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Propensity Score Methods for Analyzing Observational Data Like Randomized Experiments: Challenges and Solutions for Rare Outcomes and Exposures
Author(s) -
Michelle Ross,
Amanda R. Kreider,
YuShan Huang,
Meredith Matone,
David M. Rubin,
A. Russell Localio
Publication year - 2015
Publication title -
american journal of epidemiology
Language(s) - English
Resource type - Journals
SCImago Journal Rank - 2.33
H-Index - 256
eISSN - 1476-6256
pISSN - 0002-9262
DOI - 10.1093/aje/kwu469
Subject(s) - propensity score matching , observational study , covariate , randomized controlled trial , medicine , medicaid , causal inference , inverse probability weighting , outcome (game theory) , randomized experiment , sample size determination , matching (statistics) , statistics , mathematics , health care , mathematical economics , pathology , economics , economic growth
Randomized controlled trials are the "gold standard" for estimating the causal effects of treatments. However, it is often not feasible to conduct such a trial because of ethical concerns or budgetary constraints. We expand upon an approach to the analysis of observational data sets that mimics a sequence of randomized studies by implementing propensity score models within each trial to achieve covariate balance, using weighting and matching. The methods are illustrated using data from a safety study of the relationship between second-generation antipsychotics and type 2 diabetes (outcome) in Medicaid-insured children aged 10-18 years across the United States from 2003 to 2007. Challenges in this data set include a rare outcome, a rare exposure, substantial and important differences between exposure groups, and a very large sample size.

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