Literature DB >> 24374422

Assessing the impact of propensity score estimation and implementation on covariate balance and confounding control within and across important subgroups in comparative effectiveness research.

Cynthia J Girman1, Mugdha Gokhale, Tzuyung Doug Kou, Kimberly G Brodovicz, Richard Wyss, Til Stürmer.   

Abstract

PURPOSE: Researchers are often interested in estimating treatment effects in subgroups controlling for confounding based on a propensity score (PS) estimated in the overall study population.
OBJECTIVE: To evaluate covariate balance and confounding control in sulfonylurea versus metformin initiators within subgroups defined by cardiovascular disease (CVD) history comparing an overall PS with subgroup-specific PSs implemented by 1:1 matching and stratification.
METHODS: We analyzed younger patients from a US insurance claims database and older patients from 2 Medicare (Humana Medicare Advantage, fee-for-service Medicare Parts A, B, and D) datasets. Confounders and risk factors for acute myocardial infarction were included in an overall PS and subgroup PSs with and without CVD. Covariate balance was assessed using the average standardized absolute mean difference (ASAMD).
RESULTS: Compared with crude estimates, ASAMD across covariates was improved 70%-94% for stratification for Medicare cohorts and 44%-99% for the younger cohort, with minimal differences between overall and subgroup-specific PSs. With matching, 75%-99% balance improvement was achieved regardless of cohort and PS, but with smaller sample size. Hazard ratios within each CVD subgroup differed minimally among PS and cohorts.
CONCLUSIONS: Both overall PSs and CVD subgroup-specific PSs achieved good balance on measured covariates when assessing the relative association of diabetes monotherapy with nonfatal myocardial infarction. PS matching generally led to better balance than stratification, but with smaller sample size. Our study is limited insofar as crude differences were minimal, suggesting that the new user, active comparator design identified patients with some equipoise between treatments.

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Year:  2014        PMID: 24374422      PMCID: PMC4042911          DOI: 10.1097/MLR.0000000000000064

Source DB:  PubMed          Journal:  Med Care        ISSN: 0025-7079            Impact factor:   2.983


  15 in total

1.  Balance measures for propensity score methods: a clinical example on beta-agonist use and the risk of myocardial infarction.

Authors:  Rolf H H Groenwold; Frank de Vries; Anthonius de Boer; Wiebe R Pestman; Frans H Rutten; Arno W Hoes; Olaf H Klungel
Journal:  Pharmacoepidemiol Drug Saf       Date:  2011-09-23       Impact factor: 2.890

2.  Variable selection for propensity score models.

Authors:  M Alan Brookhart; Sebastian Schneeweiss; Kenneth J Rothman; Robert J Glynn; Jerry Avorn; Til Stürmer
Journal:  Am J Epidemiol       Date:  2006-04-19       Impact factor: 4.897

Review 3.  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

4.  Confounding control in healthcare database research: challenges and potential approaches.

Authors:  M Alan Brookhart; Til Stürmer; Robert J Glynn; Jeremy Rassen; Sebastian Schneeweiss
Journal:  Med Care       Date:  2010-06       Impact factor: 2.983

5.  Measuring balance and model selection in propensity score methods.

Authors:  Svetlana V Belitser; Edwin P Martens; Wiebe R Pestman; Rolf H H Groenwold; Anthonius de Boer; Olaf H Klungel
Journal:  Pharmacoepidemiol Drug Saf       Date:  2011-07-29       Impact factor: 2.890

6.  Antidiabetic treatments and risk of hospitalisation with myocardial infarction: a nationwide case-control study.

Authors:  Henriette Thisted Horsdal; Flemming Søndergaard; Søren Paaske Johnsen; Jørgen Rungby
Journal:  Pharmacoepidemiol Drug Saf       Date:  2011-01-10       Impact factor: 2.890

7.  Cardiovascular effects of treatment of type 2 diabetes with pioglitazone, metformin and gliclazide.

Authors:  G Belcher; C Lambert; K L Goh; G Edwards; M Valbuena
Journal:  Int J Clin Pract       Date:  2004-09       Impact factor: 2.503

8.  The implications of propensity score variable selection strategies in pharmacoepidemiology: an empirical illustration.

Authors:  Amanda R Patrick; Sebastian Schneeweiss; M Alan Brookhart; Robert J Glynn; Kenneth J Rothman; Jerry Avorn; Til Stürmer
Journal:  Pharmacoepidemiol Drug Saf       Date:  2011-03-10       Impact factor: 2.890

9.  Risk of mortality and adverse cardiovascular outcomes in type 2 diabetes: a comparison of patients treated with sulfonylureas and metformin.

Authors:  J M M Evans; S A Ogston; A Emslie-Smith; A D Morris
Journal:  Diabetologia       Date:  2006-03-09       Impact factor: 10.122

10.  Different methods of balancing covariates leading to different effect estimates in the presence of effect modification.

Authors:  Mark Lunt; Daniel Solomon; Kenneth Rothman; Robert Glynn; Kimme Hyrich; Deborah P M Symmons; Til Stürmer
Journal:  Am J Epidemiol       Date:  2009-01-19       Impact factor: 4.897

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  2 in total

Review 1.  A Review of Causal Inference for External Comparator Arm Studies.

Authors:  Gerd Rippin; Nicolás Ballarini; Héctor Sanz; Joan Largent; Chantal Quinten; Francesco Pignatti
Journal:  Drug Saf       Date:  2022-07-27       Impact factor: 5.228

2.  The challenges of comparing results between placebo controlled randomized trials and non-experimental new user, active comparator cohort studies: the example of olmesartan.

Authors:  Wendy Camelo Castillo; Joseph A C Delaney; Til Stürmer
Journal:  Pharmacoepidemiol Drug Saf       Date:  2014-03-03       Impact factor: 2.890

  2 in total

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