Literature DB >> 30995301

Performance of Matching Methods as Compared With Unmatched Ordinary Least Squares Regression Under Constant Effects.

Anusha M Vable1,2, Mathew V Kiang3, M Maria Glymour3,4, Joseph Rigdon5, Emmanuel F Drabo1,2, Sanjay Basu1,2,6,7.   

Abstract

Matching methods are assumed to reduce the likelihood of a biased inference compared with ordinary least squares (OLS) regression. Using simulations, we compared inferences from propensity score matching, coarsened exact matching, and unmatched covariate-adjusted OLS regression to identify which methods, in which scenarios, produced unbiased inferences at the expected type I error rate of 5%. We simulated multiple data sets and systematically varied common support, discontinuities in the exposure and/or outcome, exposure prevalence, and analytical model misspecification. Matching inferences were often biased in comparison with OLS, particularly when common support was poor; when analysis models were correctly specified and common support was poor, the type I error rate was 1.6% for propensity score matching (statistically inefficient), 18.2% for coarsened exact matching (high), and 4.8% for OLS (expected). Our results suggest that when estimates from matching and OLS are similar (i.e., confidence intervals overlap), OLS inferences are unbiased more often than matching inferences; however, when estimates from matching and OLS are dissimilar (i.e., confidence intervals do not overlap), matching inferences are unbiased more often than OLS inferences. This empirical "rule of thumb" may help applied researchers identify situations in which OLS inferences may be unbiased as compared with matching inferences.
© The Author(s) 2019. Published by Oxford University Press on behalf of the Johns Hopkins Bloomberg School of Public Health. All rights reserved. For permissions, please e-mail: journals.permissions@oup.com.

Entities:  

Keywords:  causal inference; confounding; epidemiologic methods; matching; observational data

Mesh:

Year:  2019        PMID: 30995301      PMCID: PMC6601529          DOI: 10.1093/aje/kwz093

Source DB:  PubMed          Journal:  Am J Epidemiol        ISSN: 0002-9262            Impact factor:   4.897


  13 in total

1.  Marginal structural models and causal inference in epidemiology.

Authors:  J M Robins; M A Hernán; B Brumback
Journal:  Epidemiology       Date:  2000-09       Impact factor: 4.822

2.  Matching methods for causal inference: A review and a look forward.

Authors:  Elizabeth A Stuart
Journal:  Stat Sci       Date:  2010-02-01       Impact factor: 2.901

Review 3.  Propensity score methods gave similar results to traditional regression modeling in observational studies: a systematic review.

Authors:  Baiju R Shah; Andreas Laupacis; Janet E Hux; Peter C Austin
Journal:  J Clin Epidemiol       Date:  2005-04-19       Impact factor: 6.437

Review 4.  A review of the application of propensity score methods yielded increasing use, advantages in specific settings, but not substantially different estimates compared with conventional multivariable methods.

Authors:  Til Stürmer; Manisha Joshi; Robert J Glynn; Jerry Avorn; Kenneth J Rothman; Sebastian Schneeweiss
Journal:  J Clin Epidemiol       Date:  2005-10-13       Impact factor: 6.437

5.  Doubly robust estimation of causal effects.

Authors:  Michele Jonsson Funk; Daniel Westreich; Chris Wiesen; Til Stürmer; M Alan Brookhart; Marie Davidian
Journal:  Am J Epidemiol       Date:  2011-03-08       Impact factor: 4.897

6.  Readmission diagnoses after hospitalization for severe sepsis and other acute medical conditions.

Authors:  Hallie C Prescott; Kenneth M Langa; Theodore J Iwashyna
Journal:  JAMA       Date:  2015-03-10       Impact factor: 56.272

7.  Temporary work and depressive symptoms: a propensity score analysis.

Authors:  Amélie Quesnel-Vallée; Suzanne DeHaney; Antonio Ciampi
Journal:  Soc Sci Med       Date:  2010-03-09       Impact factor: 4.634

8.  Improving propensity score weighting using machine learning.

Authors:  Brian K Lee; Justin Lessler; Elizabeth A Stuart
Journal:  Stat Med       Date:  2010-02-10       Impact factor: 2.373

9.  Can social policy influence socioeconomic disparities? Korean War GI Bill eligibility and markers of depression.

Authors:  Anusha M Vable; David Canning; M Maria Glymour; Ichiro Kawachi; Marcia P Jimenez; Subu V Subramanian
Journal:  Ann Epidemiol       Date:  2015-12-17       Impact factor: 3.797

10.  Neighborhood poverty and American Indian infant death: are the effects identifiable?

Authors:  Pamela Jo Johnson; J Michael Oakes; Douglas L Anderton
Journal:  Ann Epidemiol       Date:  2008-05-27       Impact factor: 3.797

View more
  1 in total

1.  Risk of Operative and Nonoperative Interventions Up to 4 Years After Roux-en-Y Gastric Bypass vs Vertical Sleeve Gastrectomy in a Nationwide US Commercial Insurance Claims Database.

Authors:  Kristina H Lewis; David E Arterburn; Katherine Callaway; Fang Zhang; Stephanie Argetsinger; Jamie Wallace; Adolfo Fernandez; Dennis Ross-Degnan; James F Wharam
Journal:  JAMA Netw Open       Date:  2019-12-02
  1 in total

北京卡尤迪生物科技股份有限公司 © 2022-2023.