Authors:  Maya L Petersen; Kristin E Porter; Susan Gruber; Yue Wang; Mark J van der Laan
Journal:  Stat Methods Med Res       Date:  2010-10-28       Impact factor: 3.021

4.  Invited commentary: positivity in practice.

Authors:  Daniel Westreich; Stephen R Cole
Journal:  Am J Epidemiol       Date:  2010-02-05       Impact factor: 4.897

5.  Variable Selection for Confounding Adjustment in High-dimensional Covariate Spaces When Analyzing Healthcare Databases.

Authors:  Sebastian Schneeweiss; Wesley Eddings; Robert J Glynn; Elisabetta Patorno; Jeremy Rassen; Jessica M Franklin
Journal:  Epidemiology       Date:  2017-03       Impact factor: 4.822

6.  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

7.  Variable selection for propensity score models when estimating treatment effects on multiple outcomes: a simulation study.

Authors:  Richard Wyss; Cynthia J Girman; Robert J LoCasale; Alan M Brookhart; Til Stürmer
Journal:  Pharmacoepidemiol Drug Saf       Date:  2012-10-16       Impact factor: 2.890

8.  Identifiability, exchangeability and confounding revisited.

Authors:  Sander Greenland; James M Robins
Journal:  Epidemiol Perspect Innov       Date:  2009-09-04

9.  High-dimensional propensity score adjustment in studies of treatment effects using health care claims data.

Authors:  Sebastian Schneeweiss; Jeremy A Rassen; Robert J Glynn; Jerry Avorn; Helen Mogun; M Alan Brookhart
Journal:  Epidemiology       Date:  2009-07       Impact factor: 4.822

10.  Principles of confounder selection.

Authors:  Tyler J VanderWeele
Journal:  Eur J Epidemiol       Date:  2019-03-06       Impact factor: 8.082

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